Sequential Item Recommendation in the MOBA Game Dota 2
January 17, 2022 ยท Declared Dead ยท ๐ 2021 International Conference on Data Mining Workshops (ICDMW)
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Authors
Alexander Dallmann, Johannes Kohlmann, Daniel Zoller, Andreas Hotho
arXiv ID
2201.08724
Category
cs.LG: Machine Learning
Cross-listed
cs.IR
Citations
6
Venue
2021 International Conference on Data Mining Workshops (ICDMW)
Last Checked
3 months ago
Abstract
Multiplayer Online Battle Arena (MOBA) games such as Dota 2 attract hundreds of thousands of players every year. Despite the large player base, it is still important to attract new players to prevent the community of a game from becoming inactive. Entering MOBA games is, however, often demanding, requiring the player to learn numerous skills at once. An important factor of success is buying the correct items which forms a complex task depending on various in-game factors such as already purchased items, the team composition, or available resources. A recommendation system can support players by reducing the mental effort required to choose a suitable item, helping, e.g., newer players or players returning to the game after a longer break, to focus on other aspects of the game. Since Sequential Item Recommendation (SIR) has proven to be effective in various domains (e.g. e-commerce, movie recommendation or playlist continuation), we explore the applicability of well-known SIR models in the context of purchase recommendations in Dota 2. To facilitate this research, we collect, analyze and publish Dota-350k, a new large dataset based on recent Dota 2 matches. We find that SIR models can be employed effectively for item recommendation in Dota 2. Our results show that models that consider the order of purchases are the most effective. In contrast to other domains, we find RNN-based models to outperform the more recent Transformer-based architectures on Dota-350k.
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