利用机器学习技术预测机票价格

K. Tziridis, T. Kalampokas, G. Papakostas, K. Diamantaras
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引用次数: 42

摘要

本文主要研究机票价格预测问题。为此,假设这些特征会影响机票的价格,就确定了一组典型航班的特征。这些特征被应用到8个最先进的机器学习(ML)模型中,用于预测机票价格,并对模型的性能进行比较。在研究各个模型的预测精度的同时,本文还研究了预测精度与用于表示机票的特征集的依赖关系。对于实验,构建了一个由爱琴海航空公司1814个特定国际目的地(从塞萨洛尼基到斯图加特)的数据航班组成的新数据集,并用于训练每个ML模型。衍生的实验结果表明,对于特定类型的飞行特征,ML模型能够以近88%的准确率处理该回归问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Airfare prices prediction using machine learning techniques
This paper deals with the problem of airfare prices prediction. For this purpose a set of features characterizing a typical flight is decided, supposing that these features affect the price of an air ticket. The features are applied to eight state of the art machine learning (ML) models, used to predict the air tickets prices, and the performance of the models is compared to each other. Along with the prediction accuracy of each model, this paper studies the dependency of the accuracy on the feature set used to represent an airfare. For the experiments a novel dataset consisting of 1814 data flights of the Aegean Airlines for a specific international destination (from Thessaloniki to Stuttgart) is constructed and used to train each ML model. The derived experimental results reveal that the ML models are able to handle this regression problem with almost 88% accuracy, for a certain type of flight features.
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