Title
Algorithmic Bias: Do Good Systems Make Relevant Documents More Retrievable?
Abstract
Algorithmic bias presents a difficult challenge within Information Retrieval. Long has it been known that certain algorithms favour particular documents due to attributes of these documents that are not directly related to relevance. The evaluation of bias has recently been made possible through the use of retrievability, a quantifiable measure of bias. While evaluating bias is relatively novel, the evaluation of performance has been common since the dawn of the Cranfield approach and TREC. To evaluate performance, a pool of documents to be judged by human assessors is created from the collection. This pooling approach has faced accusations of bias due to the fact that the state of the art algorithms were used to create it, thus the inclusion of biases associated with these algorithms may be included in the pool. The introduction of retrievability has provided a mechanism to evaluate the bias of these pools. This work evaluates the varying degrees of bias present in the groups of relevant and non-relevant documents for topics. The differentiating power of a system is also evaluated by examining the documents from the pool that are retrieved for each topic. The analysis finds that the systems that perform better, tend to have a higher chance of retrieving a relevant document rather than a non-relevant document for a topic prior to retrieval, indicating that retrieval systems which perform better at TREC are already predisposed to agree with the judgements regardless of the query posed.
Year
DOI
Venue
2017
10.1145/3132847.3133135
CIKM
Field
DocType
ISBN
Data mining,Information retrieval,Retrievability,Computer science,Pooling
Conference
978-1-4503-4918-5
Citations 
PageRank 
References 
1
0.36
8
Authors
2
Name
Order
Citations
PageRank
Colin Wilkie1525.58
Leif Azzopardi21919133.10