DSCGIRLGJun 5, 2019

Fair Near Neighbor Search: Independent Range Sampling in High Dimensions

arXiv:1906.01859v228 citations
Originality Incremental advance
AI Analysis

This work addresses fairness in similarity search for applications such as recommendation systems, though it builds on prior low-dimensional studies and adapts existing methods like LSH.

The paper tackles the problem of ensuring fairness in similarity search by proposing data structures for the r-near neighbor problem that guarantee all points within distance r from a query have equal probability of being returned, addressing unfairness in high-dimensional settings like recommendation systems.

Similarity search is a fundamental algorithmic primitive, widely used in many computer science disciplines. There are several variants of the similarity search problem, and one of the most relevant is the $r$-near neighbor ($r$-NN) problem: given a radius $r>0$ and a set of points $S$, construct a data structure that, for any given query point $q$, returns a point $p$ within distance at most $r$ from $q$. In this paper, we study the $r$-NN problem in the light of fairness. We consider fairness in the sense of equal opportunity: all points that are within distance $r$ from the query should have the same probability to be returned. In the low-dimensional case, this problem was first studied by Hu, Qiao, and Tao (PODS 2014). Locality sensitive hashing (LSH), the theoretically strongest approach to similarity search in high dimensions, does not provide such a fairness guarantee. To address this, we propose efficient data structures for $r$-NN where all points in $S$ that are near $q$ have the same probability to be selected and returned by the query. Specifically, we first propose a black-box approach that, given any LSH scheme, constructs a data structure for uniformly sampling points in the neighborhood of a query. Then, we develop a data structure for fair similarity search under inner product that requires nearly-linear space and exploits locality sensitive filters. The paper concludes with an experimental evaluation that highlights (un)fairness in a recommendation setting on real-world datasets and discusses the inherent unfairness introduced by solving other variants of the problem.

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