Harshit Mishra Sucheta Soundarajan Mishra Addressing Bias in Information Retrieval

Addressing Bias in Information Retrieval

von Harshit Mishra Sucheta Soundarajan

Preis unbekannt

Buch in deiner Nähe kaufen


...oder deine aktuelle Postleitzahl eingeben:
oder

Beschreibung

Online search engines are an essential tool for seeking information, but results returned from these search engines can contain undesirable forms of bias with respect to protected attributes such as gender or race. These biases can exist due to the word embeddings used by search engines, the design of re-ranking algorithms, the development of retrieval algorithms, or a variety of other reasons. Classical information retrieval (IR) methods, such as query recommendation or query expansion, were designed to produce the most relevant results. However, if such biases are present in the system, then these methods will also deliver biased results.

 IR systems/recommender systems also play a major role in social media algorithms, where platforms have pivoted away from friend-follow timelines to “for you” timelines containing algorithmically-selected content. If these algorithms are biased (towards, say, maximizing screen time to show ads, maximizing user interaction to likes, comments), then they may push end users towards clickbait or non-mainstream trending topics. 

This book presents an overview of modern IR and discusses the work done to mitigate biases in IR systems. It also examines methods for debiasing word embeddings and re-ranking search results to address group fairness, and presents a query reformulation method that analyzes bias in search results and delivers balanced results to the end user.

Awareness of how information retrieval systems work, ways to mitigate bias in search results, and the tradeoffs between accuracy and bias metrics in search results will help readers understand real-world search engines. 


Explains how bias may become part of Information Retrieval systems and ways to mitigate this risk and increase fairness Presents an overview of modern Information Retrieval, describing different query reformulation methods Examines methods for debiasing word embeddings, re-ranking search results to address fairness and query reformulation

Autor*in

Harshit Mishra

Themen in »Addressing Bias in Information Retrieval«

Information Retrieval Bias in Information Retrieval Query Recommendation Recommender Systems Query Reformulation Query Expansion Word Embedding Debiasing Word Embeddings Fair Information Retrieval Fair Ranking Unfairness in Information Retrieval

Stimmen zu »Addressing Bias in Information Retrieval«

Details

ISBN: 9783032241450
Verlag: Springer International Publishing
Erscheinung: 22.05.2026

Link teilen


Über buchnah.de | Die Buchhandlungen | Die Verlage | Impressum & Kontakt | Datenschutz | Presse


Auf dieser Seite kannst Du Buchhandlungen in der Nähe finden