Synthesizing Machine Learning Programs with PAC Guarantees via Statistical Sketching
We study the problem of synthesizing programs that include machine learning components such as deep neural networks (DNNs). We focus on statistical properties, which are properties expected to hold with high probability -- e.g., that an image classification model correctly identifies people in image...
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Zusammenfassung: | We study the problem of synthesizing programs that include machine learning
components such as deep neural networks (DNNs). We focus on statistical
properties, which are properties expected to hold with high probability --
e.g., that an image classification model correctly identifies people in images
with high probability. We propose novel algorithms for sketching and
synthesizing such programs by leveraging ideas from statistical learning theory
to provide statistical soundness guarantees. We evaluate our approach on
synthesizing list processing programs that include DNN components used to
process image inputs, as well as case studies on image classification and on
precision medicine. Our results demonstrate that our approach can be used to
synthesize programs with probabilistic guarantees. |
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DOI: | 10.48550/arxiv.2110.05390 |