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Dimitris Karlis

Researcher at Athens University of Economics and Business

Publications -  137
Citations -  5306

Dimitris Karlis is an academic researcher from Athens University of Economics and Business. The author has contributed to research in topics: Poisson distribution & Count data. The author has an hindex of 36, co-authored 127 publications receiving 4583 citations. Previous affiliations of Dimitris Karlis include Athens State University & University of Hasselt.

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Analysis of sports data by using bivariate Poisson models

TL;DR: In this paper, a bivariate Poisson model and its extensions are proposed to model the number of goals of two competing teams in a football game, which is a plausible assumption in sports with two opposing teams competing against each other.
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Mixed Poisson Distributions

TL;DR: A review of the existing literature on Poisson mixtures by bringing together a great number of properties, while, at the same time, providing tangential information on general mixtures is made in this paper.
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Choosing initial values for the EM algorithm for finite mixtures

TL;DR: Several methods for choosing initial values for the EM algorithm in the case of finite mixtures are compared as well as to propose some new methods based on modifications of existing ones.
Journal ArticleDOI

Mixed Poisson Distributions

TL;DR: A review of the existing literature on Poisson mixtures by bringing together a great number of properties, while, at the same time, providing tangential information on general mixtures is provided in this article.
Journal ArticleDOI

Studying the effect of weather conditions on daily crash counts using a discrete time-series model

TL;DR: An integer autoregressive model is introduced for modelling count data with time interdependencies and the results show that several assumptions related to the effect of weather conditions on crash counts are found to be significant in the data and that if serial temporal correlation is not accounted for in the model, this may produce biased results.