Predicting Retention in Sandbox Games with Tensor Factorization-based Representation Learning

Rafet Sifa, Sridev Srikanth, Anders Drachen, Cesar Ojeda, Christian Bauckhage

Research output: Contribution to book/anthology/report/conference proceedingArticle in proceedingResearchpeer-review

28 Citations (Scopus)

Abstract

Major commercial (AAA) games increasingly transit to a semi-persistent or persistent format in order to extend the value of the game to the player, and to add new sources of revenue beyond basic retail sales. Given this shift in the design of AAA titles, game analytics needs to address new types of problems, notably the problem of forecasting future player behavior. This is because player retention is a key factor in driving revenue in semi-persistent titles, for example via downloadable content. This paper introduces a model for predicting retention of players in AAA games and provides a tensor-based spatio-temporal model for analyzing player trajectories in 3D games. We show how knowledge as to trajectories can help with predicting player retention. Furthermore, we describe two new algorithms for three way DEDICOM including a fast gradient method and a seminonnegative constrained method. These approaches are validated against a detailed behavioral data set from the AAA open-world game Just Cause 2.

Original languageEnglish
Title of host publication2016 IEEE Conference on Computational Intelligence and Games, CIG 2016
PublisherIEEE
Publication date21 Feb 2017
Article number7860405
ISBN (Electronic)9781509018833
DOIs
Publication statusPublished - 21 Feb 2017
Event2016 IEEE Conference on Computational Intelligence and Games, CIG 2016 - Santorini, Greece
Duration: 20 Sept 201623 Sept 2016

Conference

Conference2016 IEEE Conference on Computational Intelligence and Games, CIG 2016
Country/TerritoryGreece
CitySantorini
Period20/09/201623/09/2016

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