Abstract Recognizing activities from behavior data is important for comprehensively understanding human’s intents and interests. However, in most cases, the user behaviors are partially observed or recorded, which make it… Click to show full abstract
Abstract Recognizing activities from behavior data is important for comprehensively understanding human’s intents and interests. However, in most cases, the user behaviors are partially observed or recorded, which make it a big challenge to model the user activities. In this paper, we propose to use a modified version of conditional random fields (CRF), the posterior regularized mixture conditional random fields (PRM-CRF), to learn and estimate the user activities from behavior streams. This model is able to incorporate both the contextual information and internal features of instances. Additionally, it uses a regularization term to integrate the prior domain knowledge, which reduces the negative influences caused by missing labels. Experiments on datasets of daily living activities and online social network activities demonstrate that the proposed algorithm is able to achieve competitive performance.
               
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