Chinese Event Identification and Tracking Using Two Phase Clustering Algorithm
نویسنده
چکیده
In this paper, two phase clustering algorithm is adopted to identify and track event. The first phase clustering is incremental clustering algorithm, and the new event will be identified. The second phase clustering is refined clustering algorithm, and the new event will be group and tracking. Experimental result shows that event identification and tracking using two phase clustering algorithm is effective.
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