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Autori principali: Singhal, Mohit, Pacheco, Javier, Khorzooghi, Seyyed Mohammad Sadegh Moosavi, Debi, Tanushree, Asudeh, Abolfazl, Das, Gautam, Nilizadeh, Shirin
Natura: Preprint
Pubblicazione: 2023
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Accesso online:https://arxiv.org/abs/2308.02129
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author Singhal, Mohit
Pacheco, Javier
Khorzooghi, Seyyed Mohammad Sadegh Moosavi
Debi, Tanushree
Asudeh, Abolfazl
Das, Gautam
Nilizadeh, Shirin
author_facet Singhal, Mohit
Pacheco, Javier
Khorzooghi, Seyyed Mohammad Sadegh Moosavi
Debi, Tanushree
Asudeh, Abolfazl
Das, Gautam
Nilizadeh, Shirin
contents Auditing is critical to ensuring the fairness and reliability of decision-making systems. However, auditing a black-box system for bias can be challenging due to the lack of transparency in the model's internal workings. In many web applications, such as Yelp, it is challenging, if not impossible, to manipulate their inputs systematically to identify bias in the output. Yelp connects users and businesses, where users identify new businesses and simultaneously express their experiences through reviews. Yelp recommendation software moderates user-provided content by categorizing it into recommended and not-recommended sections. The recommended reviews, among other attributes, are used by Yelp's ranking algorithm to rank businesses in a neighborhood. Due to Yelp's substantial popularity and its high impact on local businesses' success, understanding the bias of its algorithms is crucial. This data-driven study, for the first time, investigates the bias of Yelp's business ranking and review recommendation system. We examine three hypotheses to assess if Yelp's recommendation software shows bias against reviews of less established users with fewer friends and reviews and if Yelp's business ranking algorithm shows bias against restaurants located in specific neighborhoods, particularly in hotspot regions, with specific demographic compositions. Our findings show that reviews of less-established users are disproportionately categorized as not-recommended. We also find a positive association between restaurants' location in hotspot regions and their average exposure. Furthermore, we observed some cases of severe disparity bias in cities where the hotspots are in neighborhoods with less demographic diversity or higher affluence and education levels.
format Preprint
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publishDate 2023
record_format arxiv
spellingShingle Auditing Yelp's Business Ranking and Review Recommendation Through the Lens of Fairness
Singhal, Mohit
Pacheco, Javier
Khorzooghi, Seyyed Mohammad Sadegh Moosavi
Debi, Tanushree
Asudeh, Abolfazl
Das, Gautam
Nilizadeh, Shirin
Computers and Society
Databases
Auditing is critical to ensuring the fairness and reliability of decision-making systems. However, auditing a black-box system for bias can be challenging due to the lack of transparency in the model's internal workings. In many web applications, such as Yelp, it is challenging, if not impossible, to manipulate their inputs systematically to identify bias in the output. Yelp connects users and businesses, where users identify new businesses and simultaneously express their experiences through reviews. Yelp recommendation software moderates user-provided content by categorizing it into recommended and not-recommended sections. The recommended reviews, among other attributes, are used by Yelp's ranking algorithm to rank businesses in a neighborhood. Due to Yelp's substantial popularity and its high impact on local businesses' success, understanding the bias of its algorithms is crucial. This data-driven study, for the first time, investigates the bias of Yelp's business ranking and review recommendation system. We examine three hypotheses to assess if Yelp's recommendation software shows bias against reviews of less established users with fewer friends and reviews and if Yelp's business ranking algorithm shows bias against restaurants located in specific neighborhoods, particularly in hotspot regions, with specific demographic compositions. Our findings show that reviews of less-established users are disproportionately categorized as not-recommended. We also find a positive association between restaurants' location in hotspot regions and their average exposure. Furthermore, we observed some cases of severe disparity bias in cities where the hotspots are in neighborhoods with less demographic diversity or higher affluence and education levels.
title Auditing Yelp's Business Ranking and Review Recommendation Through the Lens of Fairness
topic Computers and Society
Databases
url https://arxiv.org/abs/2308.02129