Thursday, June 18, 2026

How to fight human trafficking and online scams

By Max Planck Society, MPI for Security and Privacy

New AI-based training program raises awareness of fraud among Chinese adults.

Image: Yudi Indrawan - unsplash

To the point
  • Human Trafficking and Fraud:New research sheds light on the hidden link between employment scams, human trafficking, and online fraud. Victims are lured with false job offers to fraud hubs in Myanmar, Laos, and Cambodia, where they are forced—through surveillance and the use of violence—to commit online fraud by impersonating others or feigning romantic relationships.
  • Insights from social media:Analysis of testimonials on social media reveals both the tactics human traffickers use to recruit and control people, as well as the strategies developed by the community to help them avoid fraudulent job offers abroad.
  • Prevention through AI training:The AI-based training program ROLESafe for older Chinese adults uses interactive role-playing to improve awareness of and defense against online fraud.

Under the pretext of employment prospects, hundreds of thousands of job seekers are lured by scammers to cross the border to countries like Myanmar, Laos, or Cambodia. Instead of the promised lucrative positions, they are forced to work for long hours in heavily guarded scam compounds, facing strict quotas and violence as punishment. Their main task is to fabricate online identities and defraud people, for example, by operating “pig-butchering” scams in which they introduce fraudulent investment schemes after establishing romantic relationships with random targets online.

The experiences of victims forced to become perpetrators

Scientists from the Max Planck Institute for Security and Privacy, the University of Edinburgh, the Hong Kong University of Science and Technology, and the University of Kent analyzed posts from the Chinese social media app RedNote. These posts were shared by scam victims or their family members. The researchers identified 158 relevant posts by searching for specific hashtags such as “human trafficking”, “overseas job scam,” or “trafficking experience” and further filtering.

This analysis has revealed the often hidden details about how the victims are recruited and turned into perpetrators themselves. The common targets for recruitment are people who possess skills that can be valuable to fraud schemes, such as fluency in a foreign language, and those who are vulnerable due to their lack of a stable social net, such as children of parents who went abroad to work. Testimonials further revealed that the scam compound operators would control victims and prevent them from escaping by withholding wages, using location monitoring apps such as FindMy, confiscating travel documents, and, in extreme cases, resorting to violence. They further exploit the victim’s social and cultural ties by demanding ransoms from family members.

Online communities share advice on how to avoid being trafficked to scam compounds

The study sheds light on the community strategies to prevent trafficking discussed on RedNote. Survivors and members of the RedNote community list common “red flags” that potential victims can look for while considering job ads. Benefits such as “free trips”, “all-expenses-paid round-trip tickets,” or “high pay for minimal work” should be regarded as scam indicators. Caution is advised when someone boasts extensively about the benefits of the job without showing company videos or photos, or says they can only reveal the job’s specific location after arriving in the country. As safety measures, it is recommended to check the company’s legal registration, demand full labor contracts, and request proper work visas.

What else can be done?

As a result of people being trafficked and forced to run scams, there are people experiencing harms on the other end of the spectrum: those being targeted by scams. In addition to counteracting scam-driven human trafficking, MPI researchers also developed trainings to support consumers to detect online scams. To achieve this, the research team leverages large language models (LLMs) to make the training interactive and provide tailored advice, especially to older users.

ROLESafe: an LLM-based intervention for scam awareness

Raising scam awareness among older Chinese adults generally falls under the responsibility of younger family members. However, their caretakers struggle with several problems, such as seniors withholding details about the scam or being reluctant to accept help. To mitigate these issues, the researchers developed ROLESafe, an LLM-based tool for learning about scam schemes and exercising judgment through conversations with an LLM-simulated persona, specifically designed for older adults. The tool utilizes an interface similar to WeChat, the most popular messaging app in China. ROLESafe aims to improve fraud awareness and defensive skills in the aging population by assigning users different roles in a scam scenario: observers (passively viewing LLM-generated chat records based on real-world scam cases), helpers (persuading an LLM-portrayed victim not to fall for a scam), or experiencers (directly interacting with an LLM posing as a scammer).

144 Chinese older adults participated in evaluating the tool. The results show that engaging older adults in active (experiencer or helper) rather than passive (observer) roles enhances their awareness of scams. Therefore, ROLESafe provides a significant educational framework for older adults that could be used in the future for other high-risk communities as well.

Background Information

The two studies linked in this press release were presented at the ACM Conference on Human Factors in Computing Systems (CHI 2026).

