View Selection
View selection, the process of choosing the most informative subset from a larger set of data points or options, is crucial for improving efficiency and performance in various applications. Current research focuses on developing sophisticated algorithms and models, such as those based on determinantal point processes, Bayesian methods, and contrastive learning, to optimize selection criteria across diverse domains including genetic algorithms, prompt engineering for LLMs, and neural rendering. These advancements are significant because effective view selection reduces computational costs, enhances model accuracy, and enables more robust and reliable decision-making in fields ranging from machine learning and computer vision to robotics and causal inference. The development of efficient and effective view selection methods is driving progress across numerous scientific disciplines and technological applications.
Papers
Selection of Filters for Photonic Crystal Spectrometer Using Domain-Aware Evolutionary Algorithms
Kirill Antonov, Marijn Siemons, Niki van Stein, Thomas H. W. Bäck, Ralf Kohlhaas, Anna V. Kononova
An Online Learning Approach to Prompt-based Selection of Generative Models
Xiaoyan Hu, Ho-fung Leung, Farzan Farnia
A Systematic Investigation of Knowledge Retrieval and Selection for Retrieval Augmented Generation
Xiangci Li, Jessica Ouyang