LGFeb 9, 2022

Explainable Predictive Modeling for Limited Spectral Data

arXiv:2202.04527v130 citations
Originality Synthesis-oriented
AI Analysis

This work addresses the need for interpretable and efficient predictive modeling in spectroscopy to aid domain experts and enable cost-effective sensor deployment, though it appears incremental by building on existing methods.

The paper tackles the problem of feature selection and interpretation for high-dimensional, limited spectral data by evaluating common feature selection techniques and applying explainable AI to interpret predictions, aiming to enhance transparency and optimize data collection processes.

Feature selection of high-dimensional labeled data with limited observations is critical for making powerful predictive modeling accessible, scalable, and interpretable for domain experts. Spectroscopy data, which records the interaction between matter and electromagnetic radiation, particularly holds a lot of information in a single sample. Since acquiring such high-dimensional data is a complex task, it is crucial to exploit the best analytical tools to extract necessary information. In this paper, we investigate the most commonly used feature selection techniques and introduce applying recent explainable AI techniques to interpret the prediction outcomes of high-dimensional and limited spectral data. Interpretation of the prediction outcome is beneficial for the domain experts as it ensures the transparency and faithfulness of the ML models to the domain knowledge. Due to the instrument resolution limitations, pinpointing important regions of the spectroscopy data creates a pathway to optimize the data collection process through the miniaturization of the spectrometer device. Reducing the device size and power and therefore cost is a requirement for the real-world deployment of such a sensor-to-prediction system as a whole. We specifically design three different scenarios to ensure that the evaluation of ML models is robust for the real-time practice of the developed methodologies and to uncover the hidden effect of noise sources on the final outcome.

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