2023
DOI: 10.1007/978-3-031-23618-1_18
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Bitpaths: Compressing Datasets Without Decreasing Predictive Performance

Abstract: The ever growing amount of data becomes available necessitates more memory to store it. Machine learned models are becoming increasingly sophisticated and efficient in order to navigate this growing amount of data. However, not all data is relevant for a certain machine learning task and storing that irrelevant data is a waste of memory and power. To address this, we propose bitpaths: a novel pattern-based method to compress datasets using a random forest. During inference, a KNN classifier then uses the encod… Show more

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