  • The paper titled Characterizing Scam-Driven Human Trafficking Across Chinese Borders and Online Community Responses on RedNoteby Jiamin Zheng, Yue Deng, Jessica Chen, Shujun Li, Yixin Zou, Jingjie Li was recognized with a Best Paper Award (awarded to top 1% of all papers)
  • The paper titled Experiencer, Helper, or Observer: Online Fraud Intervention for Older Adults Through a Role-Based Simulation Approach by Yue Deng, Xiaowei Chen, Junxiang Liao, Bo Li, Yixin Zou was recognized with a Best Paper Honorable Mention (awarded to top 5% of all papers)
Original Publications

Yue Deng,Xiaowei Chen, Junxiang Liao, Bo Li undYixin Zou

Experiencer, Helper, or Observer: Online Fraud Intervention for Older Adults Through a Role-based Simulation Approach

CHI '26: Proceedings of the 2026 CHI Conference on Human Factors in Computing Systems

Source DOI

Jiamin Zheng,Yue Deng, Jessica Chen, Shujun Li,Yixin Zouund Jingjie Li

Characterizing Scam-Driven Human Trafficking Across Chinese Borders and Online Community Responses on RedNote

CHI '26: Proceedings of the 2026 CHI Conference on Human Factors in Computing Systems

Source DOI.

Reviewed by Irfan Ahmad.

This post was originally published on the Max Planck Institute for Security and Privacy, and republished on DIW with permission.

Read next: Passive AI use at work increases feelings of work meaninglessness, study finds


by External Contributor via Digital Information World

Passive AI use at work increases feelings of work meaninglessness, study finds

By Ty Tkacik, The Pennsylvania State University

Upon returning to manual writing, participants who copy-and-pasted AI responses reported a decline in outcome satisfaction of 21%.

Passive AI use at work increases feelings of work meaninglessness, study finds
Image: Fotos - Unsplash

Approximately 88% of organizations around the world implemented artificial intelligence (AI) into at least one business function by the end of 2025, the latest McKinsey Global Survey on the state of AI found. Despite promised productivity gains, passive AI use at work, where employees copy-and-paste AI responses to complete tasks, can make people doubt their skills and find their work meaningless, according to a study co-authored by a faculty member from Penn State’s Smeal College of Business that published in Scientific Reports.

Using prolific, an internet platform designed to help scientists find research participants, the team recruited about 270 professionals working across human resources, communications and management fields to complete a series of writing tests similar to their day-to-day tasks, both manually and with the help of AI tools. Their study found that AI use — specifically whether participants used AI collaboratively to workshop their own ideas or passively to generate and copy responses — played a significant role in participants’ reported scores of self-efficacy, meaningfulness, and psychological ownership. Specifically, passive AI use led to nearly 20% declines in feelings of ownership and 10% declines in perceived meaningfulness, while collaborative AI use showed scores similar to AI-independent work, according to the researchers.

Although AI use has been reported to improve productivity, Yidan Yin, assistant professor of management and organization at Penn State’s Smeal College of Business, explained that less is known about the deeper psychological impacts of AI use in the workplace. Yin explained that while scientists have begun exploring possible long-term costs, the field is still quite new, and much of the research is very broad

“Previous studies have primarily looked at the positive impacts AI can have on work productivity, as well as how AI use can make workers feel isolated and less motivated,” Yin said. “With this study, though, we really wanted to focus on better understanding how AI use reshapes people’s connection to their work.”

To accomplish this, the team primarily focused on measuring AI use’s impacts on three closely related constructs: self-efficacy, or an individual’s confidence in themself to complete a task without AI assistance; work meaningfulness, or how much an individual perceives their work as purposeful and significant; and psychological ownership, or how much ownership individuals feel over their output. The researchers used two additional variables — task enjoyment and outcome satisfaction — to gain a comprehensive view of how AI use impacted participants' psychology, Yin explained.

The researchers built a series of writing tasks tailored to the occupations of participants in the study. In the first task, participants were assigned to one of three conditions and instructed to complete the task either manually without the use of AI, actively collaborate with AI, or passively copy and paste AI-generated responses to complete the task. Participants then answered questions about their feelings of self-efficacy, work meaningfulness and psychological ownership of the output. In the second task, all participants were required to complete the writing task manually without AI assistance, answering the same survey questions afterwards.

“This two-task design made it possible to examine both the immediate effects of different uses of AI and their lingering effects after participants returned to working without AI, all in an experiment that only took about 20 to 30 minutes to complete,” Yin said.

Passive AI use during the first task reduced people’s feelings of ownership by nearly 20%, and self-efficacy and perceived meaningfulness by nearly 10%, relative to manual writing, whereas collaborative AI use did not differ meaningfully from manual writing. The declines in self-efficacy and meaningfulness persisted after the second task, when all participants returned to manual writing, suggesting that the erosions cannot be easily undone by returning to working without AI assistance.

