In response to growing concerns of bias, discrimination, and unfairness perpetuated by algorithmic systems, the datasets used to train and evaluate machine learning models have come under increased scrutiny. Many of these examinations have focused on the contents of machine learning datasets, finding glaring underrepresentation of minoritized groups. In contrast, relatively little work has been done to examine the norms, values, and assumptions embedded in these datasets. In this work, we conceptualize machine learning datasets as a type of informational infrastructure, and motivate a genealogy as method in examining the histories and modes of constitution at play in their creation. We present a critical history of ImageNet as an exemplar, ...
Before being an exaltation to Luddites (the English workers from the 19th century who actually destr...
It has been argued that Artificial Intelligence (AI) is experiencing a fast process of commodificati...
International audienceTaking advantage of the spectacular successes of deep learning techniques, the...
Artificial intelligence (AI) technologies like ChatGPT, Stable Diffusion, and LaMDA have led a multi...
This study examines the history of machine learning in the second half of the twentieth century. The...
Machine Learning (ML) applications shape, and are shaped by, human values. In the last decade classi...
<p>Learning by artificial intelligence systems-what I will typically call machine learning-has a dis...
ABSTRACTMachine learning (ML) classification models are becoming increasingly popular for tackling t...
International audienceGenerative Adversarial Networks (GANs) have received much recent attention as ...
This paper addresses the interpretability of deep learning-enabled image recognition processes in co...
This is a corpus of about 500 computer vision datasets, from which we sampled 114 dataset publicatio...
Classification performance based on ImageNet is the de-facto standard metric for CNN development. In...
In the field of automated image recognition, computer vision or artificial ‘intelligence,’ the Image...
This data paper documents a dataset that captures cultural attitudes towards machine vision technolo...
Machine learning has always been an integral part of artificial intelligence, and its methodology ha...
Before being an exaltation to Luddites (the English workers from the 19th century who actually destr...
It has been argued that Artificial Intelligence (AI) is experiencing a fast process of commodificati...
International audienceTaking advantage of the spectacular successes of deep learning techniques, the...
Artificial intelligence (AI) technologies like ChatGPT, Stable Diffusion, and LaMDA have led a multi...
This study examines the history of machine learning in the second half of the twentieth century. The...
Machine Learning (ML) applications shape, and are shaped by, human values. In the last decade classi...
<p>Learning by artificial intelligence systems-what I will typically call machine learning-has a dis...
ABSTRACTMachine learning (ML) classification models are becoming increasingly popular for tackling t...
International audienceGenerative Adversarial Networks (GANs) have received much recent attention as ...
This paper addresses the interpretability of deep learning-enabled image recognition processes in co...
This is a corpus of about 500 computer vision datasets, from which we sampled 114 dataset publicatio...
Classification performance based on ImageNet is the de-facto standard metric for CNN development. In...
In the field of automated image recognition, computer vision or artificial ‘intelligence,’ the Image...
This data paper documents a dataset that captures cultural attitudes towards machine vision technolo...
Machine learning has always been an integral part of artificial intelligence, and its methodology ha...
Before being an exaltation to Luddites (the English workers from the 19th century who actually destr...
It has been argued that Artificial Intelligence (AI) is experiencing a fast process of commodificati...
International audienceTaking advantage of the spectacular successes of deep learning techniques, the...