Double-ConvMF:带有用户和项目特征文本的概率矩阵因式分解

IF 0.8 Q4 ROBOTICS
Takuya Tamada, Ryosuke Saga
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引用次数: 0

摘要

在当今这个信息丰富的社会,为商品和客户牵线搭桥的推荐系统的重要性与日俱增。电子商务网站和评论网站的发展使得获取大量产品描述和用户评论成为可能,人们相信,通过有效利用这些文本信息,可以提出更先进的推荐模型。ConvMF 是第一个将文本与矩阵因式分解方法之一的概率矩阵因式分解(PMF)相结合的模型。在这种方法中,使用 CNN 架构从项目文本(如项目描述)中提取特征,并将其集成到 PMF 中。但是,它们只关注项目文本,而不关注用户因素。因此,这种方法无法反映用户特征。因此,本文提出了一种新的推荐系统,利用 CNN 从项目和用户文本中提取项目和用户特征,并将其集成到矩阵因式分解中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Double-ConvMF: probabilistic matrix factorization with user and item characteristic text

In today’s information-rich society, the importance of recommender systems for matching items and customers is increasing day by day. The development of e-commerce sites and review sites has made it possible to access a large amount of product descriptions and user reviews, and it is believed that more advanced recommendation models can be proposed by efficiently utilizing this text information. ConvMF is the first model that integrates text and probabilistic matrix factorization(PMF) which is one of the matrix factorization methods. In this method, features are extracted from item text such as item descriptions using CNN architecture and integrated into PMF. However they focus only on the item text and not on the user factor. As a result, this method can not reflect user characteristics. Therefore, this paper proposes a new recommender system to extract both item and user features from item and user text using CNN and integrate them into matrix factorization.

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来源期刊
CiteScore
2.00
自引率
22.20%
发文量
101
期刊介绍: Artificial Life and Robotics is an international journal publishing original technical papers and authoritative state-of-the-art reviews on the development of new technologies concerning artificial life and robotics, especially computer-based simulation and hardware for the twenty-first century. This journal covers a broad multidisciplinary field, including areas such as artificial brain research, artificial intelligence, artificial life, artificial living, artificial mind research, brain science, chaos, cognitive science, complexity, computer graphics, evolutionary computations, fuzzy control, genetic algorithms, innovative computations, intelligent control and modelling, micromachines, micro-robot world cup soccer tournament, mobile vehicles, neural networks, neurocomputers, neurocomputing technologies and applications, robotics, robus virtual engineering, and virtual reality. Hardware-oriented submissions are particularly welcome. Publishing body: International Symposium on Artificial Life and RoboticsEditor-in-Chiei: Hiroshi Tanaka Hatanaka R Apartment 101, Hatanaka 8-7A, Ooaza-Hatanaka, Oita city, Oita, Japan 870-0856 ©International Symposium on Artificial Life and Robotics
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