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Domain Specific Feature Representation Learning For Diverse Temporal Data, Farhan Asif Chowdhury
Domain Specific Feature Representation Learning For Diverse Temporal Data, Farhan Asif Chowdhury
Computer Science ETDs
Humans can leverage domain context to recognize novel patterns and categories based on limited known examples. In contrast, computational learning methods are not adept at exploiting context and require sufficient labeled examples to achieve similar accuracy. Many temporal data domain, for example, seismic signals and oil mining sensor data, requires domain expert annotation, which is both costly and time-consuming. The dependency on training data limits the applicability of machine learning algorithms for domains with limited labeled data. This dissertation aims to address this gap by developing temporal mining algorithms that exploit domain context to learn discriminative feature representation from limited …