Parisa Safikhani


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2025

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Context-Aware Search Space Adaptation of Hyperparameters and Architectures for AutoML in Text Classification
Parisa Safikhani | David Broneske
Proceedings of the Eleventh Italian Conference on Computational Linguistics (CLiC-it 2025)

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AutoML Meets Hugging Face: Domain-Aware Pretrained Model Selection for Text Classification
Parisa Safikhani | David Broneske
Proceedings of the 2025 Conference of the Nations of the Americas Chapter of the Association for Computational Linguistics: Human Language Technologies (Volume 4: Student Research Workshop)

The effectiveness of embedding methods is crucial for optimizing text classification performance in Automated Machine Learning (AutoML). However, selecting the most suitable pre-trained model for a given task remains challenging. This study introduces the Corpus-Driven Domain Mapping (CDDM) pipeline, which utilizes a domain-annotated corpus of pre-fine-tuned models from the Hugging Face Model Hub to improve model selection. Integrating these models into AutoML systems significantly boosts classification performance across multiple datasets compared to baseline methods. Despite some domain recognition inaccuracies, results demonstrate CDDM’s potential to enhance model selection, streamline AutoML workflows, and reduce computational costs.