UniAutoML: A Human-Centered Framework for Unified Discriminative and Generative AutoML with Large Language Models
Jiayi Guo, Zan Chen, Yingrui Ji, Liyun Zhang, Daqin Luo, Zhigang Li,, Yiqin Shen

TL;DR
UniAutoML introduces a human-centered AutoML framework leveraging Large Language Models to unify discriminative and generative tasks, enhancing transparency, user control, and trust through conversational interfaces and safety measures.
Contribution
This work presents the first human-centered AutoML framework that unifies discriminative and generative models using LLMs with an interactive conversational interface.
Findings
Improves AutoML performance across diverse datasets.
Enhances user control and trust in the AutoML process.
Demonstrates effective human-AutoML interaction through user studies.
Abstract
Automated Machine Learning (AutoML) has simplified complex ML processes such as data pre-processing, model selection, and hyper-parameter searching. However, traditional AutoML frameworks focus solely on discriminative tasks, often falling short in tackling AutoML for generative models. Additionally, these frameworks lack interpretability and user engagement during the training process, primarily due to the absence of human-centered design. It leads to a lack of transparency in final decision-making and limited user control, potentially reducing trust and adoption of AutoML methods. To address these limitations, we introduce UniAutoML, a human-centered AutoML framework that leverages Large Language Models (LLMs) to unify AutoML for both discriminative (e.g., Transformers and CNNs for classification or regression tasks) and generative tasks (e.g., fine-tuning diffusion models or LLMs).…
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Taxonomy
TopicsMachine Learning and Data Classification · Topic Modeling · Natural Language Processing Techniques
MethodsFocus · Diffusion
