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A machine learning-based sentiment analysis of online product reviews with a novel term weighting and feature selection approach

机译:基于机器学习的情感分析,具有新颖的术语加权和特征选择方法的在线产品评论

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摘要

Recently, online shopping has turned into a mainstream means for users to purchase as well as consume with the upsurge development of Internet technology. User satisfaction can be improved effectively by doing Sentiment Analysis (SA) of a large quantity of user reviews on e-commerce platforms. It is still challenging to envisage the accurate sentiment polarities of the user reviews because of the changes in sequence length, textual order, along with complicated logic. This paper proposes a new optimized Machine Learning (ML) algorithm called the Local Search Improvised Bat Algorithm based Elman Neural Network (LSIBA-ENN) for the SA of online product reviews. The proposed work of SA encompasses '4' major steps: ⅰ) Data Collection (DC), ⅱ) preprocessing, ⅲ) Features Extraction (FE) or Term Weighting (TW), Feature Selection (FS), and polarity or Sentiment Classifications (SC). Initially, the Web Scrapping Tool (WST) is utilized to extract the customer reviews of the products for which the data is gathered as of the E-commerce websites. Next, preprocessing is carried out on the web scrap extracted data. Those preprocessed data go through TW and FS for additional processing by means of Log Term Frequency-based Modified Inverse Class Frequency (LTF-MICF) and Hybrid Mutation based Earth Warm Algorithm (HMEWA). Lastly, the HM-EWA data is rendered to the LSIBA-ENN, which classifies the customer reviews' sentiment as positive, negative, and neutral. For the performance analysis of the proposed and prevailing classifiers, '2' yardstick datasets are taken. The outcomes exhibit that the LSIBA-ENN attains the best performance in SC when weighted against the existing top-notch algorithms. The observations of the reviewer are exact. The prevailing ENN proffers recall of 87.79 when utilizing the proposed LTF-MICF scheme, whereas ENN only achieve 83.55, 84.03, 85.48, and 86.04 of recall whilst utilizing W2V, TF, TF-IDF, and TF-DFS schemes respectively.
机译:最近,网上购物已成为用户购买的主流手段以及互联网技术的升高开发的消费。通过对电子商务平台的大量用户评论进行情感分析(SA),可以有效地提高用户满意度。设想用户评论的准确情感极性仍然挑战,因为序列长度,文本顺序的变化以及复杂的逻辑。本文提出了一种新的优化机器学习(ML)算法,称为本地搜索已进入基于BAT算法的基于ELMAN神经网络(LSIBA-ENN)的在线产品评论。 SA的拟议工作包括“4”重大步骤:Ⅰ)数据收集(DC),Ⅱ)预处理,Ⅲ)特征提取(FE)或术语加权(TW),特征选择(FS)和极性或情绪分类( sc)。最初,使用Web扫描工具(WST)来利用作为电子商务网站收集数据收集的产品的客户评审。接下来,在Web Scrap提取数据上执行预处理。这些预处理数据通过TW和FS通过基于日志频率的修改的逆等级频率(LTF-MICF)和基于混合突变的地球热算法(HMEWA)进行额外处理。最后,HM-EWA数据呈现给LSIBA-enn,将客户评判的情绪分类为正,负离子和中性。对于提出和普遍分类的性能分析,拍摄了“2”尺寸的数量数据集。结果表明,LSIBA-ENN在对现有的顶部缺口算法加权时达到SC中的最佳性能。审稿人的观察确切地说。当利用所提出的LTF-MICF方案时,现行的enn PROFFERS召回87.79,而enn仅在使用W2V,TF,TF-IDF和TF-DFS方案的同时达到83.55,84.03,85.48和86.04。

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