Using Statistics to Create the Perfect March Madness Bracket

Sarah Downs
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引用次数: 1

Abstract

Author(s): Downs, Sarah | Abstract: The goal of this project is to analyze data from NCAA Division One Men's basketball teams during the regular season to predict how they will perform during the National Championships, colloquially known as March Madness. I use a data set that ranks teams according to their Pomeroy College Basketball Ratings[1]. These ratings give in depth basketball statistics for each year from 2002 until present and use several different measures to help quantify how good or bad a team is. My analysis will take three parts: single linear analysis, multiple linear analysis, and polynomial regression. I start by attempting to do a single linear analysis on the data from the year 2016, first using Adjusted Offensive Efficiency as the predictor and then using Adjusted Defensive Efficiency as the predictor. Next, I attempt a multiple linear analysis and find that by using both the Adjusted Offensive Efficiency and Adjusted Defensive Efficiency, the predictions greatly improve, but still are not perfect. Finally, I attempt polynomial regression using Adjusted Offensive Efficiency as the predictor. After running each of these methods, I found that none of these can predict the perfect bracket, however the multiple linear regression is able to perform surprisingly well, making the correct final ranking predictions approximately 62.33% of the time.[1] https://kenpom.com/
用统计数据创造完美的疯狂三月
摘要:本项目的目的是分析NCAA一级男子篮球球队在常规赛中的数据,以预测他们在全国锦标赛(俗称“疯狂三月”)中的表现。我使用的数据集是根据Pomeroy大学篮球评分对球队进行排名[1]。这些评级提供了从2002年到现在每年的深度篮球统计数据,并使用几种不同的指标来帮助量化一支球队的好坏。我的分析将分为三个部分:单线性分析,多线性分析和多项式回归。我首先尝试对2016年的数据做一个单一的线性分析,首先使用调整后的进攻效率作为预测指标,然后使用调整后的防守效率作为预测指标。接下来,我尝试进行多元线性分析,发现同时使用调整后的进攻效率和调整后的防守效率,预测结果有很大的提高,但仍然不完美。最后,我尝试多项式回归使用调整进攻效率作为预测因子。在运行了这些方法之后,我发现这些方法都不能预测完美的括号,但是多元线性回归能够表现得非常好,在大约62.33%的时间内做出正确的最终排名预测。[1] https://kenpom.com/
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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