Studies have shown that some Natural Language Processing (NLP) systems encode and replicate harmful biases with potential adverse ethical effects in our society. In this article, we propose an approach for identifying gender and racial stereotypes in word embeddings trained on judicial opinions from U.S. case law. Embeddings containing stereotype information may cause harm when used by downstream systems for classification, information extraction, question answering, or other machine learning systems used to build legal research tools. We first explain how previously proposed methods for identifying these biases are not well suited for use with word embeddings trained on legal opinion text. We then propose a domain adapted method for identi...
Search Engines (SE) have been shown to perpetuate well-known gender stereotypes identified in psycho...
Concerns about gender bias in word embedding models have captured substantial attention in the algor...
This Article focuses on stereotypes and examines discrimination cases in the United States. In sex d...
Although racial bias in the law is widely recognized, it remains unclear how these biases are in ent...
Gender bias in natural language processing (NLP) tools, deriving from implicit human bias embedded i...
Word embeddings carry stereotypical connotations from the text they are trained on, which can lead t...
The ever-increasing number of systems based on semantic text analysis is making natural language und...
abstract: Suspect classification is a judicial process by which classes of people are determined as ...
Do gender attitudes influence interactions with female judges in U.S. Circuit Courts? In this paper,...
This data represents the most important words for male and female subjects of sentences in U.S. case...
With the constant advancement of the way that we use technology, there is often a blind application ...
The blind application of machine learning runs the risk of amplifying biases present in data. Such a...
Gender stereotypes are perceptions about the typical physical, emotional, and social characteristics...
Sex stereotypes are of perennial concern within anti discrimination law and theory, yet there is wid...
Although there is widespread recognition of racial bias in US law, it is unclear how such bias appea...
Search Engines (SE) have been shown to perpetuate well-known gender stereotypes identified in psycho...
Concerns about gender bias in word embedding models have captured substantial attention in the algor...
This Article focuses on stereotypes and examines discrimination cases in the United States. In sex d...
Although racial bias in the law is widely recognized, it remains unclear how these biases are in ent...
Gender bias in natural language processing (NLP) tools, deriving from implicit human bias embedded i...
Word embeddings carry stereotypical connotations from the text they are trained on, which can lead t...
The ever-increasing number of systems based on semantic text analysis is making natural language und...
abstract: Suspect classification is a judicial process by which classes of people are determined as ...
Do gender attitudes influence interactions with female judges in U.S. Circuit Courts? In this paper,...
This data represents the most important words for male and female subjects of sentences in U.S. case...
With the constant advancement of the way that we use technology, there is often a blind application ...
The blind application of machine learning runs the risk of amplifying biases present in data. Such a...
Gender stereotypes are perceptions about the typical physical, emotional, and social characteristics...
Sex stereotypes are of perennial concern within anti discrimination law and theory, yet there is wid...
Although there is widespread recognition of racial bias in US law, it is unclear how such bias appea...
Search Engines (SE) have been shown to perpetuate well-known gender stereotypes identified in psycho...
Concerns about gender bias in word embedding models have captured substantial attention in the algor...
This Article focuses on stereotypes and examines discrimination cases in the United States. In sex d...