Abstract

High utility pattern mining has become a grueling novel analysis topic in data mining. Discovery of patterns with high profit from datasets is thought as High Utility Pattern mining. There square measure three window models used usually in data streams specifically (landmark window model, Damped or Time attenuation window model and Sliding window mechanism model). The traditional ways of sliding window mechanism that uses HUP mining algorithmic rules suffer from a retardant of level wise candidate-and-test-generation which degrades the performance of mining in terms of overall execution time and memory consumption. Attributable to the large characteristics of streamed data which have fast growing arrival rate, real time, unbounded and continuous which need to be scanned only once and as soon as the new data arrives discarding the old information is the crucial challenge. In this paper, we unravel these issues by proposing a algorithm named Pattern Sliding Window Based High Utility –Growth(PSHU-Growth)tree algorithm which is economical one pass tree approach for mining patterns matching base tree over data streams. Outcomes show that our algorithm provides higher results than ancient approaches that suffer from level wise candidate-test-and generation increasing the overall execution and efficiency.

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