LGMLJun 24, 2024

MD tree: a model-diagnostic tree grown on loss landscape

arXiv:2406.16988v12 citationsHas Code
Originality Incremental advance
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This addresses model diagnosis for neural network practitioners by providing a more accurate method than conventional validation-based approaches, though it is incremental as it builds on existing loss landscape concepts.

The paper tackles the problem of diagnosing failure modes in pre-trained neural networks by proposing MD tree, a method based on loss landscape metrics, which achieves 87.7% accuracy in dataset transfer tasks, outperforming validation-based approaches by 14.88%.

This paper considers "model diagnosis", which we formulate as a classification problem. Given a pre-trained neural network (NN), the goal is to predict the source of failure from a set of failure modes (such as a wrong hyperparameter, inadequate model size, and insufficient data) without knowing the training configuration of the pre-trained NN. The conventional diagnosis approach uses training and validation errors to determine whether the model is underfitting or overfitting. However, we show that rich information about NN performance is encoded in the optimization loss landscape, which provides more actionable insights than validation-based measurements. Therefore, we propose a diagnosis method called MD tree based on loss landscape metrics and experimentally demonstrate its advantage over classical validation-based approaches. We verify the effectiveness of MD tree in multiple practical scenarios: (1) use several models trained on one dataset to diagnose a model trained on another dataset, essentially a few-shot dataset transfer problem; (2) use small models (or models trained with small data) to diagnose big models (or models trained with big data), essentially a scale transfer problem. In a dataset transfer task, MD tree achieves an accuracy of 87.7%, outperforming validation-based approaches by 14.88%. Our code is available at https://github.com/YefanZhou/ModelDiagnosis.

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