Interestingly, Yin noted that passive AI use led to a substantial increase in reported task enjoyment and outcome satisfaction after the first task, with gains of up to 29% compared to manual writing. However, when participants returned to manual writing in the second task, they reported a large drop in these ratings. Notably, their outcome satisfaction fell to be 21% lower than participants who had previously wrote manually, whereas collaborative AI use buffered against this drop. Yin explained that this pattern shows how critical it is for employees to be mindful of how they are incorporating AI into their day-to-day work.

“Passively relying on AI can erode employees’ confidence in themselves and could make them enjoy their job less in the long-term,” Yin said. “They have an initial burst of enjoyment because they don’t need to put in a lot of effort to accomplish the task well, but it makes an employee reluctant to do the task manually. It also leads them to feel like they’re not needed — they see firsthand that AI can perform a task effectively and could potentially replace them.”

Yin said that change in organizations is usually difficult for employees to adjust to, and the rapid integration of AI has proven no different. Moving forward, the team plans to continue studying the psychological impacts that AI-driven change at work is having on employees, as well as how businesses can employ these tools in a way that is effective both for the employer and the employees in an organization.

“Our findings reinforce that companies need to do more than just ask employees to use AI to maximize their productivity, which may inadvertently encourage passive reliance on AI because doing so saves time in the short run,” Yin said. “That isn’t effectively utilizing the employees’ skills, and long-term, those employees are going to feel very alienated from their work.”

Additional co-authors on the work include Elena Hayoung Lee, a doctoral candidate in management and organization at the University of Southern California (USC); Nan Jia, professor of strategic management at USC; and Cheryl Wakslak, associate professor of management and organization at USC.

This post was originally published on Penn State and republished here with permission.

Reviewed by Irfan Ahmad.

Read next:

• AI-Skilled Workers Make 60 Percent More Across Sectors

• How Google's AI Overviews Are Changing Local Search for Small Businesses
by External Contributor via Digital Information World

Wednesday, June 17, 2026

How Google's AI Overviews Are Changing Local Search for Small Businesses in 2026

For more than a decade, local search followed a predictable pattern. A potential customer searched for a service near them, Google returned a map pack with three businesses and a list of organic results below it, and the businesses with the strongest Google Business Profiles and most reviews won the clicks.

That pattern is being disrupted. Not gradually, rapidly. And the small businesses most affected are the ones that have not yet recognised that the change is already happening.

What AI Overviews Actually Are and How They Differ From Traditional Local Results

Google's AI Overviews are AI-generated summaries that appear at the top of search results, above the traditional blue links and above the local pack. They synthesise information from multiple sources, websites, reviews, directories, and knowledge panels into a two to five-sentence narrative response with cited sources linked below.

The critical difference from the traditional local pack is the mechanism. The local pack pulls three listings from Google's database of Business Profiles based primarily on proximity, review signals, and profile completeness. AI Overviews do not pull listings. They construct an answer, and then decide which sources to credit for that answer.

For local businesses, this creates a new visibility dynamic that most small business owners have not yet adapted to.

AI Overviews now appear on 48% of all searches. Here is what the data shows about how local businesses are affected and what to do about it in 2026.
Image: Growtika - Unsplash

The Numbers Behind the Shift

AI Overviews appear on approximately 48% of tracked queries as of February 2026, up from 31% a year earlier, according to BrightEdge research. That is nearly half of all searches now generating an AI-written summary before any organic result appears.

Around 50% of search queries in the United States now generate AI Overview responses, and roughly 81% of searches that trigger an AI Overview are performed on mobile. This mobile dominance is significant for local businesses specifically, because mobile searches are where local intent is highest.

Brands cited in AI Overviews earn approximately 120% more organic clicks per impression than uncited brands on the same queries, according to Seer Interactive's 2026 analysis. Being cited is not just about visibility; it changes the commercial outcome of search traffic significantly.

However, the picture for local businesses specifically is more nuanced. When it comes to local intent, AI Overviews remain limited, appearing in only about 7% of local searches. This is the data point that gives some local business owners false comfort. The 7% figure represents where things are now, not where they are heading.

By early 2026, AI Overviews are present on roughly 15% of all Google searches globally, according to MapAtlas, and that number is climbing every quarter. For local businesses, the implications are direct and immediate.

How AI Overviews Interact With Local Search, Specifically

Local queries trigger AI Overviews less frequently than informational queries, but the trend is expanding. When AI Overviews do appear for local-intent queries, they typically cite Google Business Profile data and local content sources.

This tells local businesses something specific and actionable: the signals that determine whether a local business gets cited in an AI Overview are not entirely different from the signals that have always determined local search performance. Google Business Profile completeness, review quality and recency, NAP consistency across the web, and structured data are all cited as factors.

GBP is now the primary data layer feeding Google's AI systems, including Gemini, Search, and Maps. AI Overviews appear in 13% of local queries, AI-assisted review summaries have rolled out to 60% of profiles, and GBP Maps views grew 61% year-over-year.

