Evaluation Metric
Evaluation metrics are crucial for assessing the performance of machine learning models, particularly in complex tasks like text and image generation, translation, and question answering. Current research emphasizes developing more nuanced and interpretable metrics that go beyond simple correlation with human judgments, focusing on aspects like multi-faceted assessment, robustness to biases, and alignment with expert evaluations. These improvements are vital for ensuring reliable model comparisons, facilitating the development of more effective algorithms, and ultimately leading to more trustworthy and impactful AI applications.
Papers
A Survey on Evaluation Metrics for Synthetic Material Micro-Structure Images from Generative Models
Devesh Shah, Anirudh Suresh, Alemayehu Admasu, Devesh Upadhyay, Kalyanmoy Deb
H_eval: A new hybrid evaluation metric for automatic speech recognition tasks
Zitha Sasindran, Harsha Yelchuri, T. V. Prabhakar, Supreeth Rao