Salvato in:
Dettagli Bibliografici
Autori principali: Geissler, Daniel, Krupp, Lars, Banwari, Vishal, Habusch, David, Zhou, Bo, Lukowicz, Paul, Karolus, Jakob
Natura: Preprint
Pubblicazione: 2025
Soggetti:
Accesso online:https://arxiv.org/abs/2505.06325
Tags: Aggiungi Tag
Nessun Tag, puoi essere il primo ad aggiungerne!!
_version_ 1866908357069111296
author Geissler, Daniel
Krupp, Lars
Banwari, Vishal
Habusch, David
Zhou, Bo
Lukowicz, Paul
Karolus, Jakob
author_facet Geissler, Daniel
Krupp, Lars
Banwari, Vishal
Habusch, David
Zhou, Bo
Lukowicz, Paul
Karolus, Jakob
contents Latent space representations are critical for understanding and improving the behavior of machine learning models, yet they often remain obscure and intricate. Understanding and exploring the latent space has the potential to contribute valuable human intuition and expertise about respective domains. In this work, we present HILL, an interactive framework allowing users to incorporate human intuition into the model training by interactively reshaping latent space representations. The modifications are infused into the model training loop via a novel approach inspired by knowledge distillation, treating the user's modifications as a teacher to guide the model in reshaping its intrinsic latent representation. The process allows the model to converge more effectively and overcome inefficiencies, as well as provide beneficial insights to the user. We evaluated HILL in a user study tasking participants to train an optimal model, closely observing the employed strategies. The results demonstrated that human-guided latent space modifications enhance model performance while maintaining generalization, yet also revealing the risks of including user biases. Our work introduces a novel human-AI interaction paradigm that infuses human intuition into model training and critically examines the impact of human intervention on training strategies and potential biases.
format Preprint
id arxiv_https___arxiv_org_abs_2505_06325
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Human in the Latent Loop (HILL): Interactively Guiding Model Training Through Human Intuition
Geissler, Daniel
Krupp, Lars
Banwari, Vishal
Habusch, David
Zhou, Bo
Lukowicz, Paul
Karolus, Jakob
Machine Learning
Artificial Intelligence
Latent space representations are critical for understanding and improving the behavior of machine learning models, yet they often remain obscure and intricate. Understanding and exploring the latent space has the potential to contribute valuable human intuition and expertise about respective domains. In this work, we present HILL, an interactive framework allowing users to incorporate human intuition into the model training by interactively reshaping latent space representations. The modifications are infused into the model training loop via a novel approach inspired by knowledge distillation, treating the user's modifications as a teacher to guide the model in reshaping its intrinsic latent representation. The process allows the model to converge more effectively and overcome inefficiencies, as well as provide beneficial insights to the user. We evaluated HILL in a user study tasking participants to train an optimal model, closely observing the employed strategies. The results demonstrated that human-guided latent space modifications enhance model performance while maintaining generalization, yet also revealing the risks of including user biases. Our work introduces a novel human-AI interaction paradigm that infuses human intuition into model training and critically examines the impact of human intervention on training strategies and potential biases.
title Human in the Latent Loop (HILL): Interactively Guiding Model Training Through Human Intuition
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2505.06325