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@NISL-MSU

Numerical Intelligent Systems Laboratory

Dr. John Sheppard's research team at Montana State University

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The Numerical Intelligent Systems Laboratory focuses on performing cutting-edge research into fundamental problems in artificial intelligence and machine learning from a numerical computation perspective. We are exploring problems in advanced knowledge representation, inference, and learning as it applies to system-level problems such as system monitoring and control, equipment health management, and precision agriculture. Techniques explored include probabilistic and Bayesian methods, evolutionary methods, and particle-based methods. We are also exploring problems in deep learning and explainable AI.

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  1. AdaptiveSampling AdaptiveSampling Public

    Adaptive Sampling to Reduce Epistemic Uncertainty Using Prediction Interval-Generation Neural Networks. AAAI 2025.

    Jupyter Notebook 1

  2. MultiSetSR MultiSetSR Public

    Decomposable Neuro-evolutionary Symbolic Regression

    Python 2

  3. HSI-BandSelection HSI-BandSelection Public

    Developing Low-Cost Multispectral Imagers using Inter-Band Redundancy Analysis and Greedy Spectral Selection in Hyperspectral Imaging. Remote Sensing 2021.

    Jupyter Notebook 59 14

  4. PredictionIntervals PredictionIntervals Public

    DualAQD: Dual Accuracy-quality-driven Prediction Intervals. IEEE TNNLS 2023.

    Jupyter Notebook 9 1

  5. ResponsivityAnalysis ResponsivityAnalysis Public

    Counterfactual explanations for the identification of the features with the highest relevance on the shape of response curves generated by neural network black boxes. IJCNN 2023.

    Python 1 1

  6. ManagementZonesCFE ManagementZonesCFE Public

    Counterfactual Analysis of Neural Networks Used to Create Fertilizer Management Zones. IJCNN 2024.

    Python

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