A Theoretical Analysis of NDCG Type Ranking Measures
Yining Wang, Liwei Wang, Yuanzhi Li, Di He, Tie-Yan Liu, Wei Chen

TL;DR
This paper provides a theoretical analysis of NDCG ranking measures, revealing their convergence properties, introducing the concept of consistent distinguishability, and characterizing feasible discount functions.
Contribution
It introduces the notion of consistent distinguishability for ranking measures and characterizes conditions under which NDCG can differentiate between different ranking functions.
Findings
NDCG converges to 1 as the number of items increases.
NDCG with logarithmic discount has consistent distinguishability.
The decay rate of discount functions affects NDCG's ability to distinguish between rankings.
Abstract
A central problem in ranking is to design a ranking measure for evaluation of ranking functions. In this paper we study, from a theoretical perspective, the widely used Normalized Discounted Cumulative Gain (NDCG)-type ranking measures. Although there are extensive empirical studies of NDCG, little is known about its theoretical properties. We first show that, whatever the ranking function is, the standard NDCG which adopts a logarithmic discount, converges to 1 as the number of items to rank goes to infinity. On the first sight, this result is very surprising. It seems to imply that NDCG cannot differentiate good and bad ranking functions, contradicting to the empirical success of NDCG in many applications. In order to have a deeper understanding of ranking measures in general, we propose a notion referred to as consistent distinguishability. This notion captures the intuition that a…
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Taxonomy
TopicsInformation Retrieval and Search Behavior · Data Management and Algorithms · Web Data Mining and Analysis
