2020
DOI: 10.4236/iim.2020.123006
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Design and Implementation of Book Recommendation Management System Based on Improved Apriori Algorithm

Abstract: The traditional Apriori applied in books management system causes slow system operation due to frequent scanning of database and excessive quantity of candidate item-sets, so an information recommendation book management system based on improved Apriori data mining algorithm is designed, in which the C/S (client/server) architecture and B/S (browser/server) architecture are integrated, so as to open the book information to library staff and borrowers. The related information data of the borrowers and books can… Show more

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Cited by 21 publications
(12 citation statements)
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References 16 publications
(11 reference statements)
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“…Chen et al compared the performance of data mining technology using fuzzy inference system and traditional methods in short-term load forecasting; the analysis shows that the data mining technology using the fuzzy inference system can better conform to the actual situation of power production in the prediction [7]. Zhou applied data mining technology to predict the electricity price successfully [8]. Sornalakshmi et al established a multi-Bayesian-support vector machine, combined classifier and a decision tree classifier, and compared the classification accuracy and classification speed, in order to achieve a certain degree of auxiliary decision-making for smart substations [9].…”
Section: Literature Reviewmentioning
confidence: 99%
“…Chen et al compared the performance of data mining technology using fuzzy inference system and traditional methods in short-term load forecasting; the analysis shows that the data mining technology using the fuzzy inference system can better conform to the actual situation of power production in the prediction [7]. Zhou applied data mining technology to predict the electricity price successfully [8]. Sornalakshmi et al established a multi-Bayesian-support vector machine, combined classifier and a decision tree classifier, and compared the classification accuracy and classification speed, in order to achieve a certain degree of auxiliary decision-making for smart substations [9].…”
Section: Literature Reviewmentioning
confidence: 99%
“…Its production has its application background. As the world moves towards an information society, human beings ability to collect, organize, and produce information using information technology has also greatly improved, resulting in the creation of tens of thousands of various types of databases [2]. Data mining research does not only come from the accumulation of mountains.…”
Section: Introductionmentioning
confidence: 99%
“…When 2 p  , the model is a fourth-order PDE denoising model. When 1 2 p   is the model is an interpolation of the second-order and fourth-order partial differential denoising models [3]. The author believes that 1 2 p   is a suitable audio smooth interval.…”
Section: Fractional Differential Equation Denoising Modelmentioning
confidence: 99%