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Commodity Price Evaluation Based on Improved Data Mining Methods

机译:基于改进数据挖掘方法的商品价格评估

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Commodity price forecasting has become a key research point for market economy because it is very important for the development of industry, agriculture and finance. Commodity prices are affected by more and more market factors, resulting in unstable rules of change, which places high requirements on the prediction model. This paper uses the process of web data mining to establish a KNN model for website product information, and improves the distance and parameter impact on the original KNN algorithm to make it better fit the data set in this article, the accurate rate increased by 1.87%. KNN and improved KNN algorithm appropriately classify the price of website products to determine the current price and the current price of website products on the market. On the basis of improved KNN algorithm classification, the predicted price of the commodity is obtained by using decision tree regression, which is better than that obtained by direct decision tree regression. The performance of the proposed model is verified by testing the second-hand notebook data information crawled on the JD platform.
机译:商品价格预测已成为市场经济的关键研究点,因为它对行业,农业和金融的发展非常重要。商品价格受越来越多的市场因素的影响,导致不稳定的变化规则,这对预测模型的要求很高。本文采用Web数据挖掘的过程为网站产品信息建立了KNN模型,并提高了对原始KNN算法的距离和参数影响,使其更好地拟合本文中的数据集,准确的速率增加了1.87% 。 KNN和改进的KNN算法适当地分类了网站产品的价格,以确定当前的价格和当前网站产品价格在市场上。在改进的KNN算法分类的基础上,通过使用决策树回归来获得商品的预测价格,这比通过直接决策树回归获得的更好。通过测试在JD平台上爬行的二手笔记本数据信息来验证所提出的模型的性能。

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