Human society had a long history of suffering from cognitive biases leading to social prejudices and mass injustice. The prevalent existence of cognitive biases in large volumes of historical data can pose a threat of being manifested as unethical and seemingly inhumane predictions as outputs of AI systems trained on such data. To alleviate this problem, we propose a bias-aware multi-objective learning framework that given a set of identity attributes (e.g. gender, ethnicity etc.) and a subset of sensitive categories of the possible classes of prediction outputs, learns to reduce the frequency of predicting certain combinations of them, e.g. predicting stereotypes such as ‘most blacks use abusive language’, or ‘fear is a virtue of women’. O...
Dissertation presented as the partial requirement for obtaining a Master's degree in Information Man...
Fairness and bias are crucial concepts in artificial intelligence, yet they are relatively ignored i...
Assessments of algorithmic bias in large language models (LLMs) are generally catered to uncovering ...
Biases in cognition are ubiquitous. Social psychologists suggested biases and stereotypes serve a mu...
As AI has a wide range of influence on human social life, issues of transparency and ethics of AI ar...
Artificial intelligence is becoming a more prevalent part of our society. This presentation seeks to...
People are increasingly interacting with artificial intelligence (AI) systems and algorithms, but of...
How do Artificial Intelligence (AI) large language models structure the human world? And how does th...
Artificial Intelligence (AI)‐based systems are widely employed nowadays to make decisions that have ...
© 2020 The Author(s). This an open access work distributed under the terms of the Creative Commons A...
AI for Social Good: Harvard CRCS Workshop, Online, 20-21 July 2020Artificial Intelligence has the po...
Many Artificial Intelligence (AI) systems rely on finding patterns in large datasets, which are pron...
Biases in AI and machine learning algorithms are presented and analyzed through two issues managemen...
Algorithms are automating many tasks that were previously handled by humans. In some domains, algori...
In recent years Artificial Intelligence (AI), especially deep learning, has proven to be a technolog...
Dissertation presented as the partial requirement for obtaining a Master's degree in Information Man...
Fairness and bias are crucial concepts in artificial intelligence, yet they are relatively ignored i...
Assessments of algorithmic bias in large language models (LLMs) are generally catered to uncovering ...
Biases in cognition are ubiquitous. Social psychologists suggested biases and stereotypes serve a mu...
As AI has a wide range of influence on human social life, issues of transparency and ethics of AI ar...
Artificial intelligence is becoming a more prevalent part of our society. This presentation seeks to...
People are increasingly interacting with artificial intelligence (AI) systems and algorithms, but of...
How do Artificial Intelligence (AI) large language models structure the human world? And how does th...
Artificial Intelligence (AI)‐based systems are widely employed nowadays to make decisions that have ...
© 2020 The Author(s). This an open access work distributed under the terms of the Creative Commons A...
AI for Social Good: Harvard CRCS Workshop, Online, 20-21 July 2020Artificial Intelligence has the po...
Many Artificial Intelligence (AI) systems rely on finding patterns in large datasets, which are pron...
Biases in AI and machine learning algorithms are presented and analyzed through two issues managemen...
Algorithms are automating many tasks that were previously handled by humans. In some domains, algori...
In recent years Artificial Intelligence (AI), especially deep learning, has proven to be a technolog...
Dissertation presented as the partial requirement for obtaining a Master's degree in Information Man...
Fairness and bias are crucial concepts in artificial intelligence, yet they are relatively ignored i...
Assessments of algorithmic bias in large language models (LLMs) are generally catered to uncovering ...