论文标题

oba游戏dota 2中的顺序项目推荐

Sequential Item Recommendation in the MOBA Game Dota 2

论文作者

Dallmann, Alexander, Kohlmann, Johannes, Zoller, Daniel, Hotho, Andreas

论文摘要

多人在线战场(MOBA)游戏(例如Dota 2)每年吸引成千上万的玩家。尽管有庞大的球员群,但吸引新玩家以防止游戏的社区变得不活跃仍然很重要。但是,输入MOBA游戏通常要求玩家一次学习许多技能。成功的重要因素是购买正确的项目,这些项目构成了复杂的任务,具体取决于已经购买的项目,团队组成或可用资源等各种游戏中的因素。推荐系统可以通过减少选择合适的项目所需的精神努力来支持玩家,例如,更长的休息后,新的玩家或玩家返回游戏,专注于游戏的其他方面。由于已被证明在各个领域(例如电子商务,电影推荐或播放列表延续)有效,因此我们探索了众所周知的先生模型在Dota 2的购买建议中的适用性。为了促进这项研究,我们收集,分析和发布了Dota-350k,新的大型数据,基于最新的Dota-350k,基于最近的Dota dota 2 Meatses。我们发现可以有效地使用DOTA 2中的项目建议使用爵士。我们的结果表明,考虑购买顺序的模型是最有效的。与其他域相反,我们发现基于RNN的模型以优于DOTA-350K上最新的基于变压器的架构。

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.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源