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Neighborhood density estimation using space-partitioning based hashing schemes

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This work introduces FiRE/FiRE.1, a novel sketching-based algorithm for anomaly detection to quickly identify rare cell sub-populations in large-scale single-cell RNA sequencing data. This method demonstrated superior performance against state-of-the-art techniques. Furthermore, the thesis proposes Enhash, a fast and resource-efficient ensemble learner that uses projection hashing to detect concept drift in streaming data, proving highly competitive in time and accuracy across various drift types.

Aashi Jindal• 2025

Related benchmarks

TaskDatasetResultRank
Data Stream ClassificationmixedDrift
KappaT0.86
10
Data Stream ClassificationmovingSquares
KappaT0.88
10
Data Stream ClassificationmixedDrift
KappaM0.85
10
Data Stream ClassificationmovingSquares
KappaM0.84
10
Data Stream ClassificationinterchangingRBF
KappaM0.97
10
Stream ClassificationmixedDrift
Error Rate12.88
10
Stream ClassificationmovingSquares
Error Rate (%)13.29
10
Stream ClassificationinterchangingRBF
Error Rate (%)2.72
10
Data Stream ClassificationinterchangingRBF
KappaT0.97
10
Data Stream Classificationelec2
KappaT-0.18
10
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