What this means practically is that Google is increasingly using GBP data not just to show a business listing, but to construct AI-generated answers about local businesses. A business with an incomplete profile, outdated photos, and generic responses to reviews is providing low-quality input to the AI systems that determine local search visibility.

The Click-Through Rate Reality

The most significant impact of AI Overviews on local search is not which businesses appear, but what happens to click behaviour.

Zero-click searches jumped from 56% to 69% of all searches between May 2024 and May 2025, according to Similarweb data. When a user gets their answer from an AI Overview, they frequently do not click any link at all.

Organic click-through rates dropped 61% on queries with AI Overviews present, from 1.76% to 0.61%, according to Seer Interactive's September 2025 study.

For local businesses with strong traditional organic rankings, this represents a material reduction in traffic from search. Pages that ranked in positions three to five are losing traffic, not because they dropped in rank, but because fewer users scroll past the AI-generated answer at the top of the page.

On mobile, AI Overviews take up more screen space and push traditional organic results further down the page, meaning the impact on mobile click-through rates may be stronger than desktop data suggests.

What Small Businesses Need to Do Differently

The businesses that will maintain and grow local search visibility in 2026 are the ones making specific changes to how they manage their online presence. The following priorities emerge directly from how AI Overviews select and cite local sources.

Complete and Actively Manage the Google Business Profile

Overall, Google Business Profile actions, including calls, directions, website clicks, and bookings, grew 41% year-over-year, according to Google's own 2026 data. This growth is happening against a backdrop of declining traditional organic traffic, which confirms that GBP visibility is increasingly where local business discovery happens.

Businesses managing their GBP based on practices from 2023 or 2024 may be operating with outdated assumptions. The specific changes that matter in 2026 include responding to every review (AI-assisted review summaries now pull from review content on 60% of profiles), keeping hours and service descriptions current, and uploading photos regularly since user-generated content now plays a larger direct role in ranking signals.

Publish Location-Specific Content That Answers Real Questions

A local business with a clear services and pricing page will show up faster for searches containing local intent than a long blog full of general information. AI considers user intent behind the search, how trustworthy the content is, and how useful the information is compared to competitors.

For a local plumber, this means a page that answers "how much does emergency plumbing cost in [city]" with a specific, honest answer will perform better in AI Overview citations than a page that describes plumbing services generally. The specificity of the answer is what gets cited.

Practical implementation: review your service pages and ask whether a customer who has never heard of your business would find a specific, useful answer to their question on each page. If the answer is no the page is not AI Overview-ready.

Build Citation Consistency Across the Web

AI systems look at a business's Google Business Profile to verify that the business is legitimate, active, and well-regarded in its local area. But legitimacy signals extend beyond GBP. Consistent NAP (Name, Address, Phone) data across directories, industry listing sites, and social profiles all contribute to the entity confidence that determines whether a business gets cited.

Inconsistent business information across the web is not just a traditional local SEO problem. It undermines the confidence AI systems have in the data they cite, which reduces the likelihood of appearing in AI-generated local answers. A comprehensive guide to building local search visibility, including how Google Business Profile, citation consistency, and content structure work together, covers these fundamentals in detail for businesses working through local SEO for the first time. A resource such as this local SEO guide walks through each element practically for small business owners managing their own presence.

Use Structured Data Markup

Local SEO fundamentals remain important in 2026, with the addition of structured data optimisation for AI citation.

LocalBusiness schema markup tells Google and its AI systems the precise details of a business in a format that machines can read directly: name, address, phone number, opening hours, service area, and geographic coordinates. Businesses without this markup are providing their information in a format that requires AI systems to infer details from unstructured text rather than reading confirmed data.

Implementation on WordPress takes approximately 10 minutes using Yoast SEO or RankMath's local SEO settings, both of which generate LocalBusiness schema automatically when the business address and contact details are entered.

Keep Content Fresh

Research shows that AI systems cite older content less frequently in 2026. Updating key pages regularly with fresh data, new examples, and expanded insights maintains authority and visibility.

For a local business, this means service pages should not be written once and left unchanged for two years. Updating the content with current pricing information, recent project examples, and answers to questions that have come up from actual customers keeps the page performing as an AI-citable source.

The Businesses That Will Fall Behind

Industries that depend more on local or transactional intent, such as real estate or local services, show much lower AI Overview adoption compared to informational content categories. This is frequently interpreted as protection from the AI Overview disruption if AI Overviews appear less for local searches, local businesses are less affected.

This interpretation misses the direction of travel. The businesses that adapt their local SEO and content strategy now, before AI Overviews become dominant for local intent queries, will have established the signals and credibility that determine citation when the adoption rate climbs. The businesses that wait will be adapting after the advantage window has closed.

