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Similarity Search In Time Series Database Based On Sofm Neural Network

ICNC 2007: THIRD INTERNATIONAL CONFERENCE ON NATURAL COMPUTATION, VOL 2, PROCEEDINGS(2007)

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摘要
A novel algorithm for the similarity search in time series database is proposed. Considering the neural network's poor capability when handling with time change process sequence, the original data is mapped into the feature pattern space by means of Discrete Cosine Transform (DCT) for dimensionality reduction. By analyzing the advantages when the artificial neural network is used as similarity measurement model, the All-pairs query algorithm is presented based on SOFM neural network. For this experiment we examined the real flight data, the simulation result shows the proposed method is correct, and it has multi-scale feature and can reflect different similar patterns of time series under the various resolution.
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关键词
SOFM neural network,artificial neural network,neural network,time change process sequence,time series,time series database,All-pairs query algorithm,feature pattern space,multi-scale feature,novel algorithm,SOFM Neural Network,Similarity Search,Time Series Database
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