Application of Deep Learning to Sentiment Analysis for recommender system on cloud

G. Preethi, P. V. Krishna, M. Obaidat, V. Saritha, Sumanth Yenduri
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引用次数: 64

Abstract

Sentiment analysis of short texts like single sentences and reviews available on different social networking sites is challenging because of the limited contextual information. Based on the sentiments and opinions available, developing a recommendation system is an interesting concept, which includes strategies that combine the small text content with prior knowledge. In this paper, we explore a new application of Recursive Neural Networks (RNN) with deep learning system for sentiment analysis of reviews. The proposed RNN-based Deep-learning Sentiment Analysis (RDSA) recommends the places that are near to the user's current location by analyzing the different reviews and consequently computing the score grounded on it. Deep Learning is used to optimize the recommendations depending on the sentiment analysis performed on the different reviews, which are taken from different social networking sites. The Experiments performed indicate that the RNN based Deep-learning Sentiment Analysis (RDSA) improvises the behavior by increasing the accuracy of the sentiment analysis, which in turn yields better recommendations to the user and thus helps to identify a particular position as per the requirement of the user need.
深度学习在云推荐系统情感分析中的应用
由于上下文信息有限,对不同社交网站上的短文本(如单句和评论)进行情感分析具有挑战性。基于可用的情感和意见,开发推荐系统是一个有趣的概念,它包括将小文本内容与先验知识相结合的策略。本文探讨了递归神经网络(RNN)与深度学习系统在评论情感分析中的新应用。提出的基于rnn的深度学习情感分析(RDSA)通过分析不同的评论来推荐离用户当前位置较近的地方,并以此为基础计算分数。深度学习用于优化推荐,这取决于对来自不同社交网站的不同评论进行的情感分析。实验表明,基于RNN的深度学习情感分析(RDSA)通过提高情感分析的准确性来改进行为,从而为用户提供更好的推荐,从而有助于根据用户需求识别特定位置。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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