Zarindast Atousa, Wood Jonathan
Department of Civil and Environment Engineering, Iowa State University, Ames, IA, United States.
Front Big Data. 2021 Oct 14;4:706117. doi: 10.3389/fdata.2021.706117. eCollection 2021.
Recommender systems attempt to identify and recommend the most preferable item (product-service) to individual users. These systems predict user interest in items based on related items, users, and the interactions between items and users. We aim to build an auto-routine and color scheme recommender system for home-based smart lighting that leverages a wealth of historical data and machine learning methods. We utilize an unsupervised method to recommend a routine for smart lighting. Moreover, by analyzing users' daily logs, geographical location, temporal and usage information, we understand user preferences and predict their preferred light colors. To do so, users are clustered based on their geographical information and usage distribution. We then build and train a predictive model within each cluster and aggregate the results. Results indicate that models based on similar users increases the prediction accuracy, with and without prior knowledge about user preferences.
推荐系统试图为个体用户识别并推荐最合意的物品(产品-服务)。这些系统基于相关物品、用户以及物品与用户之间的交互来预测用户对物品的兴趣。我们旨在为居家智能照明构建一个利用大量历史数据和机器学习方法的自动日常安排和配色方案推荐系统。我们使用一种无监督方法来推荐智能照明的日常安排。此外,通过分析用户的日常日志、地理位置、时间和使用信息,我们了解用户偏好并预测他们喜欢的灯光颜色。为此,根据用户的地理信息和使用分布对用户进行聚类。然后我们在每个聚类中构建并训练一个预测模型,并汇总结果。结果表明,基于相似用户的模型提高了预测准确性,无论是否有关于用户偏好的先验知识。