HyperTendril: Visual Analytics for User-Driven Hyperparameter Optimization of Deep Neural Networks
Heungseok Park, Yoonsoo Nam, Ji-Hoon Kim, Jaegul Choo

TL;DR
HyperTendril is a web-based visual analytics system that enables user-driven, interactive hyperparameter tuning for deep neural networks, improving AutoML search efficiency through iterative refinement and variable importance analysis.
Contribution
It introduces a novel visual analytics approach for human-in-the-loop hyperparameter optimization in a model-agnostic setting, enhancing AutoML processes.
Findings
Users effectively steer hyperparameter tuning using HyperTendril.
The system improves understanding of hyperparameter behaviors.
User study shows increased tuning efficiency and insight.
Abstract
To mitigate the pain of manually tuning hyperparameters of deep neural networks, automated machine learning (AutoML) methods have been developed to search for an optimal set of hyperparameters in large combinatorial search spaces. However, the search results of AutoML methods significantly depend on initial configurations, making it a non-trivial task to find a proper configuration. Therefore, human intervention via a visual analytic approach bears huge potential in this task. In response, we propose HyperTendril, a web-based visual analytics system that supports user-driven hyperparameter tuning processes in a model-agnostic environment. HyperTendril takes a novel approach to effectively steering hyperparameter optimization through an iterative, interactive tuning procedure that allows users to refine the search spaces and the configuration of the AutoML method based on their own…
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