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An Empirical Study on Learning Based Methods for User Consumption Intention Classification

机译:基于学习的用户消费意向分类方法的实证研究

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摘要

Recently, huge amount of text with user consumption intentions have been published on the social media platform, such as Twitter and Weibo, and classifying the intentions of users has great values for both scientific research and commercial applications. User consumption analysis in social media concerns about the text content representation and intention classification, whose solutions mainly focus on the traditional machine learning and the emerging deep learning techniques. In this paper, we conduct a comprehensive empirical study on the user intension classification problem with learning based techniques using different text representation methods. We compare different machine learning, deep learning methods and various combinations of them in tweet text presentation and users' consumption intention classification. The experimental results show that LSTM models with pre-trained word vector representation can achieve the best classification performance.
机译:近来,在Twitter和微博等社交媒体平台上已经发布了具有用户消费意图的大量文本,并且对用户意图进行分类对于科学研究和商业应用都具有巨大的价值。社交媒体中的用户消费分析关注文本内容表示和意图分类,其解决方案主要集中在传统的机器学习和新兴的深度学习技术上。在本文中,我们使用不同的文本表示方法,通过基于学习的技术对用户意图分类问题进行了全面的实证研究。我们在推文文本表示和用户消费意向分类中比较了不同的机器学习,深度学习方法以及它们的各种组合。实验结果表明,具有预训练词向量表示的LSTM模型可以实现最佳的分类性能。

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