CognitionNet: A Collaborative Neural Network for Play Style Discovery in Online Skill Gaming Platform

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Abstract

Games are one of the safest source of realizing self-esteem and relaxation at the same time. An online gaming platform typically has massive data coming in, e.g., in-game actions, player moves, clickstreams, transactions etc. It is rather interesting, as something as simple as data on gaming moves can help create a psychological imprint of the user at that moment, based on her impulsive reactions and response to a situation in the game. Mining this knowledge can: (a) immediately help better explain observed and predicted player behavior; and (b) consequently propel deeper understanding towards players' experience, growth and protection. To this effect, we focus on discovery of the "game behaviours"as micro-patterns formed by continuous sequence of games and the persistent "play styles"of the players' as a sequence of such sequences on an online skill gaming platform for Rummy. The complex sequences of intricate sequences is analysed through a novel collaborative two stage deep neural network, CognitionNet. The first stage focuses on mining game behaviours as cluster representations in a latent space while the second aggregates over these micro patterns (e.g., transitions across patterns) to discover play styles via a supervised classification objective around player engagement. The dual objective allows CognitionNet to reveal several player psychology inspired decision making and tactics. To our knowledge, this is the first and one-of-its-kind research to fully automate the discovery of: (i) player psychology and game tactics from telemetry data; and (ii) relevant diagnostic explanations to players' engagement predictions. The collaborative training of the two networks with differential input dimensions is enabled using a novel formulation of "bridge loss". The network plays pivotal role in obtaining homogeneous and consistent play style definitions and significantly outperforms the SOTA baselines wherever applicable.

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APA

Talwadker, R., Chakrabarty, S., Pareek, A., Mukherjee, T., & Saini, D. (2022). CognitionNet: A Collaborative Neural Network for Play Style Discovery in Online Skill Gaming Platform. In Proceedings of the ACM SIGKDD International Conference on Knowledge Discovery and Data Mining (pp. 3961–3969). Association for Computing Machinery. https://doi.org/10.1145/3534678.3539179

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