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Exploration of usage behavioral model construction for university library electronic resources from Deep Learning Multilayer perceptron

机译:大学图书馆电子资源的使用者行为模型建设探讨了深度学习多层情人

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The majority of this study is to use the MLP, Multilayer perceptron, operation method of deep learning to predict the reader's behavior intention and the quality of use behavior generated from the electronic library service quality of the university library. A questionnaire was built based on the quality of network electronic resource services and the theoretical structure of UTAUT. Combining the public and private university students who are four-year universities and two-year masters in Taiwan, there were 1,206 questionnaires issued and 1,071 valid questionnaires were collected. The predicted results of the MLP were based on the Pearson coefficient with the calculated results of the SPSS statistical method. It was found that the calculation method of AI can accurately predict the usage behavior of 90.75% or more. According to the practice, MLP regression models can be applied to the construction of library electronic resources, such as the addition of electronic multimedia resources, or the choice of books in the future. You can use this type of deep learning model to quickly predict and make decisions.
机译:这项研究的大多数是使用MLP,多层的感知者,深度学习的操作方法来预测读者的行为意图和从大学图书馆的电子图书馆服务质量产生的使用行为的质量。根据网络电子资源服务质量和utaut理论结构建立了问卷。将公众和私立大学的学生组成为四年大学和台湾两年大师,发行了1,071次问卷的问卷。 MLP的预测结果基于Pearson系数与SPSS统计方法的计算结果。结果发现,AI的计算方法可以准确地预测90.75%或更多的使用行为。根据该实践,MLP回归模型可以应用于图书馆电子资源的构建,如添加电子多媒体资源,或者将来的书籍的选择。您可以使用这种深入学习模型来快速预测和做出决策。

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