基于Airbnb开放数据集的租金价格和房型预测的Logistic回归

Ziyue Huang
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引用次数: 1

摘要

基于Aribnb开放数据集,本文使用Logistic回归(一种机器学习方法)来分析位置和社区等属性如何影响租金价格;并且,根据与房产关联的给定属性,预测租金价格和房间类型。这项工作对有寻找合适房产需求的旅行者是有益的;对于构建推荐系统,帮助旅行者找到自己想要的最佳房产,也具有一定的指导意义。在构建Logistic回归模型的常规方法为二元分类的基础上,本文采用softmax函数实现多重分类,即房间类型预测。通过价格预测并没有达到理想的结果,而房型预测却达到了80%左右的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Logistic Regression in Rental Price and Room Type Prediction Based on Airbnb Open Dataset
Based on Aribnb open dataset, this paper is using Logistic Regression—a machine learning method, to analyse how attributes like location and neighbourhood influence the rental price; and, based on the given attributes associate with the estate, predict both rental price and room type. This work is beneficial to the travelers who have the demand in finding an appropriate estate; it can be also instructive in building the recommendation system which can help travelers to find the best estate they want. Apart from the ordinary method in constructing Logistic Regression model which is binary classification, this paper is using softmax function to implement multi-classification which is room type prediction in this work. Through price prediction did not reach the desirable outcome, the room type prediction, however, reached the accuracy about 80%.
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