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pDeep3: Toward More Accurate Spectrum Prediction with Fast Few-Shot Learning
54
Citations
24
References
2021
Year
Few-shot LearningFast Few-shot LearningSpectrum PredictionEngineeringMachine LearningMachine Learning ToolSpectrum EstimationSpeech RecognitionData SciencePhysic Aware Machine LearningPattern RecognitionBenchmark DatasetsMachine Learning ModelSpectral ImagingComputer EngineeringComputer ScienceDeep LearningDeep Learning MethodsSignal ProcessingComputational ScienceSpectral AnalysisSpectral SearchingSpeech Processing
Spectrum prediction using deep learning has attracted a lot of attention in recent years. Although existing deep learning methods have dramatically increased the prediction accuracy, there is still considerable space for improvement, which is presently limited by the difference of fragmentation types or instrument settings. In this work, we use the few-shot learning method to fit the data online to make up for the shortcoming. The method is evaluated using ten data sets, where the instruments includes Velos, QE, Lumos, and Sciex, with collision energies being differently set. Experimental results show that few-shot learning can achieve higher prediction accuracy with almost negligible computing resources. For example, on the data set from a untrained instrument Sciex-6600, within about 10 s, the prediction accuracy is increased from 69.7% to 86.4%; on the CID (collision-induced dissociation) data set, the prediction accuracy of the model trained by HCD (higher energy collision dissociation) spectra is increased from 48.0% to 83.9%. It is also shown that, the method is not critical to data quality and is sufficiently efficient to fill the accuracy gap. The source code of pDeep3 is available at http://pfind.ict.ac.cn/software/pdeep3.
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