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Pool-based learning via Weighted Information Gain Measurements

Pool-based learning via Weighted Information Gain Measurements. Rafael Augusto Ferreira do Carmo carmorafael@gmail.com Daniel Pinto Coutinho daniel.pintocoutinho@gmail.com Jerffeson Teixeira de Souza jeff@larces.uece.br Universidade Estadual do Ceará

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Pool-based learning via Weighted Information Gain Measurements

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  1. Pool-based learning via Weighted Information Gain Measurements Rafael Augusto Ferreira do Carmo carmorafael@gmail.com Daniel Pinto Coutinho daniel.pintocoutinho@gmail.com Jerffeson Teixeira de Souza jeff@larces.uece.br Universidade Estadual do Ceará Fortaleza - Brazil

  2. Introduction • Active learning scenario • Binary classification problems • Pool of unlabeled examples • No prior information about class distribution • One labeled example as “seed” for learning

  3. The Task • Select the as few “informative examples” as possible • Minimize the classification costs • Maximize the quality of the model

  4. The Algorithm • What if this example is positive? • What if this example is negative? • Information Gain Ratio • Weight features

  5. The Algorithm

  6. Results – Datasets

  7. Results - Ranking

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