Player Ranking in Taekwondo: A Bayesian Elo Rating System

Author(s):  
T. S. N Peiris ◽  
R. M. Silva
2017 ◽  
Vol 11 (3) ◽  
pp. 800-809 ◽  
Author(s):  
Robert Lehmann ◽  
Klaus Wohlrabe

2014 ◽  
Vol 13 (6) ◽  
pp. 457-469 ◽  
Author(s):  
Lin Yang ◽  
Stanko Dimitrov ◽  
Benny Mantin

2018 ◽  
Vol 29 (3) ◽  
pp. 1095-1128 ◽  
Author(s):  
Bertram Düring ◽  
Marco Torregrossa ◽  
Marie-Therese Wolfram

Recommender system is one of indivisible parts in web business areas. Recommender system construes the system which underwrites things for the client who wish to purchase things .One of the real inconveniences that, figuratively speaking, stays in recommender system is the virus begin problem(inactive things) which can be seen as an obstruction that spurns the cool begin things from the present things. In this paper, we want to move beyond this farthest point for cold-begin clients/things by the help of existing things. It is developed by utilizing Elo Rating system. The Elo system is widely gotten in chess competitions; we propose a novel rating association technique to get settled with the profiles of cold-begin things. The purpose of assembly of our Strategy is to give a fine-grained View on the shrouded profiles of cold-begin clients/things by inspecting the separations between nippy begin things and existing Products. To uncover the limit of methodology, we instantiate our technique on two typical strategies in recommender systems, i.e., the structure factorization based, and neighborhood based pleasing sifting. Starter assessments on five genuine instructive documents embrace the amazing quality of our methodology over the present procedures in virus begin situation


2019 ◽  
Author(s):  
Shahin Tasharrofi ◽  
J.C. Barnes

Record numbers of inmates are being released to the community for supervision each year. This poses a challenge to the agencies and officers in charge of providing supervision—there are far more offenders in need of supervision than officers can reasonably attend to. This has forced agencies to be innovative in how they allocate their resources. Empirical evidence suggests resources should be allocated to high-risk offenders, but how can officers determine which offender is at a higher risk of misconduct at any given time? Traditionally, this has been achieved by relying on standardized risk assessment. But risk assessment has been criticized for making only marginally better-than-chance predictions of future misconduct. We offer a novel solution by integrating the Elo-rating system into the community supervision decision-making process. We show, by drawing on test data from the Pathways to Desistance Study, that combining the Elo-rating system with traditional risk assessment may lead to increases in predictive power. We then discuss how Elo-rating systems could be used by community supervision agencies to more effectively prioritize their caseloads.


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