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Review Rating with Joint Classification and Regression Model

机译:审查评级与联合分类和回归模型

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摘要

Review rating is a sentiment analysis task which aims to predict a recommendation score for a review. Basically, classification and regression models are two major approaches to review rating, and these two approaches have their own characteristics and strength. For instance, the classification model can flexibly utilize distinguished models in machine learning, while the regression model can capture the connections between different rating scores. In this study, we propose a novel approach to review rating, namely joint LSTM, by exploiting the advantages of both review classification and regression models. Specifically, our approach employs an auxiliary Long-Short Term Memory (LSTM) layer to learn the auxiliary representation from the classification setting, and simultaneously join the auxiliary representation into the main LSTM layer for the review regression setting. In the learning process, the auxiliary classification LSTM model and the main regression LSTM model are jointly learned. Empirical studies demonstrate that our joint learning approach performs significantly better than using either individual classification or regression model on review rating.
机译:审查评级是一种情感分析任务,旨在预测审查的推荐评分。基本上,分类和回归模型是审查评级的两种主要方法,这两种方法都有自己的特点和力量。例如,分类模型可以灵活地利用机器学习中的尊贵模型,而回归模型可以捕获不同评级分数之间的连接。在这项研究中,我们提出了一种新颖的方法来审查评级,即联合LSTM,利用审查分类和回归模型的优势。具体而言,我们的方法采用辅助长短短期存储器(LSTM)层来学习来自分类设置的辅助表示,并同时将辅助表示加入到主LSTM层中以进行审阅回归设置。在学习过程中,共同学习辅助分类LSTM模型和主回归LSTM模型。实证研究表明,我们的联合学习方法明显优于在审查评级上使用单独的分类或回归模型。

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