Abstract

Online mining of path traversal patterns from Web click-streams is one of the most important problems of Web usage mining. In this paper, we propose a sliding window-based Web data mining algorithm, called Top-SW ( Top- k path traversal patterns of Stream sliding Window), to discover the set of top- k path traversal patterns from streaming maximal forward references, where k is the desired number of path traversal patterns to be mined. A new summary data structure, called Top-list (a list of Top- k path traversal patterns) is developed to maintain the essential information about the top- k path traversal patterns from the current maximal forward references stream. Experimental studies show that the proposed Top-SW algorithm is an efficient, single-pass algorithm for mining the set of top- k path traversal patterns from a continuous stream of maximal forward references.

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