基于多项式回归模型的Python使用率预测分析与研究

Yang Gong, P. Zhang
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引用次数: 2

摘要

现在,越来越多的人会选择Python来帮助他们完成一些事情,以便更好地预测Python的使用比例。本文提出了一个多项式回归分析模型。首先,从官网抓取python语言的历史使用数据;然后进行清理分析,利用散点图将标签与特征之间的关系可视化;然后利用训练集数据训练多项式回归模型;最后,通过测试集检验模型的泛化能力。经过多次实验可以知道,当最高次数为9次时,整个训练集得分为0.912862,测试集得分为0.886600,达到了较好的拟合效果,具有一定的实用价值,可以推广使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predictive Analysis and Research Of Python Usage Rate Based on Polynomial Regression Model
Nowadays, more and more people will choose Python to help them accomplish some things, in order to better predict the proportion of Python usage. This paper proposes a polynomial regression analysis model. First, crawl the historical usage data of the python language from the official website; then clean the analysis, use a scatter plot to visualize the relationship between tags and features; then use the training set data to train the polynomial regression Model; Finally, the generalization ability of the model is tested through the test set. After many experiments, it can be known that when the highest number is 9 times, the entire training set score is 0.912862, and the test set score is 0.886600, which achieves a better fitting effect and has a certain practical value, which can be used for popularization.
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