Modern online services continuously generate data at very fast rates. This continuous flow of data encompasses content - e.g., posts, news, products, comments -, but also user feedback - e.g., ratings, views, reads, clicks -, together with context data - user device, spatial or temporal data, user task or activity, weather. This can be overwhelming for systems and algorithms designed to train in batches, given the continuous and potentially fast change of content, context and user preferences or intents. Therefore, it is important to investigate online methods able to transparently adapt to the inherent dynamics of online services. Incremental models that learn from data streams are gaining attention in the recommender systems community, given their natural ability to deal with the continuous flows of data generated in dynamic, complex environments. User modeling and personalization can particularly benefit from algorithms capable of maintaining models incrementally and online. The objective of this workshop is to foster contributions and bring together a growing community of researchers and practitioners interested in online, adaptive approaches to user modeling, recommendation and personalization, and their implications regarding multiple dimensions, such as evaluation, reproducibility, privacy and explainability.
翻译:现代在线服务不断以非常快的速度生成数据。这种持续的数据流动包括内容,例如邮递、新闻、产品、评论,但也包括用户反馈,例如评级、观点、读取、点击、用户反馈,以及上下文数据、用户装置、空间或时间数据、用户任务或活动、天气等;鉴于内容、背景和用户偏好或意图的不断和潜在的快速变化,这对旨在分批培训的系统和算法可能影响很大。因此,必须调查能够透明地适应在线服务内在动态的在线方法。从数据流中学习的增量模型正在得到推荐者系统社区的注意,因为它们自然有能力处理动态、复杂环境中产生的数据的持续流动。用户建模和个人化尤其能够受益于能够逐步和在线维护模型的算法。本次讲习班的目的是促进贡献,汇集对在线、适应用户建模、建议和个性化方法感兴趣的越来越多的研究人员和从业人员,以及它们对多个层面的影响,如评价、可追溯性、隐私和可解释性。