论文标题
基于分层且基于时间感知抽样的自适应集合学习用于流媒体建议
Stratified and Time-aware Sampling based Adaptive Ensemble Learning for Streaming Recommendations
论文作者
论文摘要
推荐系统在根据其偏好为量身定制的建议中发挥了越来越重要的作用。但是,常规的离线建议系统无法很好地处理无处不在的数据流。为了解决这个问题,流媒体推荐系统(SRSS)近年来已经出现,该系统逐步培训了新接收的数据的建议模型,以获得有效的实时建议。专注于新数据仅利用解决概念漂移的好处,即不断变化的用户对项目的偏好。但是,它阻碍了捕获长期用户偏好。此外,应该很好地解决通常解决流媒体建议准确性的问题。为了解决这些问题,我们提出了一个分层且基于时间感知抽样的自适应集合学习框架,称为STS-EAL,以提高流媒体建议的准确性。在STS-ael中,我们首先设计了分层和时间意识的抽样,以从新数据和历史数据中提取代表性数据,以解决概念漂移,同时捕获长期用户偏好。同样,将使用空闲资源的历史数据纳入货物量不足的情况更有效。之后,我们提出自适应集合学习,以与多个单独的建议模型并行地有效地处理过载数据,然后有效地将这些模型的结果与顺序自适应机制融合在一起。在三个现实世界数据集上进行的广泛实验表明,在所有情况下,STS-ael都大大优于最先进的SRSS。
Recommender systems have played an increasingly important role in providing users with tailored suggestions based on their preferences. However, the conventional offline recommender systems cannot handle the ubiquitous data stream well. To address this issue, Streaming Recommender Systems (SRSs) have emerged in recent years, which incrementally train recommendation models on newly received data for effective real-time recommendations. Focusing on new data only benefits addressing concept drift, i.e., the changing user preferences towards items. However, it impedes capturing long-term user preferences. In addition, the commonly existing underload and overload problems should be well tackled for higher accuracy of streaming recommendations. To address these problems, we propose a Stratified and Time-aware Sampling based Adaptive Ensemble Learning framework, called STS-AEL, to improve the accuracy of streaming recommendations. In STS-AEL, we first devise stratified and time-aware sampling to extract representative data from both new data and historical data to address concept drift while capturing long-term user preferences. Also, incorporating the historical data benefits utilizing the idle resources in the underload scenario more effectively. After that, we propose adaptive ensemble learning to efficiently process the overloaded data in parallel with multiple individual recommendation models, and then effectively fuse the results of these models with a sequential adaptive mechanism. Extensive experiments conducted on three real-world datasets demonstrate that STS-AEL, in all the cases, significantly outperforms the state-of-the-art SRSs.