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A user behavior-based ticket sales prediction using data mining tools: An empirical study in an OTA company

机译:使用数据挖掘工具的基于用户行为的门票销售预测:OTA公司中的一项经验研究

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Traditional OTA (Online Travel Agent) is challenged by the Internet and mobile business with the evolution of information. The precise forecasting of ticket sales in OTA companies is beneficial to budget control and service quality. The paper develops an integrated forecasting model by combining the internal factors immediately influencing the ticket sales and the external factors reflecting the ticket sales market. The internal factors are selected such as the number of calling in certain duration, while the external factors include the attention of relevant search engine query data. After several key features are extracted using feature selection model, the machine learning algorithms can get the more accurate prediction, in contract to the basic experiments to explore the inherent rule of the sales data itself. Our proposed user behavior-based prediction model provides a feasible and efficiency tool for ticket sales prediction.
机译:随着信息的发展,传统的OTA(在线旅行社)面临着互联网和移动业务的挑战。对OTA公司中的门票销售进行准确的预测,有利于预算控制和服务质量。通过结合立即影响门票销售的内部因素和反映门票销售市场的外部因素,建立了一个综合的预测模型。选择内部因素,例如一定持续时间内的呼叫次数,而外部因素包括对相关搜索引擎查询数据的关注。在使用特征选择模型提取了几个关键特征之后,机器学习算法可以与基础实验相结合来获得更准确的预测,从而探索销售数据本身的内在规律。我们提出的基于用户行为的预测模型为门票销售预测提供了一种可行且高效的工具。

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