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Recognizing Head and Shoulders Price Pattern in Time Series Data using Self-Organizing Maps
The Hong Kong University of Science and Technology Department of Computer Science and Engineering Final Year Thesis Oral Presentation Title: "Recognizing Head and Shoulders Price Pattern in Time Series Data using Self-Organizing Maps" By Sathish RAGHURAMAN Abstract We aim to recognize the Head and Shoulders (H&S) stock pattern in large amounts of unlabeled time series data using unsupervised learning. We achieve this by performing trend segmentation and clustering using Self-Organizing Maps. We use trend segmentation to reduce the dimensionality and noise in the original dataset. The input to the SOM are features that measure the proportional change in prices in adjoining time intervals. As SOMs clusters data based on the similarity of input features, we hypothesize that head and shoulders patterns must be grouped together. Based on the structure of the head and shoulder pattern, our system searches the output neurons to detect those whose weight vectors fit the head and shoulder feature template. When this match is found, the price movements corresponding to these samples in this cluster are predicted to hold the head and shoulders pattern. Lastly, we experiment with different cluster sizes to determine the best cluster dimensions for H&S pattern recognition. Date: Wednesday, 6 May 2015 Time: 2:20 - 3:00pm Venue: Room 5503 Lifts 25/26 Committee Members: Prof. James Kwok (Supervisor) Prof. Gary Chan (Reader)