PREDIKSI PENETAPAN TARIF PENERBANGAN MENGGUNAKAN AUTO-ML DENGAN ALGORITMA RANDOM FOREST

Yakub Anuyuta Zebua, Daniel Ryan Hamonangan Sitompul, Stiven Hamonangan Sinurat, A. Situmorang, Ruben Ruben, Dennis Jusuf Ziegel, Evta Indra
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引用次数: 2

Abstract

With so many airlines competing with each other, airlines are competing to become the consumer/market's main choice, but to achieve this, there is no airline strategy that can predict the price of airline tickets according to market needs. To meet the needs of airlines, we need a way to determine the price of airline tickets according to market needs with the help of the influence of technology and information. This research method was carried out using Google Collaboratory as a media to create a data model automated machine learning (AutoML) with the Random Forest, Logistic Regression and Gradient Boosting Regressor algorithms. In this study, the model that produced the highest R2 value and the lowest RMSE was a random forest with an R2 value of 83.91% and an RMSE of $175.9. However, from the three models, Random Forest got a change in accuracy of 1.96% to 85.87. To assist in predicting the determination of flight fares, airline companies can more easily and be alert to determine flight fares that are in accordance with the market. Therefore, Random Forest can be declared better than Logistic Regression and Gradient Boosting models. The Random Forest model that has been created can be used to predict in real-time using Machine Learning.
采用随机森林算法的自动监测系统预测航班票价
如此多的航空公司相互竞争,航空公司竞相成为消费者/市场的主要选择,但要做到这一点,没有航空公司的策略可以根据市场需求预测机票的价格。为了满足航空公司的需求,我们需要一种借助技术和信息的影响,根据市场需求来确定机票价格的方法。本研究方法以Google协作实验室为媒介,利用随机森林、逻辑回归和梯度增强回归算法创建数据模型自动机器学习(AutoML)。在本研究中,产生最高R2值和最低RMSE的模型是随机森林,R2值为83.91%,RMSE为175.9美元。然而,从三个模型中,Random Forest的准确率从1.96%变化到85.87。为了协助预测机票价格的确定,航空公司可以更容易和警觉地确定符合市场的机票价格。因此,可以宣布随机森林比逻辑回归和梯度增强模型更好。已经创建的随机森林模型可以使用机器学习进行实时预测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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