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Peter I. Cowling

Researcher at University of York

Publications -  141
Citations -  8122

Peter I. Cowling is an academic researcher from University of York. The author has contributed to research in topics: Heuristics & Monte Carlo tree search. The author has an hindex of 37, co-authored 141 publications receiving 7094 citations. Previous affiliations of Peter I. Cowling include Information Technology University & University of Nottingham.

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A Survey of Monte Carlo Tree Search Methods

TL;DR: A survey of the literature to date of Monte Carlo tree search, intended to provide a snapshot of the state of the art after the first five years of MCTS research, outlines the core algorithm's derivation, impart some structure on the many variations and enhancements that have been proposed, and summarizes the results from the key game and nongame domains.
Journal Article

A hyperheuristic approach to scheduling a sales summit

TL;DR: The behaviour of several different hyperheuristic approaches for a real-world personnel scheduling problem is analysed and the effectiveness of this approach is shown and wider applicability of hyper heuristic approaches to other problems of scheduling and combinatorial optimisation is suggested.
Journal ArticleDOI

A Memetic Approach to the Nurse Rostering Problem

TL;DR: A range of new memetic approaches for the rostering problem are introduced, which use a steepest descent improvement heuristic within a genetic algorithm framework and a hybrid which is greater than the sum of its component algorithms is presented.
Proceedings ArticleDOI

MMAC: a new multi-class, multi-label associative classification approach

TL;DR: Results for 28 different datasets show that the MMAC approach is an accurate and effective classification technique, highly competitive and scalable in comparison with other classification approaches.

Production, Manufacturing and Logistics Using real time information for effective dynamic scheduling

TL;DR: A general framework for using real time information to improve scheduling decisions is developed, which allows us to trade off the quality of the revised schedule against the production disturbance which results from changing the planned schedule.