Even websites that rank between positions 11 and 20 have a chance of being cited in AI-generated answers, provided the content directly answers the question being asked. This is the equalising opportunity of the AI search era for small businesses, as being cited in an AI Overview is not exclusively reserved for businesses that already rank in position one.

What This Means for Local Business Owners Right Now

The shift in local search behaviour driven by AI Overviews does not require a complete reinvention of how small businesses approach their online presence. The foundation remains the same: a well-maintained Google Business Profile, accurate and consistent business information across the web, and content that genuinely answers the questions potential customers are asking.

What changes is the bar for content specificity and the importance of structured data. Generic service descriptions that could apply to any business in any city will not get cited. Specific, accurate, locally-relevant content that directly answers real questions will.

63% of businesses report that Google AI Overviews have had a positive effect on their organic traffic, visibility, or search rankings since their rollout. The businesses in that 63% are not the ones that waited to see what happened. They are the ones who recognised the change early and made the adjustments before AI Overview adoption reached the point where the competition for citation became saturated.

For small businesses managing their own local SEO, the practical starting point is an honest audit of the Google Business Profile, a review of whether service pages directly answer real customer questions, and a check on whether business information is consistent across every platform where the business is listed.

Author Bio:

Stuart Cowan is a digital marketing strategist and content contributor with a focus on local search, SEO, and the evolving impact of AI on how businesses get found online. He has worked with small and medium businesses across Australia on web design, digital marketing, and search visibility strategies. His work covers practical, data-driven insights for business owners navigating the changing search landscape.

Edited by Irfan Ahmad.

Read next: 

AI-Skilled Workers Make 60 Percent More Across Sectors

• Google AI Overviews and the Ahmadiyya Caliphate: Examining a Religious Search Dispute


by Guest Contributor via Digital Information World

AI-Skilled Workers Make 60 Percent More Across Sectors

By Katharina Buchholz, Data Journalist, Statista

PwC's Global AI Jobs Barometer has found that AI-skilled workers earn 62 percent more across the globe than their non-AI-skilled counterparts. The analysis looked at data across one million job ads in 16 different sectors and 27 countries and found that in consumer market jobs, differences were especially stark, with roles requiring AI skills paying 118 percent more than those which don't.

Other high pay gaps could be observed in the areas of technology, telecoms and media (+84 percent earnings for AI-skilled employees), energy, utilities and resources (+75 percent) as well as manufacturing (+73 percent). Below average gains were calculated for the public sector, where (government) employees only earned 16 percent more if they had AI skills. In the health industries, this number stood at 37 percent.

The report also found that the hiring of AI specialists has been rising sharply. While in 2012, 1 percent of jobs posted were for AI specialists, this more than doubled and stood at above 2 percent in 2025. The biggest share of AI jobs was listed in the area of tech, media and telecoms at 11.4 percent of all job listings. Hiring was up in all sectors, with shares of AI jobs reaching between 2 percent and almost 6 percent for the other sectors included in the chart. The exception was the healthcare sector with just around 1 percent of jobs posted having an AI component.

AI-Skilled Workers Make 60 Percent More Across Sectors

This post was originally published on Statista and republished here with permission.

Edited by Irfan Ahmad.

Read next:

• Being your own boss doesn’t always pay off: What 30 years of data reveal

• Google CEO Pichai’s Stanford Speech Accompanied by Student Protest, Visible in News Coverage but Not in Official Recording
by External Contributor via Digital Information World

Tuesday, June 16, 2026

Being your own boss doesn’t always pay off: What 30 years of data reveal

Xiaoying Wang, Wilfrid Laurier University and Seok-Woo Kwon, University of Calgary

More than 2.6 million Canadians work for themselves, and according to an annual RBC poll conducted in 2025, 59 per cent of Canadians aspire to own a business — the highest level since 2017.

The appeal is understandable. A recent poll found that nearly two-thirds of people feel they have plateaued at work and see owning a business as their next move. “Being your own boss” has become shorthand for freedom, control and finally getting paid what you are worth.

However, working for yourself does not reliably make people richer or happier. In our new study, we followed 12,686 individuals over three decades, from their late teens into their 50s, to see how self-employment actually played out over a their working lives.

The takeaway should give anyone weighing the leap pause. Simply being self-employed often left people no better off financially, and measurably less satisfied with life, than peers who kept a regular job. Whether the dream pays off comes down to how you do it, not whether you do it.

4 ways through a working life

Not everyone follows the same entrepreneurial path. By tracking people year by year through the National Longitudinal Survey of Youth 1979, run by the U.S. Bureau of Labor Statistics, we found four distinct patterns across adulthood.

Predicted probability of self-employment across adulthood for four distinct entrepreneurial career paths.
(Seok-Woo Kwon and Xiaoying Wang), CC BY-ND

The largest group, about 69 per cent, remained in regular employment and rarely worked for themselves. We used them as the benchmark for everyone else.

