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Design and Implementation of Ticket Price Forecasting System

机译:门票价格预测系统的设计与实现

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摘要

With the advent of the aviation travel industry, a large number of data mining technologies have been developed to increase profits for airlines in the past two decades. The implementation of the digital optimization strategy leads to price discrimination, for example, similar seats on the same flight are purchased at different prices, depending on the time of purchase, the supplier, and so on. Price fluctuations make the prediction of ticket prices have application value. In this paper, a combination of ARMA algorithm and random forest algorithm is proposed to predict the price of air ticket. The experimental results show that the model is more reliable by comparing the forecasting results with the actual results of each price model. The model is helpful for passengers to buy tickets and to save money. Based on the proposed model, using Python language and SQL Server database, we design and implement the ticket price forecasting system.
机译:随着航空旅游业的出现,已经开发出大量的数据挖掘技术来增加过去二十年的航空公司的利润。例如,数字优化策略的实施导致价格歧视,例如,同一航班上的类似座位以不同的价格购买,具体取决于购买时间,供应商等。价格波动使得票价预测具有申请价值。本文提出了ARMA算法和随机林算法的组合来预测机票价格。实验结果表明,该模型通过将预测结果与每个价格模型的实际结果进行比较,更可靠。该模型有助于乘客购买门票并省钱。基于所提出的模型,使用Python语言和SQL Server数据库,我们设计和实施票价预测系统。

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