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Main Authors: Sung, Man-Ling, Silovsky, Jan, Siu, Man-Hung, Gish, Herbert, Pittapally, Chinnu
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2603.25699
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author Sung, Man-Ling
Silovsky, Jan
Siu, Man-Hung
Gish, Herbert
Pittapally, Chinnu
author_facet Sung, Man-Ling
Silovsky, Jan
Siu, Man-Hung
Gish, Herbert
Pittapally, Chinnu
contents Transfer learning and knowledge distillation has recently gained a lot of attention in the deep learning community. One transfer approach, the student-teacher learning, has been shown to successfully create ``small'' student neural networks that mimic the performance of a much bigger and more complex ``teacher'' networks. In this paper, we investigate an extension to this approach and transfer from a non-neural-based machine learning pipeline as teacher to a neural network (NN) student, which would allow for joint optimization of the various pipeline components and a single unified inference engine for multiple ML tasks. In particular, we explore replacing the random forest classifier by transfer learning to a student NN. We experimented with various NN topologies on 100 OpenML tasks in which random forest has been one of the best solutions. Our results show that for the majority of the tasks, the student NN can indeed mimic the teacher if one can select the right NN hyper-parameters. We also investigated the use of random forest for selecting the right NN hyper-parameters.
format Preprint
id arxiv_https___arxiv_org_abs_2603_25699
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Neural Network Conversion of Machine Learning Pipelines
Sung, Man-Ling
Silovsky, Jan
Siu, Man-Hung
Gish, Herbert
Pittapally, Chinnu
Machine Learning
Artificial Intelligence
Transfer learning and knowledge distillation has recently gained a lot of attention in the deep learning community. One transfer approach, the student-teacher learning, has been shown to successfully create ``small'' student neural networks that mimic the performance of a much bigger and more complex ``teacher'' networks. In this paper, we investigate an extension to this approach and transfer from a non-neural-based machine learning pipeline as teacher to a neural network (NN) student, which would allow for joint optimization of the various pipeline components and a single unified inference engine for multiple ML tasks. In particular, we explore replacing the random forest classifier by transfer learning to a student NN. We experimented with various NN topologies on 100 OpenML tasks in which random forest has been one of the best solutions. Our results show that for the majority of the tasks, the student NN can indeed mimic the teacher if one can select the right NN hyper-parameters. We also investigated the use of random forest for selecting the right NN hyper-parameters.
title Neural Network Conversion of Machine Learning Pipelines
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2603.25699