Another 12 per cent tried self-employment in their 20s, then returned to regular jobs. About 13 per cent did the opposite, entering self-employment in their 40s and becoming more involved over time. A committed six per cent started young and remained self-employed throughout most of their careers.

The same decision — “work for yourself” — produced four very different lives, with different financial and personal outcomes depending on when it happened and what form it took.

It’s not whether, but how

When we looked at both financial and psychological outcomes, one pattern stood out. What set the financially and personally successful apart was not a brilliant idea or sheer grit, but the structure of their business.

People who built a formal, incorporated business — a registered company with its own legal identity — earned more and reported greater life satisfaction than people who never became entrepreneurs. People who simply worked for themselves as solo freelancers did not. On average, they earned no more than non-entrepreneurs and reported lower well-being.

Researchers have long noted that incorporated and unincorporated business owners operate very differently. Incorporated owners tend to run more ambitious and growth-oriented ventures compared to unincorporated owners.

In Canada, people with an incorporated business are more likely to plan to expand (37.6 per cent versus 22.6 per cent of unincorporated owners), and incorporated businesses are more likely to survive and typically earn more along the way.

Our results suggest the difference goes beyond income: the legal structure of a business is closely tied to whether self-employment improves lives or wears people down.

However, it’s important to note this is not a case of incorporate and watch your life improve. People who incorporate often start with advantages like more education, professional experience and skills.

The gap showed up even among people with similar backgrounds, but incorporation usually signals something about how a business was conceived from day one rather than acting as a simple fix after the fact.

Timing and the long game

Age also matters, but not the way popular accounts suggest. The image of the brilliant young founder who drops out of school to build the next big thing is mostly a myth, and experience turns out to be an asset.

Among people who built incorporated businesses, lifelong entrepreneurs earned the most, early starters reported the strongest life satisfaction and those who started in midlife struck the best balance between the two. The most rewarding path appeared to be building a formal business after accumulating skills, savings and industry experience.

Staying in business is not only about talent or timing, either. We found that people who grew up with books, magazines and a library card at home — a form of early-life advantage researchers call cultural capital — were more likely to sustain a business over the long term, even though they were no more likely to start one.

The skills and habits that keep a business alive for decades, it seems, may be formed long before anyone writes a business plan.

So should you take the leap?

None of this argues against self-employment. Instead, it suggests being clear-eyed about which path you are choosing. If the goal is greater financial security and a better quality of life, our findings point to building a registered company after gaining skills, savings and industry experience, rather than immediately after graduation.

Lifelong founders tend to earn the most, but for most people the midlife path offers the best balance of income and well-being.

If that is true for individuals, it may also be true for the systems meant to support them. Most programs are designed to help people launch, but far fewer help them incorporate, grow and survive.

Much of the funding that helps a business grow presumes it is already incorporated, leaving the solo self-employed — the group already earning the least — on the outside. If we want more people to reach the path that pays off, the support has to start earlier and last longer than the launch.The Conversation

Xiaoying Wang, Assistant Professor of Strategic Management, Wilfrid Laurier University and Seok-Woo Kwon, Robson Professor in Entrepreneurship, University of Calgary

This article is republished from The Conversation under a Creative Commons license. Read the original article.

Reviewed by Irfan Ahmad.

Read next: Google CEO Pichai’s Stanford Speech Accompanied by Student Protest, Visible in News Coverage but Not in Official Recording


by External Contributor via Digital Information World

The ‘right to repair’ movement has a point, but consumers should read the warranty fine print first

Wayne Fu, University of Michigan-Dearborn

Image: 
Sasun Bughdaryan / Unsplash

The “right to repair” movement is gaining steam as consumers push corporations to offer them more freedom to fix products – from cars to dishwashers to toys.

In April 2026, farm equipment maker Deere & Co. inked a US$99 million settlement in a class action suit over its prohibition on independent repairs to its increasingly high-tech equipment – another win for the movement. While the company didn’t admit wrongdoing, it will let farmers make more repairs themselves.

Equally significant, this case showed that the Federal Trade Commission, a lead plaintiff, may be more willing to protect consumers against the growing corporate control over servicing products after purchase.

Even President Donald Trump has weighed in. At an Oval Office event on June 4, 2026, he described existing restrictions as “strange” after he met with auto executives. “Nobody’s allowed to fix their car. … So I thought we’d do something about that,” he said, without offering details.

This push is understandable. As consumers want more reliable products, gaining the right to repair them with their own parts makes sense.

But they often overlook existing protections in their product warranties, which obligate the manufacturer to repair or replace if something goes wrong.

