Research about recommending books based on hierarchical analysis method and BP neural network Online publication date: Tue, 13-Dec-2016
by Yong-Li Zhang; Yan-Wei Zhu; Jia-Hui Fu
International Journal of Advanced Media and Communication (IJAMC), Vol. 6, No. 2/3/4, 2016
Abstract: At present, with the development of the information technologies and the internet, evaluation and, the recommendation of all kinds of information are increasingly concerned. According to the user behaviour information of a famous online bookstore, analysis of the factors affecting user ratings to establish user on the books of the scoring system model, and then the user recommended books. The original data is filtered first. The label, social friends, books browsing amount of three groups of data were analysed by bivariate correlation analysis respectively, so that we can get the number of users on the books, scores and label users' good friends, the history of the book number of pageviews a positive correlation. As to the second question, this paper established the AHP model and BP neural network model to predict the score. So we can obtain more accurate results by comparing the two kinds of model.
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