Probabilistic modeling in sports, finance and weather
Abstract
In this thesis, we build mathematical and statistical models for a wide variety of real world applications. The mathematical models include applications in team sport tactics and optimal portfolio selection, while the statistical modeling concerns weather and specifically precipitation.
For the sport application, we define an underlying value function for evaluating team sport situations in a game theoretic set-up. A consequence of the adopted setting is that the concept of game intelligence is concretized and we are able to give optimal strategies in various decision situations. Finally, we analyze specific examples within ice hockey and team handball and show that these optimal strategies are not always applied in practice, indicating sub-optimal player behaviour even by professionals.
Regarding the application for finance, we analyze optimal portfolio selection when performance is measured in excess of an externally given benchmark. This approach to measure performance dominates in the financial industry. We assume that the assets follow the Barndorff-Nielsen and Shephard model, and are able to give the optimal value function explicitly in Feynman-Kac form, as well as the optimal portfolio weights.
For the weather application, we analyze the pecipitation process over the spatial domain of Sweden. We model the precipitation process with the aim of creating a weather generator; a stochastic number generator of which synthesized data is similar to the observed process in a weakly sense. In Paper [C], the precipitation process is modeled as a point-wise product of a zero-one Markov process, indicating occurrence or the lack of rainfall, and a transformed Gaussian process, giving the intensities. In Paper [D], the process is modeled as a transformed censored latent Gaussian field. Both models accurately capture significant properties of the modeled quantity. In addition, the second model also possesses the substantial feature of accurately replicating the spatial dependence structure.
Parts of work
Lennartsson, J., Lidström, N., and Lindberg, C., Game intelligence in team sports (2014). (Submitted). Lennartsson, J. and Lindberg, C., Merton's problem for an investor with a benchmark in a Barndorff-Nielsen and Shephard market (2014). (Submitted). C Lennartsson, J., Baxevani, A. and Chen, D., Modelling precipitation in Sweden using multiple step Markov chains and a composite model, Journal of
Hydrology (2008), Volume 363, Issue 1-4, Pages 42-59. ::doi::10.1016/j.jhydrol.2008.10.003 D Baxevani, A. and Lennartsson, J., A Spatio-temporal precipitation generator
based on a censored latent Gaussian field (2014)
(Work in progress).
Degree
Doctor of Philosophy
University
Göteborgs universitet. Naturvetenskapliga fakulteten
Institution
Department of Mathematical Sciences ; Institutionen för matematiska vetenskaper
Disputation
fredagen den 31 oktober 2014, kl1315, sal Pascal, institutionen för matematiska vetenskaper, chalmers tvärgata 3
Date of defence
2014-10-31
jan.lennartsson@gmail.com
Date
2014-10-02Author
Lennartsson, Jan
Keywords
Mathematical modelling
Game theory
Team sport tactics
Modern portfolio theory
Gaussian fields
Publication type
Doctoral thesis
ISBN
987-91-628-9179-4
987-91-628-9176-3
Language
eng