As a scholar focused on operational sustainability in supply chains, I have found that strong warranties aren’t just a safety net for buyers. They help companies build trust and stand out. Hyundai and Apple, for example, have used strong warranty programs to keep customers coming back for repairs within their own networks while maintaining profit margins. But many shoppers overlook this tool as the political momentum for the right to repair grows.

Back to the 1970s

Many automotive and electronics manufacturers have been making it harder for consumers to use parts not produced or authorized by the original manufacturer. For example, data can be transmitted back to the manufacturer in real time and flag a part from an independent supplier as incompatible.

Another common tactic is the use of “warranty void” stickers, which claim that repairs done by a third-party service will cancel the manufacturer’s product warranty. These practices have drawn widespread criticism for suppressing competition and encouraging planned obsolescence – and are among the main targets of right to repair advocates.

But consumers have a tool that’s widely underused: A 1975 law that prohibits voiding a warranty simply because an independent mechanic or a part from an independent vendor was used. This measure was designed to discourage the production or sale of low-quality products and sought to protect consumers from excessively restrictive coverage and bad-faith corporate negligence.

It was this law as well as several other consumer protections that the Biden administration’s FTC cited in 2024 when it warned several companies that they improperly restricted their warranty terms.

One reason consumers are largely unaware is that most find the text of warranty terms and the disclaimers difficult to read. And this isn’t an accident. Many manufacturers see warranties as sunk costs that should be avoided, and they have no incentives to clarify the terms or honor them.

Trust pays

Companies should rethink their approach to warranties – because it makes good business sense.

When manufacturers see they can no longer prevent third-party repairs, or offer warranties that are hard to redeem, it’s usually because they decide it’s more cost efficient to produce low-quality products. But that choice often cuts into the producer’s own profit while leaving the consumer worse off – and has a worse environmental impact, a recent study suggests.

A smarter option for manufacturers would be to establish a better, more efficient service network and offer more attractive warranty programs to retain customer loyalty.

Some companies have demonstrated that strong warranties pay off. Outdoor apparel maker Patagonia offers an “ironclad guarantee” to repair or replace its products for any reason. The “all mighty guarantee” offered by Osprey, which also manufactures outdoor gear, will repair or replace any damaged or defective product free of charge.

Then there’s retail giant Costco’s automatic extension of manufacturers’ warranties on major appliances and electronics – a major driver of its success.

Meanwhile, under the right to repair measures currently proposed, the post-purchase service and repair markets would likely get more competitive. New rules would let outside service providers and warranty companies gain better access to fix the products. Extended warranties and service contracts would then become even more prevalent, and manufacturers would need to become more vigilant.

Consumers also need more protection from the FTC, the top federal regulator tasked with consumer protection. Indeed, the right to repair movement reflects, in part, public disappointment that the government has failed to serve as a watchdog amid misleading corporate claims about warranty protections.

While the FTC has occasionally sued companies to protect consumer rights under the 1975 law, it has the legal tools to be more aggressive. Such a shift would not only change the corporate culture around warranties but send a message to consumers that warranties should work for them.

Enforcement, not just choice

If manufacturers embraced stronger warranty enforcement, consumers would benefit the most, provided they’re aware of what these protections entail. But manufacturers would come out ahead, too. By building up efficient service networks and offering more versatile warranties, they would remain competitive and foster customer loyalty, Hyundai being a good example.

The right to repair movement is in many ways a live policy experiment on expanding access to repair markets and giving consumers more choices. But more choices don’t necessarily lead to a better outcome. Coupling repair rights with stronger warranties and better enforcement is the best way a company can claim the prize it always says it wants: more satisfied consumers.The Conversation

Wayne Fu, Associate Professor of Decision Science, University of Michigan-Dearborn

This article is republished from The Conversation under a Creative Commons license. Read the original article.

Reviewed by Irfan Ahmad.

Read next: How Americans Feel About Sharing Their Data With AI


by External Contributor via Digital Information World

Friday, June 12, 2026

How Americans Feel About Sharing Their Data With AI

By Cloaked Team

You probably know that apps collect data about you. What you may not know is how many people are fighting back and how. A new Cloaked survey of 1,009 U.S. adults reveals that nearly one in three Americans have given an AI platform a fake name or fake birthday when asked for personal information. More than half have opted out of data collection, tracking, or targeted ads entirely. And nearly all of them keep using the same apps anyway.

That is the tension at the heart of this report. Americans do not trust AI platforms with their personal data. They feel monitored, powerless, and resigned. But they have not logged off. Instead, they are quietly pushing back in small ways, lying about who they are, opting out where they can, and covering their cameras just in case. This report examines what Americans are most afraid of sharing, which AI scenarios feel the most invasive, and what it would actually take to earn their trust.

