2015
DOI: 10.3390/sym7010053
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Output Effect Evaluation Based on Input Features in Neural Incremental Attribute Learning for Better Classification Performance

Abstract: Machine learning is a very important approach to pattern classification. This paper provides a better insight into Incremental Attribute Learning (IAL) with further analysis as to why it can exhibit better performance than conventional batch training. IAL is a novel supervised machine learning strategy, which gradually trains features in one or more chunks. Previous research showed that IAL can obtain lower classification error rates than a conventional batch training approach. Yet the reason for that is still… Show more

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