Perception-Aware Bias Detection for Query Suggestions
By: Fabian Haak, Philipp Schaer
Potential Business Impact:
Finds unfair suggestions when searching for people.
Bias in web search has been in the spotlight of bias detection research for quite a while. At the same time, little attention has been paid to query suggestions in this regard. Awareness of the problem of biased query suggestions has been raised. Likewise, there is a rising need for automatic bias detection approaches. This paper adds on the bias detection pipeline for bias detection in query suggestions of person-related search developed by Bonart et al. \cite{Bonart_2019a}. The sparseness and lack of contextual metadata of query suggestions make them a difficult subject for bias detection. Furthermore, query suggestions are perceived very briefly and subliminally. To overcome these issues, perception-aware metrics are introduced. Consequently, the enhanced pipeline is able to better detect systematic topical bias in search engine query suggestions for person-related searches. The results of an analysis performed with the developed pipeline confirm this assumption. Due to the perception-aware bias detection metrics, findings produced by the pipeline can be assumed to reflect bias that users would discern.
Similar Papers
Auditing Search Query Suggestion Bias Through Recursive Algorithm Interrogation
Information Retrieval
Finds hidden bias in online searches.
Perception-Driven Bias Detection in Machine Learning via Crowdsourced Visual Judgment
Machine Learning (CS)
Finds unfairness in computer decisions using people's eyes.
Textual Data Bias Detection and Mitigation -- An Extensible Pipeline with Experimental Evaluation
Computation and Language
Cleans computer text to stop unfairness.