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A hybrid system by evolving case-based reasoning with genetic algorithm in wholesaler's returning book forecasting

机译:案例推理与遗传算法相结合的批发商退货预测混合系统

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摘要

A hybrid system by evolving a Case-Based Reasoning (CBR) system with a Genetic Algorithm (GA) is developed for wholesaler's returning book forecasting. For a new book, key factors, such as the grade of the author, the grade of publisher, hot or slow season of publication date, sale volumes for the first 3 months and the returning rate, have been identified and applied as the key features to calculate the similarity coefficient of a new release book and to retrieve similar book from the reference cases to justify if the new book is a slow-selling or selling book. The case base of this research is acquired from a book wholesaler in Taiwan, and it is applied by the hybrid system to forecast returning books. The results of the prediction of the hybrid system were compared with the results of a back propagation neural network (BPNN), a conventional CBR, and a multiple-regression analysis method. The experimental results show that the GA/CBR is more accurate and efficient when being applied to the forecast of the returning books than other methods.
机译:通过发展基于案例的推理(CBR)系统和遗传算法(GA)的混合系统,用于批发商的退货预测。对于一本新书,关键因素,例如作者的等级,出版者的等级,出版日期的炎热或淡淡的季节,前三个月的销量和返还率,已被确定并应用为关键特征。计算新发行书籍的相似系数,并从参考案例中检索相似书籍以证明新书籍是畅销书还是畅销书。该研究的案例基础是从台湾的图书批发商那里获得的,并通过混合系统应用于预测返还的图书。将混合系统的预测结果与反向传播神经网络(BPNN),常规CBR和多元回归分析方法的结果进行了比较。实验结果表明,与其他方法相比,GA / CBR应用于归还书的预测更为准确,高效。

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