IRLGAPDec 20, 2021

FIFA ranking: Evaluation and path forward

arXiv:2201.00691v115 citations
Originality Synthesis-oriented
AI Analysis

This work addresses the accuracy of FIFA rankings for football associations and fans, offering incremental improvements to an existing system.

The authors analyzed FIFA's ranking algorithm, showing that the 'importance' parameter reduces predictive capability and proposing improvements like home-field advantage and draw modeling, which notably enhance prediction accuracy.

In this work we study the ranking algorithm used by Fédération Internationale de Football Association (FIFA); we analyze the parameters it currently uses, show the formal probabilistic model from which it can be derived, and optimize the latter. In particular, analyzing the games since the introduction of the algorithm in 2018, we conclude that the game's "importance" (as defined by FIFA) used in the algorithm is counterproductive from the point of view of the predictive capability of the algorithm. We also postulate the algorithm to be rooted in the formal modelling principle, where the Davidson model proposed in 1970 seems to be an excellent candidate, preserving the form of the algorithm currently used. The results indicate that the predictive capability of the algorithm is notably improved by using the home-field advantage and the explicit model for the draws in the game. Moderate, but notable improvement may be attained by introducing the weighting of the results with the goal differential, which although not rooted in a formal modelling principle, is compatible with the current algorithm and can be tuned to the characteristics of the football competition.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes