Procedural Steps for Knowledge Mining in Time Series

Symbolic intervals which form temporal patterns are usually formulated through Allen's interval relations that originate in temporal reasoning. But this representation is not advantages for knowledge discovery. The Hierarchical Time series Knowledge Representation (HTKR) is the hierarchical lan...

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Veröffentlicht in:International journal of computer applications 2013-01, Vol.63 (13), p.13-16
Hauptverfasser: Dev, Kaustuva Chandra, Behera, Sibananda
Format: Artikel
Sprache:eng
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Zusammenfassung:Symbolic intervals which form temporal patterns are usually formulated through Allen's interval relations that originate in temporal reasoning. But this representation is not advantages for knowledge discovery. The Hierarchical Time series Knowledge Representation (HTKR) is the hierarchical language which expresses the temporal aspects of coincidence and partial order, for interval patterns. We present mining procedural steps which are more e?cient, e?ective and based on item set techniques. Pruning of the search space minimizes the mining result size considerably, thereby speeding up the procedural steps and easing the interpretations. When applied on the real data set, HTKR can provide the explanation of underlying temporal phenomena, but whereas the numerous Allen's relation patterns only explains fragmented data.
ISSN:0975-8887
0975-8887
DOI:10.5120/10525-5508