Even skilled fantasy football managers can be disappointed by their mid-season rosters as some players inevitably fall short of draft day expectations. Team managers can quickly discover that their team has a low score ceiling even if they start their best active players. A novel and diverse combinatorial optimization system proposes high volume and unique player trades between complementary teams to balance trade fairness. Several algorithms create the valuation of each fantasy football player with an ensemble of computing models: Quantum Support Vector Classifier with Permutation Importance (QSVC-PI), Quantum Support Vector Classifier with Accumulated Local Effects (QSVC-ALE), Variational Quantum Circuit with Permutation Importance (VQC-PI), Hybrid Quantum Neural Network with Permutation Importance (HQNN-PI), eXtreme Gradient Boosting Classifier (XGB), and Subject Matter Expert (SME) rules. The valuation of each player is personalized based on league rules, roster, and selections. The cost of trading away a player is related to a team's roster, such as the depth at a position, slot count, and position importance. Teams are paired together for trading based on a cosine dissimilarity score so that teams can offset their strengths and weaknesses. A knapsack 0-1 algorithm computes outgoing players for each team. Postprocessors apply analytics and deep learning models to measure 6 different objective measures about each trade. Over the 2020 and 2021 National Football League (NFL) seasons, a group of 24 experts from IBM and ESPN evaluated trade quality through 10 Football Error Analysis Tool (FEAT) sessions. Our system started with 76.9% of high-quality trades and was deployed for the 2021 season with 97.3% of high-quality trades. To increase trade quantity, our quantum, classical, and rules-based computing have 100% trade uniqueness. We use Qiskit's quantum simulators throughout our work.
翻译:即使是有技能的幻想足球管理者也可能因为中季球员名册而感到失望,因为一些球员不可避免地不能达到日期待值。团队管理者可以很快发现,他们的球队的得分上限很低,即使他们开始成为最佳的积极球员。一个新颖和多样化的组合优化系统提出在互补球队之间进行数量和独特的玩家交易,以平衡贸易公平性。几个算法创建了每个有一系列计算模型的幻想足球运动员的估值:量子支持矢量分级,具有调值(QSVC-PI)、量子支持矢分级,具有累积的地方效应(QSVC-ALE)、变调调调调调调调调调调调调调音(VQC-PI)、调和调和调和调和调和调和调和调的球员。每个球员的评分值都是基于联盟规则、名册评比值(我们货币交易和调价价比值),每个赛员的得成本比价比值都比高。