An interactive dashboard for searching and comparing soccer performance
scores
- URL: http://arxiv.org/abs/2105.04293v1
- Date: Tue, 11 May 2021 13:39:02 GMT
- Title: An interactive dashboard for searching and comparing soccer performance
scores
- Authors: Paolo Cintia, Giovanni Mauro, Luca Pappalardo, Paolo Ferragina
- Abstract summary: dashboards available online provide no effective way to compare the evolution of the performance of players.
This paper describes the design of a web dashboard that interacts via APIs with a performance evaluation algorithm.
It provides tools that allow the user to search or compare players by age, role or trend of growth in their performance, find similar players based on their pitching behavior, change the algorithm's parameters to obtain customized performance scores.
- Score: 2.645763027296508
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The performance of soccer players is one of most discussed aspects by many
actors in the soccer industry: from supporters to journalists, from coaches to
talent scouts. Unfortunately, the dashboards available online provide no
effective way to compare the evolution of the performance of players or to find
players behaving similarly on the field. This paper describes the design of a
web dashboard that interacts via APIs with a performance evaluation algorithm
and provides graphical tools that allow the user to perform many tasks, such as
to search or compare players by age, role or trend of growth in their
performance, find similar players based on their pitching behavior, change the
algorithm's parameters to obtain customized performance scores. We also
describe an example of how a talent scout can interact with the dashboard to
find young, promising talents.
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