Opponent Modelling by Expectation-Maximisation and Sequence Prediction in Simplified Poker
                        
                        
                            - Submitting institution
 
                            - 
                                The University of Manchester
                                
 
                            
 
                            - Unit of assessment
 
                            - 11 - Computer Science and Informatics
 
                            - Output identifier
 
                            - 40102832
 
                            - Type
 
                            - D - Journal article
 
                                - DOI
 
                                - 
                                        10.1109/TCIAIG.2015.2491611
                                
 
                                - Title of journal
 
                                - IEEE Transactions on Computational Intelligence and AI in Games
 
                                - Article number
 
                                - -
 
                                - First page
 
                                - 11
 
                                - Volume
 
                                - 9
 
                                - Issue
 
                                - 1
 
                                - ISSN
 
                                - 1943-0698
 
                                - Open access status
 
                                - Out of scope for open access requirements
 
                            - Month of publication
 
                            - October
 
                            - Year of publication
 
                            - 2015
 
                            - URL
 
                            - 
-                            
 
                            - Supplementary information
 
                            - 
-                            
 
                            - Request cross-referral to
 
                            - -
 
                            - Output has been delayed by COVID-19
 
                            - No
 
                            - COVID-19 affected output statement
 
                            - -
 
                            - Forensic science
 
                            - No
 
                            - Criminology
 
                            - No
 
                            - Interdisciplinary
 
                            - No
 
                            - Number of additional authors
 
                            - 
                                1
                            
 
                            - Research group(s)
 
                            - 
                                        
A - Computer Science
                             
                                - Citation count
 
                                - 1
 
                            - Proposed double-weighted
 
                            - No
 
                            - Reserve for an output with double weighting
 
                            - No
 
                            - Additional information
 
                            - This paper contributes to this space by combining the state-of-the-art method for learning in hidden information games, with a long-established machine learning with hidden information to infer the hidden information possessed by opponents.
 
                            - Author contribution statement
 
                            - -
 
                            - Non-English
 
                            - No
 
                            - English abstract
 
                            - -