Mitigating Data Scarcity in Supervised Machine Learning Through Reinforcement Learning Guided Data Generation

Chengliang Chai, Kasisen Jin, Nan Tang, Ju Fan, Lianpeng Qiao*, Yuping Wang*, Yuyu Luo, Ye Yuan, Guoren Wang

*Corresponding author for this work

Research output: Chapter in Book/Report/Conference proceedingConference contributionpeer-review

Abstract

One primary problem for supervised ML is data scarcity, which refers to the inadequacy of well-labeled training data. Recently, deep generative models have shown the capability of generating data objects that closely resemble real data for datasets in different modalities, including images, natural language, and tabular data. Naturally, a promising approach for tackling data scarcity involves training a generative model to produce a collection of data objects, and then employing machine-labeling solutions (e.g., weak supervision or semi-supervised learning) to incorporate these generated data objects for supervised ML. However, it is important to note that because the provided training data may exhibit a different data distribution compared to the validation (or unseen testing) data, the generative model learned from these seen training data cannot guarantee the generation of high-quality data relative to this ML task. To address this challenge, we introduce an iterative approach that gradually calibrates the generative model by interacting with an environment that tells whether generated tuples are good or bad, by using a validation dataset that is not exposed to the generative model. In each iteration, we first use a pre-trained generative model to create unlabeled data objects, label them, and integrate this freshly generated data into the learning process. Afterwards, the model will be tested in the environment to assess the quality of the generated data. The iterative framework can be naturally controlled using reinforcement learning (RL), where an agent generates and labels tuples, an environment tests the generated tuples and sends reward back to the agent to progressively enhance the generative model for a specific supervised ML task. Experimental results over 8 datasets and multiple baselines demonstrate that our RL guided data synthesis, together with off-the-shelf semi-automatic labeling solutions, can significantly improve the performance of supervised ML models.

Original languageEnglish
Title of host publicationProceedings - 2024 IEEE 40th International Conference on Data Engineering, ICDE 2024
PublisherIEEE Computer Society
Pages3613-3626
Number of pages14
ISBN (Electronic)9798350317152
DOIs
Publication statusPublished - 2024
Event40th IEEE International Conference on Data Engineering, ICDE 2024 - Utrecht, Netherlands
Duration: 13 May 202417 May 2024

Publication series

NameProceedings - International Conference on Data Engineering
ISSN (Print)1084-4627
ISSN (Electronic)2375-0286

Conference

Conference40th IEEE International Conference on Data Engineering, ICDE 2024
Country/TerritoryNetherlands
CityUtrecht
Period13/05/2417/05/24

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