Fall Out Boy 年代分类

Shifra Issacs, Joseph Yudelson, Endre Boros
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引用次数: 0

摘要

本文探讨了如何使用机器学习技术来区分同一摇滚乐队的两个不同音乐时代,其中包括逻辑回归技术。逻辑回归(LR)是一种广泛使用的统计建模方法,用于监督机器学习中的二元分类。它通常用于预测给定事件是否属于两个类别之一。这一过程有助于数据科学家了解哪些变量可以很好地预测类别成员。逻辑回归的应用包括金融业的贷款分类和医学领域的疾病易感性预测。在这个特定项目中,我们使用 Spotify 和 Genius 的数据构建了一个数据集,其中包括由乐队 Fall Out Boy 创作的歌曲和歌词。研究人员从零开始建立了一个逻辑回归模型,将这些歌曲和歌词归类为该乐队的两个时代之一:2009 年停业前和停业后。研究旨在确定计算机能否区分这两个时代。该模型还与其他二元分类算法进行了测试,包括随机森林和支持向量机。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Classification of Fall Out Boy Eras
This paper explored the use of machine learning techniques to differentiate between two different musical eras of the same rock band, including the technique of Logistic Regression. Logistic regression (LR) is a widely used statistical modeling method for binary classification in supervised machine learning. It is often used to predict whether a given event belongs to one of two categories. The process helps data scientists understand which variables are good predictors of class membership. Applications of logistic regression include loan classification in the financial industry and predicting susceptibility to disease in the medical field. In this particular project, a dataset was constructed using data from Spotify and Genius consisting of songs and lyrics written by the band Fall Out Boy. A logistic regression model was developed from scratch to classify the songs and lyrics into one of two eras of the band: before their 2009 hiatus and afterward. The study aimed to determine if a computer could differentiate between the two eras. The model was also tested against other binary classification algorithms, including Random Forest and Support Vector Machines.
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