Key Takeaways
  • Fewer than 1 in 5 of Americans (18%) say they trust AI to keep their personal data secure.
  • Americans are most uncomfortable sharing their Social Security number (88%), financial information (87%), and biometric data (74%) with AI.
  • Over 2 in 5 Americans (41%) say they would leave a platform if they shared data with government agencies.
  • Over 3 in 5 Americans (64%) believe AI is making decisions about them without their knowledge or consent.
  • Nearly 1 in 2 Americans (44%) say they would pay more for a service that guaranteed their personal data would never be processed by AI.

Trust, Transparency, and the Price of Privacy

Americans are increasingly aware of how their personal data is collected and used, and many feel they have less control over it than in the past. The findings below highlight how attitudes toward privacy, trust, and data sharing are shifting as new technology emerges.

  • Nearly 2 in 3 Americans say they have less control over their personal data today than five years ago.

  • More than 1 in 2 Americans say they have accepted that companies know more about them than they are comfortable with.
  • Boomers are the most likely of any generation to believe some loss of privacy is an unavoidable cost of modern technology (65%), compared to 54% of Gen Z.
  • Gen Z is the most likely generation to feel powerless to protect their personal data from AI (59%), compared to 45% of Boomers.
  • Nearly 1 in 2 Gen Z Americans (49%) say they would pay more for a service that guaranteed their data would never be processed by AI, compared to 37% of Boomers.
  • More than 2 in 5 Americans said learning that AI was making decisions about them regarding credit, hiring, or insurance without their consent would cause them to leave a platform; it is the single most cited dealbreaker among those tested.
  • Boomers are the most likely generation to say they would leave a platform if their data was shared with government agencies (51%), compared to 37% of Gen Z.
  • While 52% of Americans feel comfortable with AI detecting fraudulent transactions, 59% feel uncomfortable with AI scanning their emails to personalize ads.
  • Nearly 2 in 5 Americans are more concerned about AI collecting their children's data than their own.

Resistance, Evasion, and the Data Americans Refuse to Share

As AI tools become more integrated into everyday life, many Americans are drawing clear boundaries around what data they are willing to share. These findings reveal the situations that feel most invasive and the actions people are taking to protect their privacy.

  • Nearly 3 in 4 Americans say a bank reviewing their social media posts to determine creditworthiness feels creepy or invasive, with Boomers being the most alarmed of any generation (82%).
  • More than 2 in 3 Americans (70%) say an app that listens to their conversations to recommend products feels creepy.
  • Gen Z is more likely than any other generation to say their trust in AI platforms have decreased in the past year (28%), compared to just 11% of Boomers.
  • More than 1 in 2 Gen Z Americans (55%) feel uncomfortable sharing biometric data with AI platforms, compared to 42% of Millennials.
  • Women are more likely than men to have physically covered or disabled a camera on a device due to AI privacy concerns (43% vs. 34%).
  • Gen X is more likely than any other generation to have deleted an account or app over AI privacy concerns (56%), compared to 42% of Millennials and 43% of Gen Z.
  • Meta AI users are the most comfortable of any group with AI handling their personal data (67%) and the most likely to trust AI to keep their data secure (36%)—nearly double the rate of ChatGPT users (20%).

Below are the AI tool users most comfortable with AI handling their personal data:

  • Meta AI users are the most comfortable with AI handling their personal data (67%).
  • Claude users are the second most comfortable (63%).
  • Grok users are the third most comfortable (62%).

‍Below are the AI tool users most likely to trust AI to keep their personal data secure:

  • Meta AI users are the most likely to trust AI to keep their personal data secure (36%).
  • Perplexity users are the second most likely (31%).
  • Grok users are the third most likely (27%).

Taking Back Control

Americans are not indifferent to what AI platforms are doing with their data. They are frustrated, resigned, and quietly fighting back in whatever ways they can, lying about who they are, opting out where it is offered, covering their cameras, and continuing to use the same apps anyway because not using them no longer feels like a realistic option.

The data from this survey does not describe a public that has made peace with the current state of AI and personal privacy. It describes a public that has run out of better options. But surrender is not the only path forward. Tools exist today that let you use the internet, sign up for services, and engage with AI-powered platforms without handing over your real name, your real phone number, or your real email address. Learn more about how Cloaked can help you take back control of your personal data at cloaked.com.

Methodology

A survey of 1,009 U.S. adults was conducted on behalf of Cloaked. Respondents were asked about their comfort levels with sharing personal data with AI-powered platforms, their trust in AI companies, actions taken in response to AI privacy concerns, and which AI-related scenarios they found most alarming. The generational breakdown was Gen Z (17%), Millennials (52%), Gen X (23%), and Baby Boomers (7%).

This post was originally published on Cloaked Research Hub and republished here with permission.

Edited by Irfan Ahmad.

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YouTube Expands In-App Video Sharing and Messaging to More Markets

• The consequences of relying on AI for accurate news
by External Contributor via Digital Information World