A Genetic Algorithm for Optimizing Fantasy Football Trades with Playoff Biasing
Evan Parshall, Junaid Ali, Michael Zimmerman

TL;DR
This paper presents a genetic algorithm that optimizes fantasy football trades with a focus on playoff success, balancing fairness and strategic gain, and demonstrates its effectiveness on real league data.
Contribution
It introduces a novel genetic algorithm framework for automated trade generation in fantasy football, incorporating playoff biasing and real-time data integration.
Findings
Generated trades increased projected points by nearly 3 points per week for both teams.
The algorithm effectively balances fairness and strategic playoff bias.
Open-source implementation facilitates practical use and further research.
Abstract
Fantasy football leagues involve strategic player trades to optimize team performance. However, identifying optimal trades is complex due to varying player projections, positional needs, and league-specific scoring. Existing approaches focus on team selection or lineup optimization, but automated trade generation remains underexplored. In this paper, an algorithm that generates optimal trades, biasing toward improved playoff performance while maintaining apparent fairness for negotiation is explored. We introduce a genetic algorithm for fantasy football trade optimization, building on existing frameworks for team selection and lineup generation. The algorithm initializes with single-player trades, evolves through custom mutations (add/remove players, combine trades, exchange players, add from other trades, and spawn new trades), and uses team-specific elitism to preserve diversity. The…
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Taxonomy
TopicsSports Analytics and Performance · Doping in Sports · Artificial Intelligence in Games
