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Analyzing Grammy, Emmy, and Academy Awards Data Using Regression and Maximum Information Coefficient

机译:使用回归和最大信息系数分析格莱美奖,艾美奖和奥斯卡奖数据

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摘要

Prediction of winners has always been fascinating to many people, whether it be for sports, lottery, presidential election, or performing arts awards. The basic approach for prediction is to build a model from the observed data with known outcome labels, and use the model to determine the outcomes of the new observations. It is a typical classification problem in data analysis. An important aspect in the model building process is to select attributes (independent variables) of the data that have the most discriminating power for classification. In this paper, we present our study using multiple logistic regression and multiple linear regression modeling along with Maximal Information-based Nonparametric Exploration (MINE) statistics to analyze three of the most well-regarded awards in the entertainment industry - the Oscars, Emmys, and Grammys that are high-profile awards given annually to top artists in the areas of film, television, and music.
机译:无论是体育比赛,彩票,总统大选还是表演艺术奖,获奖者的预测一直吸引着许多人。预测的基本方法是从带有已知结果标签的观测数据中构建模型,并使用该模型确定新观测结果。它是数据分析中的典型分类问题。模型构建过程中的一个重要方面是选择具有最大区分能力的数据属性(独立变量)。在本文中,我们使用多元逻辑回归和多元线性回归模型以及基于最大信息的非参数勘探(MINE)统计数据来介绍我们的研究,以分析娱乐业中最受推崇的三个奖项-奥斯卡奖,艾美奖和格莱美奖是每年在电影,电视和音乐领域的顶尖艺术家的奖项。

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