Customer Experience towards the Product during a Coronavirus Outbreak.

IF 2.7 4区 医学 Q2 CLINICAL NEUROLOGY
Sobia Wassan, Tian Shen, Chen Xi, Kamal Gulati, Danish Vasan, Beenish Suhail
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引用次数: 7

Abstract

Nowadays, sentimental analysis of consumers' review is becoming much crucial in the marketing world. It is not just giving ideas to the firms that how consumers like their product or service, but it would also help them make their service better. In this article, the statistical method identifies the relationship of many factors in consumer feedback. It introduces a deep-based learning method called DSC (deep sentiment classifier) to determine whether or not to recommend the reviewed product thoroughly. Our suggested method also investigates the effect sizes of the feedback, such as positives, negatives, and neutrals. We used the women's clothing review dataset containing 22,642 records after preprocessing of the results. Experimental studies show that the recommendations are an excellent positive sentiment indicator. In comparison, ratings become fuzzy performance metrics in product reviews. The 10-fold cross-validation analysis shows that the recommended form has the top F1 score (93.56%) in the sentimental classification on average and the recommended classification (88.32%) on average. A comparative description of other classifiers focused on machine learning, for example, KNN, random forest, logistic regression, decision tree, support vector machine multilayer perceptron, and naïve Bayes, also demonstrates that DSC gives the best possible result. We have tested DSC on the dataset IMDB (Internet Video Database), which includes the sentiment of the 50,000 movie reviews (25000 for training and 25000 for testing). In comparison to other baseline methods, DSC obtained an excellent classification score for this experiment.

Abstract Image

Abstract Image

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冠状病毒爆发期间对产品的客户体验。
如今,对消费者评论的情感分析在营销领域变得越来越重要。它不仅能让企业了解消费者是如何喜欢他们的产品或服务的,而且还能帮助他们提供更好的服务。在本文中,统计方法确定了消费者反馈中许多因素的关系。它引入了一种称为DSC(深度情感分类器)的深度学习方法,以确定是否彻底推荐审查过的产品。我们建议的方法还研究了反馈的效应大小,如积极,消极和中性。在对结果进行预处理后,我们使用了包含22642条记录的女装评论数据集。实验研究表明,推荐是一种很好的积极情绪指标。相比之下,评级在产品评论中变成了模糊的性能指标。10倍交叉验证分析表明,推荐表单在情感分类中平均F1得分最高(93.56%),推荐表单在情感分类中平均F1得分最高(88.32%)。对其他专注于机器学习的分类器的比较描述,例如KNN、随机森林、逻辑回归、决策树、支持向量机多层感知器和naïve贝叶斯,也表明DSC给出了最好的结果。我们在数据集IMDB (Internet Video Database)上测试了DSC,该数据集包含50,000条电影评论的情感(25,000条用于培训,25,000条用于测试)。与其他基线方法相比,DSC在本实验中获得了优异的分类分数。
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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来源期刊
Behavioural Neurology
Behavioural Neurology 医学-临床神经学
CiteScore
5.40
自引率
3.60%
发文量
52
审稿时长
>12 weeks
期刊介绍: Behavioural Neurology is a peer-reviewed, Open Access journal which publishes original research articles, review articles and clinical studies based on various diseases and syndromes in behavioural neurology. The aim of the journal is to provide a platform for researchers and clinicians working in various fields of neurology including cognitive neuroscience, neuropsychology and neuropsychiatry. Topics of interest include: ADHD Aphasia Autism Alzheimer’s Disease Behavioural Disorders Dementia Epilepsy Multiple Sclerosis Parkinson’s Disease Psychosis Stroke Traumatic brain injury.
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