2021
DOI: 10.48550/arxiv.2107.01782
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A contextual analysis of multi-layer perceptron models in classifying hand-written digits and letters: limited resources

Abstract: Classifying hand-written digits and letters has taken a big leap with the introduction of ConvNets. However, on very constrained hardware the time necessary to train such models would be high. Our main contribution is twofold. First, we extensively test an end-toend vanilla neural network (MLP) approach in pure numpy without any pre-processing or feature extraction done beforehand. Second, we show that basic data mining operations can significantly improve the performance of the models in terms of computationa… Show more

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