Improving the Aggregation and Evaluation of NBA Mock Drafts

Jared D. Fisher, Colin Montague
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Abstract

Many enthusiasts and experts publish forecasts of the order players are drafted into professional sports leagues, known as mock drafts. Using a novel dataset of mock drafts for the National Basketball Association (NBA), we analyze authors' mock draft accuracy over time and ask how we can reasonably use information from multiple authors. To measure how accurate mock drafts are, we assume that both mock drafts and the actual draft are ranked lists, and we propose that rank-biased distance (RBD) of Webber et al. (2010) is the appropriate error metric for mock draft accuracy. This is because RBD allows mock drafts to have a different length than the actual draft, accounts for players not appearing in both lists, and weights errors early in the draft more than errors later on. We validate that mock drafts, as expected, improve in accuracy over the course of a season, and that accuracy of the mock drafts produced right before their drafts is fairly stable across seasons. To be able to combine information from multiple mock drafts into a single consensus mock draft, we also propose a ranked-list combination method based on the ideas of ranked-choice voting. We show that our method provides improved forecasts over the standard Borda count combination method used for most similar analyses in sports, and that either combination method provides a more accurate forecast over time than any single author.
改进NBA模拟选秀的汇总和评估
许多狂热者和专家发布了球员进入职业体育联盟的顺序预测,即所谓的模拟选秀。使用NBA模拟选秀的新数据集,我们分析了作者随时间的模拟选秀准确性,并询问我们如何合理地使用来自多个作者的信息。为了衡量模拟草案的准确性,我们假设模拟草案和实际草案都是排名列表,并且我们提出Webber等人(2010)的排名偏差距离(RBD)是模拟草案准确性的适当误差度量。这是因为RBD允许模拟选秀与实际选秀有不同的长度,考虑到没有出现在两个名单中的球员,并且在选秀早期的错误比后来的错误更重要。我们验证了模拟选秀,正如预期的那样,在一个赛季的过程中改善了不准确性,并且在选秀之前产生的模拟选秀的准确性在各个赛季都相当稳定。为了能够将来自多个模拟草案的信息组合成单个共识模拟草案,我们还提出了基于排序选择投票思想的排序列表组合方法。我们表明,我们的方法提供了比用于大多数类似分析的标准博尔达计数组合方法更好的预测,并且任何组合方法都比任何单一作者提供更准确的预测。
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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