协同过滤
计算机科学
矩阵分解
随机梯度下降算法
可靠性(半导体)
水准点(测量)
因式分解
趋同(经济学)
领域(数学)
人工智能
机器学习
马尔科夫蒙特卡洛
推荐系统
深度学习
过程(计算)
数据挖掘
算法
人工神经网络
贝叶斯概率
数学
物理
操作系统
特征向量
经济
功率(物理)
量子力学
纯数学
地理
经济增长
大地测量学
作者
Jinze Wang,Yongli Ren,Jie Li,Ke Deng
出处
期刊:ACM Transactions on Information Systems
日期:2021-11-29
卷期号:40 (4): 1-32
被引量:1
摘要
Factorization models have been successfully applied to the recommendation problems and have significant impact to both academia and industries in the field of Collaborative Filtering ( CF ). However, the intermediate data generated in factorization models’ decision making process (or training process , footprint ) have been overlooked even though they may provide rich information to further improve recommendations. In this article, we introduce the concept of Convergence Pattern, which records how ratings are learned step-by-step in factorization models in the field of CF. We show that the concept of Convergence Patternexists in both the model perspective (e.g., classical Matrix Factorization ( MF ) and deep-learning factorization) and the training (learning) perspective (e.g., stochastic gradient descent ( SGD ), alternating least squares ( ALS ), and Markov Chain Monte Carlo ( MCMC )). By utilizing the Convergence Pattern, we propose a prediction model to estimate the prediction reliability of missing ratings and then improve the quality of recommendations. Two applications have been investigated: (1) how to evaluate the reliability of predicted missing ratings and thus recommend those ratings with high reliability. (2) How to explore the estimated reliability to adjust the predicted ratings to further improve the predication accuracy. Extensive experiments have been conducted on several benchmark datasets on three recommendation tasks: decision-aware recommendation, rating predicted, and Top- N recommendation. The experiment results have verified the effectiveness of the proposed methods in various aspects.
科研通智能强力驱动
Strongly Powered by AbleSci AI