协同过滤
启发式
基质(化学分析)
计算机科学
矩阵完成
排
稀疏矩阵
可扩展性
推荐系统
行和列空间
要价
秩(图论)
算法
理论计算机科学
数学
人工智能
机器学习
组合数学
物理
经济
复合材料
经济
高斯分布
材料科学
数据库
量子力学
作者
Christian Borgs,Jennifer Chayes,Devavrat Shah,Christina Lee Yu
出处
期刊:Operations Research
[Institute for Operations Research and the Management Sciences]
日期:2021-12-06
卷期号:70 (6): 3143-3175
被引量:11
标识
DOI:10.1287/opre.2021.2193
摘要
Matrix estimation or completion has served as a canonical mathematical model for recommendation systems. More recently, it has emerged as a fundamental building block for data analysis as a first step to denoise the observations and predict missing values. Since the dawn of e-commerce, similarity-based collaborative filtering has been used as a heuristic for matrix etimation. At its core, it encodes typical human behavior: you ask your friends to recommend what you may like or dislike. Algorithmically, friends are similar “rows” or “columns” of the underlying matrix. The traditional heuristic for computing similarities between rows has costly requirements on the density of observed entries. In “Iterative Collaborative Filtering for Sparse Matrix Estimation” by Christian Borgs, Jennifer T. Chayes, Devavrat Shah, and Christina Lee Yu, the authors introduce an algorithm that computes similarities in sparse datasets by comparing expanded local neighborhoods in the associated data graph: in effect, you ask friends of your friends to recommend what you may like or dislike. This work provides bounds on the max entry-wise error of their estimate for low rank and approximately low rank matrices, which is stronger than the aggregate mean squared error bounds found in classical works. The algorithm is also interpretable, scalable, and amenable to distributed implementation.
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