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首页> 外文期刊>Soft computing: A fusion of foundations, methodologies and applications >Deep learning-based sequential pattern mining for progressive database
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Deep learning-based sequential pattern mining for progressive database

机译:基于深度学习的渐进式数据库的顺序模式挖掘

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摘要

Sequential pattern mining (SPM) is one of the main application areas in the field of online business, e-commerce, bioinformatics, etc. The traditional approaches in SPM are unable to accurately mine the huge volume of data. Therefore, the proposed work employs a sequential mining model based on deep learning to minimize complexity in handling huge data. Application areas such as online retailing, finance, and e-commerce face a dynamic change in data, which results in non-stationary data. Therefore, our proposed work uses discrete wavelet analysis to convert non-stationary data into time series. In the proposed SPM, a reformed hybrid combination of convolutional neural network (CNN) with long short-term memory (LSTM) is designed to find out customer behavior and purchasing patterns in terms of time. CNN is used to find the concerned itemsets (frequent) at the end of the pattern and LSTM for finding the time interval among each pair of successive itemsets. The proposed work mines the sequential pattern from a progressive database that removes the obsolete data. Finally, the accuracy of the proposed work is compared with some traditional algorithms to demonstrate its robustness.
机译:顺序模式挖掘(SPM)是在线业务,电子商务,生物信息学领域的主要应用领域之一。SPM中的传统方法无法准确挖掘大量数据。因此,拟议的工作采用了一个基于深度学习的顺序挖掘模型,以最大限度地减少处理巨大数据的复杂性。在线零售,金融和电子商务等应用领域面临着数据的动态变化,这导致非静止数据。因此,我们所提出的工作采用离散小波分析将非静止数据转换为时间序列。在所提出的SPM中,具有长短期存储器(LSTM)的卷积神经网络(CNN)的改革杂交组合旨在在时间方面找出客户行为和购买模式。 CNN用于在图案结束时找到有关项目集(频繁),并且LSTM用于查找每对连续项集中的时间间隔。所提出的工作从逐步数据库中挖掘序列模式,该数据库删除过时数据。最后,将所提出的工作的准确性与一些传统算法进行比较,以展示其稳健性。

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