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Katsarou, S., Rodríguez Gálvez, B. & Shanahan, J. (2022). Measuring Gender Bias in Contextualized Embeddings. In: Computer Sciences and Mathematics Forum: . Paper presented at AAAI Workshop on Artificial Intelligence with Biased or Scarce Data (AIBSD). MDPI AG, 3
Open this publication in new window or tab >>Measuring Gender Bias in Contextualized Embeddings
2022 (English)In: Computer Sciences and Mathematics Forum, MDPI AG , 2022, Vol. 3Conference paper, Published paper (Refereed)
Place, publisher, year, edition, pages
MDPI AG, 2022
National Category
Engineering and Technology
Identifiers
urn:nbn:se:kth:diva-312474 (URN)10.3390/cmsf2022003003 (DOI)
Conference
AAAI Workshop on Artificial Intelligence with Biased or Scarce Data (AIBSD)
Note

QC 20220601

Available from: 2022-05-19 Created: 2022-05-19 Last updated: 2023-12-05Bibliographically approved
Wang, T., Honari-Jahromi, M., Katsarou, S., Mikheeva, O., Panagiotakopoulos, T., Asadi, S. & Smirnov, O.player2vec: A Language Modeling Approach to Understand Player Behavior in Games.
Open this publication in new window or tab >>player2vec: A Language Modeling Approach to Understand Player Behavior in Games
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(English)Manuscript (preprint) (Other academic)
Abstract [en]

Methods for learning latent user representations from historical behavior logs have gained traction for recommendation tasks in e-commerce, content streaming, and other settings. However, this area still remains relatively underexplored in video and mobile gaming contexts. In this work, we present a novel method for overcoming this limitation by extending a long-range Transformer model from the natural language processing domain to player behavior data. We discuss specifics of behavior tracking in games and propose preprocessing and tokenization approaches by viewing in-game events in an analogous way to words in sentences, thus enabling learning player representations in a self-supervised manner in the absence of ground-truth annotations. We experimentally demonstrate the efficacy of the proposed approach in fitting the distribution of behavior events by evaluating intrinsic language modeling metrics. Furthermore, we qualitatively analyze the emerging structure of the learned embedding space and show its value for generating insights into behavior patterns to inform downstream applications.

National Category
Computer Sciences
Research subject
Computer Science
Identifiers
urn:nbn:se:kth:diva-353823 (URN)
Note

QC 20240925

Available from: 2024-09-24 Created: 2024-09-24 Last updated: 2024-09-25Bibliographically approved
Organisations
Identifiers
ORCID iD: ORCID iD iconorcid.org/0000-0002-1747-3707

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