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S.N.U. EECS Jeong-Jin Lee Eui-Taik Na
Locating exons S.N.U. EECS Jeong-Jin Lee Eui-Taik Na
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Using Multilayer Neural Network Approach
Part I. Using Multilayer Neural Network Approach
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System Architecture Output Input Representation Learning
Finding exon starting region and ending region Input Representation Orthogonal encoding Using windows [0, 0, 0, 0] ~ outside the sequences Learning Backpropagation
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Parameters 1 Interpretations of inputs Case 1 - aligning the center
- aligning the end Case 3, 4 - biased
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Parameters 2 The size of window Number of units in the hidden layer
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Experimental Results 1 Three datasets from UCSC Data set 1 Data set 2
Having 7 subsets Data set 1 3447 trainings, 251 evaluations Data set 2 3448 trainings, 250 evaluations Evaluation Score Sums of success hits’ percentages
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Experimental Results 2 According to window type
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Experimental Results 3 According to window size
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Experimental Results 4 According to number of hidden units
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Part 2 Using HMMs
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Using HMMs The Tied Model The Wheel Model
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Future considerations
HMM + NN mixed models
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