低估球员报价预测的智能决策支持系统

Manaswita Datta, Bhawana Rudra
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引用次数: 1

摘要

挑选足球队队员的过程将决定一支球队的表现。一个有效的团队是由一群成功的天才球员组成的。一般来说,足球队球员的选择是由俱乐部根据最佳可用信息做出的决定。俱乐部经理和球探前往不同的国家观看比赛,并聘请最优秀的人才,以帮助他们的俱乐部表现得更好。但对于低级别联赛来说,由于预算严格,很难聘请到同样的人才。在这里,我们设计了一个方法,这样我们就可以利用被低估的球员得到俱乐部的选择。显然,这样做的好处是双重的。首先,较小的俱乐部可以以负担得起的成本获得更好的球员。其次,大俱乐部可以以较低的价格获得同样表现的球员,这有助于他们削减成本。我们使用新颖性检测方法从我们的数据中找出被低估的球员,并通过使用五个机器学习模型来研究我们的方法。对于性能评估,使用的五种机器学习模型是支持向量机,随机森林,决策树,线性回归和XGBoost。XGboost在10倍交叉验证和外部测试中表现最好,RMSE分别为0.0122和0.0107。
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An Intelligent Decision Support System for Bid Prediction of Undervalued Football Players
The process of selecting football team players will determines a team's performance. An effective team is made up of a successful group of individual talented players. In general, a football team player selection is a decision made by the club based on the best available information. Club managers and scouts travel to different countries to watch matches and hire the best talent that can help their club to perform better. But for the lower leagues, it becomes difficult to hire the same talents because of strict budget. Here we devise a method so that we can leverage the undervalued players to get selected by the clubs. Clearly the benefit will be in two fold. First, the smaller clubs can get better players at an affordable cost. Second, the bigger clubs can get same performance players at a lower price helping them in cost cutting. We employ novelty detection methods to find out the undervalued players from our data and investigate our method by using five machine learning models. For performance evaluation, the five machine learning models used are support vector machine, Random Forest, Decision Tree, Linear Regression and XGBoost. Here XGboost performed best both for 10 fold cross-validation and external testing with a RMSE of 0.0122 and 0.0107 respectively.
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