TY - EJOU AU - Lin, Yongzheng AU - Liu, Hong AU - Chen, Zhenxiang AU - Zhang, Kun AU - Ma, Kun TI - Stream-Based Data Sampling Mechanism for Process Object T2 - Computers, Materials \& Continua PY - 2019 VL - 60 IS - 1 SN - 1546-2226 AB - Process object is the instance of process. Vertexes and edges are in the graph of process object. There are different types of the object itself and the associations between object. For the large-scale data, there are many changes reflected. Recently, how to find appropriate real-time data for process object becomes a hot research topic. Data sampling is a kind of finding c hanges o f p rocess o bjects. There i s r equirements f or s ampling to be adaptive to underlying distribution of data stream. In this paper, we have proposed a adaptive data sampling mechanism to find a ppropriate d ata t o m odeling. F irst o f all, we use concept drift to make the partition of the life cycle of process object. Then, entity community detection is proposed to find changes. Finally, we propose stream-based real-time optimization of data sampling. Contributions of this paper are concept drift, community detection, and stream-based real-time computing. Experiments show the effectiveness and feasibility of our proposed adaptive data sampling mechanism for process object. KW - Process object KW - data sampling KW - big data KW - data stream KW - clustering KW - stream processing DO - 10.32604/cmc.2019.04322