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Fusion - Department of Computer Engineering

This presentation is on Fusion and is presented by Dr. S. Mishra, HOD of the department of Computer Engineering at Hope Foundationu2019s International Institute of Information Technology, Iu00b2IT. The content of the presentation includes Pattern Recognition, Classification and Classifier Fusion. Learn about how to select an algorithm, functional aspects of fusion, importance of classifier fusion and more.

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Fusion - Department of Computer Engineering

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  1. FUSION By Dr. S Mishra, HoD, Dept of CE, I²IT

  2. Contents • Pattern Recognition • Classification • Classifier Fusion International Institute of Information Technology, I²IT, P-14, Rajiv Gandhi Infotech Park, MIDC Phase 1, Hinjawadi, Pune - 411 057. Tel +91 20 22933441 | www.isquareit.edu.in| Email info@isquareit.edu.in

  3. How to select an algorithm • Pattern recognition is a branch of machine learning that focuses on the recognition of patterns and regularities in data, although it is in some cases considered to be nearly synonymous with machine learning. International Institute of Information Technology, I²IT, P-14, Rajiv Gandhi Infotech Park, MIDC Phase 1, Hinjawadi, Pune - 411 057. Tel +91 20 22933441 | www.isquareit.edu.in| Email info@isquareit.edu.in

  4. Classifier Fusion was first proposed by Dasarathy and Sheela’s in 1979. • The main idea of fusion is to combine a set of models each of which solves the same original task in order to obtain a better model with more accuracy. • Classifier Fusion International Institute of Information Technology, I²IT, P-14, Rajiv Gandhi Infotech Park, MIDC Phase 1, Hinjawadi, Pune - 411 057. Tel +91 20 22933441 | www.isquareit.edu.in| Email info@isquareit.edu.in

  5. Classifier fusion consists of a set of individual classifiers i.e. a fusion/selection method to combine/select individual classifier outputs to give a final decision. Types of ensemble: • Classifier Selection • Classifier Fusion International Institute of Information Technology, I²IT, P-14, Rajiv Gandhi Infotech Park, MIDC Phase 1, Hinjawadi, Pune - 411 057. Tel +91 20 22933441 | www.isquareit.edu.in| Email info@isquareit.edu.in

  6. Functional Aspects of Fusion A natural move when trying to solve numerous complicated patterns. • Efficiency • Dimension; • Speed • Accuracy International Institute of Information Technology, I²IT, P-14, Rajiv Gandhi Infotech Park, MIDC Phase 1, Hinjawadi, Pune - 411 057. Tel +91 20 22933441 | www.isquareit.edu.in| Email info@isquareit.edu.in

  7. Importance of Classifier Fusion Better classification performance than individual classifiers. • Beside avoiding the selection of the worse classifier under particular hypothesis, fusion of multiple classifiers can improve the performance of the best individual classifiers. • This is possible if individual classifiers make different errors. • For linear combiners, averaging the outputs of individual classifiers with unbiased and uncorrelated errors can improve the performance of the best individual classifier. International Institute of Information Technology, I²IT, P-14, Rajiv Gandhi Infotech Park, MIDC Phase 1, Hinjawadi, Pune - 411 057. Tel +91 20 22933441 | www.isquareit.edu.in| Email info@isquareit.edu.in

  8. Issues • Time complexity • Space Complexity • The new classifier might not be better than the single best classifier but it will distinguish or eliminate the risk of picking an inadequate single classifier. • The final decision will be wrong if the output of selected classifier is wrong. • The trained classifier may not be competent enough to handle the problem. International Institute of Information Technology, I²IT, P-14, Rajiv Gandhi Infotech Park, MIDC Phase 1, Hinjawadi, Pune - 411 057. Tel +91 20 22933441 | www.isquareit.edu.in| Email info@isquareit.edu.in

  9. Random Selection and k- Fold Cross Validation Data Set n x m Split the data set such thatn=p + t Testing Data p x m Training Data t x m Testing MLP • 2 3 ... k • . . . . • . . . . • . . . . Bayesian Classifier Majority Voting SVM Training International Institute of Information Technology, I²IT, P-14, Rajiv Gandhi Infotech Park, MIDC Phase 1, Hinjawadi, Pune - 411 057. Tel +91 20 22933441 | www.isquareit.edu.in| Email info@isquareit.edu.in

  10. Decreasing order confidence matrix Classifiers Classifier Fusion Uniform Voting Distribution Summation Dempster-Shafer Entropy Weighting Density Based Weighting Bayesian Network ANN Support Vector Machine Class Ranking Preprocessing Techniques Decision tree Gene Expression Data Principal Component Analysis Factor Analysis k nearest neighbor Output FLANN Figure 2. Schematic representation of classifier fusion system International Institute of Information Technology, I²IT, P-14, Rajiv Gandhi Infotech Park, MIDC Phase 1, Hinjawadi, Pune - 411 057. Tel +91 20 22933441 | www.isquareit.edu.in| Email info@isquareit.edu.in

  11. References [1]LZhenyuchen, Jianping Li, Liwei Wei, WeixuanXu, Yong Shi: Multiple – kernel SVM based multiple-task oriented data mining system forgene expression data analysis, Expert Systems with Applications,Vol- 38, pp.12151-12159 (2011). [2] EsmaKilic, EthemAlpaydin: Learning the areas of expertise of classifiers in an ensemble, Procedia Computer Science,Vol-3, pp.74-82 (2011). [3] Nicolas Garcia – Pedrajas, Bomingo Ortiz – Boyer: An empirical study of binary classifier fusion methods for multi class classification,Information fusion ,Vol-12, pp.111-130 (2011). [4] Hui-Min Feng, Xue-Feili, Jun-Fen Chen: A comparative study of four fuzzy integrals for classifier fusion, IEEE international Conference on Machine learning and Cybernetics, pp.332-338 (2010). [5] JiangtaoHuange, Minghui Wang, Bo Gu, Zhixiang Chen: Multiple classifier combination based on interval-valued fuzzy permutation,Journal of Computational Information Systems, Vol-6, pp.1759-1768 (2010). [1] International Institute of Information Technology, I²IT, P-14, Rajiv Gandhi Infotech Park, MIDC Phase 1, Hinjawadi, Pune - 411 057. Tel +91 20 22933441 | www.isquareit.edu.in| Email info@isquareit.edu.in

  12. THANK YOU !! For further information please contact Dr. S. Mishra Department of Computer Engineering Hope Foundation’s International Institute of Information Technology, I2IT Hinjawadi, Pune – 411 057 Phone - +91 20 22933441 www.isquareit.edu.in | hodce@isquareit.edu.in

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