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Publication | Open Access

Profiling the baseline performance and limits of machine learning models for adaptive immune receptor repertoire classification

22

Citations

52

References

2022

Year

Abstract

We provide a reference benchmark to guide new AIRR-ML classification methodology by (i) identifying those scenarios characterized by immune signal and data set complexity, where baseline methods already achieve high prediction accuracy, and (ii) facilitating realistic expectations of the performance of AIRR-ML models given training data set properties and assumptions. Our study serves as a template for defining specialized AIRR benchmark data sets for comprehensive benchmarking of AIRR-ML methods.

References

YearCitations

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