基于高级数据挖掘的电子商务产品评论和推荐模型的鲁棒情感分析

B. Shanthini, N. Subalakshmi
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引用次数: 0

摘要

目前,数字评论在影响消费者购买模式和改善消费者之间的全球沟通方面发挥着至关重要的作用。Flipkart、亚马逊等电商巨头为未来的买家提供了关于产品性能的真实见解,并为消费者提供了一个分享体验的平台。为了从大量的评论中提取有价值的见解,需要将评论分为消极和积极的情绪。情感分析是一种从文本中提取主观数据的计算研究。本文重点研究了基于高级数据挖掘的电子商务产品评论鲁棒情感分析(ADMRSA-EPR)模型的设计。提出的ADMRSA-EPR技术主要依赖于对在线产品评论中存在的情感进行区分。在ADMRSA-EPR技术中,第一步是将原始产品评论分析成有用的格式,然后进行词嵌入过程。为了分析产品评论中存在的情绪,采用了堆叠自动编码器(SAE)模型。最后,采用蝠鲼觅食优化(MRFO)算法对SAE模型相关参数进行优化调整。ADMRSA-EPR技术在不同数据集上的实验结果分析报告了比其他现有模型更有希望的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Advanced Data Mining Enabled Robust Sentiment Analysis on E-Commerce Product Reviews and Recommendation Model
Currently, digital review plays a crucial role in influencing consumer buying patterns and improving global communications amongst consumers. E-commerce giants such as Flipkart, Amazon, and so on, provide real insights about the performance of the product to future buyers and provide a platform for the consumer for sharing their experiences. In order to extract valuable insight from a huge set of reviews, classification of reviews into negative and positive sentiments is needed. Sentiment Analysis (SA) is a computational study for extracting subjective data from text. This article focuses on the design of Advanced Data Mining Enabled Robust Sentiment Analysis on E-Commerce Product Reviews (ADMRSA-EPR) model. The presented ADMRSA-EPR technique mainly relies on the differentiation of the sentiments exist in the online product reviews. In the presented ADMRSA-EPR technique, the first step is to analyze the raw product reviews into useful format and word embedding process takes place. To analyze sentiments exist in product reviews, stacked auto encoder (SAE) model is applied. At the final stage, the parameters related to the SAE model get optimally adjusted using the manta ray foraging optimization (MRFO) algorithm. The experimental result analysis of the ADMRSA-EPR technique on distinct datasets reports a promising performance over the other existing models.
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