Fitness Function

A fitness function quantifies the quality of a solution in optimization problems, guiding algorithms towards optimal outcomes. Current research focuses on developing and refining fitness functions for diverse applications, including quantum computing, natural language processing, and evolutionary algorithms, often employing techniques like multi-objective optimization and parameter tuning via Monte Carlo methods to enhance performance and robustness. The effective design of fitness functions is crucial for the success of many optimization algorithms across various scientific disciplines and real-world applications, impacting areas such as machine learning, robotics, and engineering design.

Papers