Saved in:
Bibliographic Details
Main Authors: Nguyen, Tung, Uhlmann, Jeffrey
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2404.17097
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866929327916974080
author Nguyen, Tung
Uhlmann, Jeffrey
author_facet Nguyen, Tung
Uhlmann, Jeffrey
contents In this paper we argue that conventional unitary-invariant measures of recommender system (RS) performance based on measuring differences between predicted ratings and actual user ratings fail to assess fundamental RS properties. More specifically, posing the optimization problem as one of predicting exact user ratings provides only an indirect suboptimal approximation for what RS applications typically need, which is an ability to accurately predict user preferences. We argue that scalar measures such as RMSE and MAE with respect to differences between actual and predicted ratings are only proxies for measuring RS ability to accurately estimate user preferences. We propose what we consider to be a measure that is more fundamentally appropriate for assessing RS performance, rank-preference consistency, which simply counts the number of prediction pairs that are inconsistent with the user's expressed product preferences. For example, if an RS predicts the user will prefer product A over product B, but the user's withheld ratings indicate s/he prefers product B over A, then rank-preference consistency has been violated. Our test results conclusively demonstrate that methods tailored to optimize arbitrary measures such as RMSE are not generally effective at accurately predicting user preferences. Thus, we conclude that conventional methods used for assessing RS performance are arbitrary and misleading.
format Preprint
id arxiv_https___arxiv_org_abs_2404_17097
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Rank-Preference Consistency as the Appropriate Metric for Recommender Systems
Nguyen, Tung
Uhlmann, Jeffrey
Information Retrieval
In this paper we argue that conventional unitary-invariant measures of recommender system (RS) performance based on measuring differences between predicted ratings and actual user ratings fail to assess fundamental RS properties. More specifically, posing the optimization problem as one of predicting exact user ratings provides only an indirect suboptimal approximation for what RS applications typically need, which is an ability to accurately predict user preferences. We argue that scalar measures such as RMSE and MAE with respect to differences between actual and predicted ratings are only proxies for measuring RS ability to accurately estimate user preferences. We propose what we consider to be a measure that is more fundamentally appropriate for assessing RS performance, rank-preference consistency, which simply counts the number of prediction pairs that are inconsistent with the user's expressed product preferences. For example, if an RS predicts the user will prefer product A over product B, but the user's withheld ratings indicate s/he prefers product B over A, then rank-preference consistency has been violated. Our test results conclusively demonstrate that methods tailored to optimize arbitrary measures such as RMSE are not generally effective at accurately predicting user preferences. Thus, we conclude that conventional methods used for assessing RS performance are arbitrary and misleading.
title Rank-Preference Consistency as the Appropriate Metric for Recommender Systems
topic Information Retrieval
url https://arxiv.org/abs/2404.17097