Empirical Analysis
Empirical analysis is a crucial methodology for validating and improving machine learning models and algorithms across diverse domains. Current research focuses on evaluating model performance, robustness, and fairness using various techniques, including contrastive preference optimization, conformal prediction, and different fine-tuning strategies for large language models (LLMs), vision-language models, and other architectures. These analyses reveal critical insights into model biases, vulnerabilities to adversarial attacks, and the trade-offs between accuracy, efficiency, and resource consumption, informing the development of more reliable and responsible AI systems. The findings directly impact the design and deployment of AI in various applications, from translation and fraud detection to medical diagnosis and autonomous driving.
Papers
An Empirical Analysis of Speech Self-Supervised Learning at Multiple Resolutions
Theo Clark, Benedetta Cevoli, Eloy de Jong, Timofey Abramski, Jamie Dougherty
An Empirical Analysis of GPT-4V's Performance on Fashion Aesthetic Evaluation
Yuki Hirakawa, Takashi Wada, Kazuya Morishita, Ryotaro Shimizu, Takuya Furusawa, Sai Htaung Kham, Yuki Saito