Bias And Corruption In Artificial Intelligence: A Threat To Fairness

Cristian Randieri is Professor at eCampus University. Kwaai EMEA Director, Intellisystem Technologies Founder, C3i official member.

getty

Artificial intelligence will continue to revolutionize the world at an arrestable and ever-increasing pace, but without adequate human oversight, it may have multiple risks, amplifying inequalities and systematic distortions. Bias in AI models and the possibility of intentional manipulation raise many ethical and strategic questions for companies and institutions that are called upon to analyze the roots of these problems, their consequences and strategies to mitigate their effects.

Bias In Artificial Intelligence: An Invisible Risk

The standard literature defines cognitive bias as a systematic distortion that affects decision making processes and cognitive understanding, often resulting from limited data sets and unconscious biases and decision protocols favoring certain viewpoints. However, bias is a human factor generated by the intrinsic characteristic of the way our brain processes information, often resulting from cognitive shortcuts (heuristics) that help us make decisions in the shortest possible time. It occurs whenever a person tries to evaluate the current situation based on their past experiences, omitting differences where possible to reuse the same criteria adopted in a similar past situation. Omitting such differences, however, can sometimes be decisive in invalidating the final evaluation, which can lead to systematic distortions in reasoning, influencing the resulting judgments and decisions. AI systems become biased when the model is trained with asymmetrical data or when structural defects exist within the design, resulting in unfair outcomes. Facial recognition systems serve as a prime example: An algorithm that trains primarily with images of light skin tones leads it to show better accuracy for that group at the expense of darker skin tone individuals.

The problem extends beyond mere technology to become a serious matter of social justice and inclusion. Algorithmic bias is a big problem that comes from the choices made during the creation of an algorithm, regardless of whether the choices are intentional or not. It has the potential to have very severe consequences in areas such as giving out loans, hiring and the criminal justice system. It’s scary to think that data can seem neutral yet produce discriminatory outcomes. This is a testament to the necessity of more transparency and accountability in the creation and use of these technologies to ensure everyone gets a fair shot. However, user-induced bias is another aspect of the discussion.

When people interact with AI, they tend to exhibit certain behaviors that perpetuate current biases. This is evident in social media, where the algorithms prefer the users’ interests to present content that is like-minded. This process leads to the formation of what has been referred to as the “filter bubbles,” which enhance the divisions and increase polarization in society.

Corrupt AI: When Manipulation Takes Over

AI corruption represents an intentional threat that threatens the integrity of models, whereas bias typically develops unintentionally. The greatest danger among the manipulation techniques commonly used for AI systems comes from data poisoning because this method allows users to insert false information into training datasets, which leads to altered algorithm behavior and preferential treatment of certain issues, such as modified artificial credit scores. Model-based vulnerabilities known as backdoors create intentional weaknesses that enable malicious entities to control algorithmic decisions with significant risks in fields including security and justice. Systems face input data manipulation through adversarial attacks, which leads them to generate wrong results while trying to evade anti-fraud detection.

Model corruption achieves its damaging effects when someone alters the model’s core parameters. The process includes making selective adjustments to the algorithm’s framework without necessarily promoting bias, which often results in unanticipated protection of certain population groups. This can occur during recruitment, where certain groups are unfairly preferred for employment.

These problems create trust issues with artificial intelligence and lead to ethical and operational challenges that require innovative solutions as responses. The identification of these problems is essential for keeping AI systems fair and trustworthy.

The Motivations Behind AI Corruption

What might cause someone to tamper with an AI system? This can be due to various reasons, which can be as simple as an economic perspective, political perspective or even some implicit bias that people may not be fully aware of. For instance, in the financial services industry, AI can be used to rig the market through high-frequency trading algorithms or to give other investors food for thought on stock prices. In the insurance industry, for instance, AI algorithms that have been biased can deny insurance coverage to people deemed to be high-risk, a practice that is detrimental to what is referred to as “marginalized groups.”

From a political standpoint, the misuse of AI can impact any platform that is designed to manage information online. A clear example is how the algorithms used in social media can be manipulated to change people’s perceptions, support certain ideologies, or spread false information, as evidenced by the Cambridge Analytica scandal. Additionally, it’s worth noting that sometimes, the personal biases of those who create these technologies can unintentionally seep into the systems they design.

Conclusions

Artificial intelligence is a powerful innovation, but without specific and adequate oversight, it can amplify injustices and undermine trust in its models. For artificial intelligence to continue to be a tool for equitable and inclusive progress, it is essential to adopt mitigation strategies that include greater transparency in development processes, diversifying data sets, conducting independent audits and implementing specific regulations that effectively prevent this technology’s misuse.

Only with a deep collective commitment between companies, governments and civil society will it be possible to ensure that such a powerful and widespread tool as AI continues to assert itself as a driver of innovation without compromising the highest human values ​​of justice and equity.


Forbes Technology Council is an invitation-only community for world-class CIOs, CTOs and technology executives. Do I qualify?


Read More
Cristian Randieri

Latest

Everything you need to know about Greek yogurt and how it can meet your nutrition needs

Recipes Two-ingredient cheesecake. Turkish-style pasta. Baked yogurt toast. Bagels....

Cook This: 3 recipes from Istanbul, including one of Turkey’s favourite breakfasts

Recipes Özlem Warren shines a light on the culinary...

Green Sauce Tofu and More Recipes We Made This Week

Recipes It’s no secret that Bon Appétit editors cook...

Newsletter

Don't miss

Everything you need to know about Greek yogurt and how it can meet your nutrition needs

Recipes Two-ingredient cheesecake. Turkish-style pasta. Baked yogurt toast. Bagels....

Cook This: 3 recipes from Istanbul, including one of Turkey’s favourite breakfasts

Recipes Özlem Warren shines a light on the culinary...

Green Sauce Tofu and More Recipes We Made This Week

Recipes It’s no secret that Bon Appétit editors cook...

Marshmallow Creme vs. Fluff: The Sweet and Sticky Showdown

Recipes Skip to main content Taste of Home Taste of Home Do...

13 Real Business Trip Stories That Prove Work Travel Collects More Stories Than Miles

Real business trips almost never go the way the itinerary promised. They start with a confidently-packed suitcase and an eight-page agenda, and somewhere between the airport gate and the hotel breakfast they quietly turn into something nobody could have invented — equal parts comedy, chaos, and unscheduled adventure. These 13 real business trip moments are exactly that kind of work-trip plot

Your business texts could look like scam messages from July 1 if you don’t act now

From July 1, any branded SMS your business sends without a registered sender ID will be labelled “Unverified” and grouped with scam messages.  What’s happening: From 1 July 2026, any business or organisation that sends SMS using a branded name, such as “MyShop” or “AcmeServices”, instead of a phone number, must have that sender ID

Business groups are fighting Labor’s CGT changes. Here is where SMEs stand

Labor’s most contested tax reform in a generation cleared its first formal hurdle on Thursday and immediately ran into organised resistance. Treasurer Jim Chalmers introduced the government’s tax reform legislation to the House of Representatives on 28 May, bundling together four budget measures: the capital gains tax overhaul, new limits on negative gearing, a $250