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Topic Modelling for Extracting Behavioral Patterns from Transactions Data

机译:从交易数据中提取行为模式的主题建模

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With the increasing popularity of cashless payment methods for everyday, seasonal and special expenses popular banks accumulate huge amount of data about customer operations. In the article, we report a successful application of topic modelling to extract behaviour patterns from the data. The resulting models are built with BigARTM framework: flexible and efficient tool for topic modelling. The framework allows us to experiment with various models including PLSA, LDA and beyond. Results demonstrate ability of the approach to aggregate information about behaviour patterns of different customer groups. The results analysis allows to see the topics of such people clusters varying from travellers to mortgage holders. Moreover, low-dementional embeddings of the customers, which was given with topic model, were studied. We display that the client vector representations store demographic information as well as source data. We also test for a best way of preparing data for the model with metric above in mind.
机译:随着日常,季节性和特殊费用的无现金支付方式的日益普及,流行的银行积累了大量有关客户运营的数据。在本文中,我们报告了主题建模从数据中提取行为模式的成功应用。生成的模型是使用BigARTM框架构建的:主题建模的灵活高效的工具。该框架使我们可以试验各种模型,包括PLSA,LDA以及以后的模型。结果证明了该方法能够汇总有关不同客户群体的行为模式信息的能力。结果分析使您可以查看此类人群的主题,从旅行者到抵押贷款持有人都有所不同。此外,还研究了主题模型给出的低维客户嵌入。我们显示客户端矢量表示存储人口统计信息以及源数据。我们还测试了一种考虑上述指标的为模型准备数据的最佳方法。

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