Recommender system has been proven to be significantly crucial in many fields and is widely used by various domains. Most of the conventional recommender systems rely on the numeric rating given by a user to reflect his opinion about a consumed item; however, these ratings are not available in many domains. As a result, a new source of information represented by the user-generated reviews is incorporated in the recommendation process to compensate for the lack of these ratings. The reviews contain prosperous and numerous information related to the whole item or a specific feature that can be extracted using the sentiment analysis field. This paper gives a comprehensive overview to help researchers who aim to work with recommender system and sentiment analysis. It includes a background of the recommender system concept, including phases, approaches, and performance metrics used in recommender systems. Then, it discusses the sentiment analysis concept and highlights the main points in the sentiment analysis, including level, approaches, and focuses on aspect-based sentiment analysis.
翻译:实践证明,建议系统在许多领域至关重要,并被广泛用于多个领域。大多数常规建议系统依靠用户给出的数字评级来反映用户对耗尽项目的意见;然而,在许多领域没有提供这些评级。结果,由用户生成的审查所代表的新的信息来源被纳入了建议进程,以弥补缺乏这些评级的情况。审查包含与整个项目有关的大量丰富信息,或者一个可以通过情绪分析字段提取的具体特征。本文件提供了一份全面的概览,以帮助打算与建议系统和情绪分析合作的研究人员。其中包括建议系统概念的背景,包括建议系统中使用的阶段、方法和性能衡量标准。随后,它讨论了情绪分析概念,并着重情绪分析中的要点,包括级别、方法,并侧重于基于侧面的情绪分析。