When seeking a predictive model in biomedical data, one often has more than a single objective in mind, e.g., attaining both high accuracy and low complexity (to promote interpretability). We investigate herein whether multiple objectives can be dynamically tuned by our recently proposed coevolutionary algorithm, SAFE (Solution And Fitness Evolution). We find that SAFE is able to automatically tune accuracy and complexity with no performance loss, as compared with a standard evolutionary algorithm, over complex simulated genetics datasets produced by the GAMETES tool.
翻译:在寻找生物医学数据的预测模型时,人们常常想到不止一个目标,例如,达到高精度和低复杂性(促进解释性),我们在此调查多种目标是否可以动态地与我们最近提议的“革命算法 ” ( 解决方案和健康演变 ) 相适应。 我们发现,与标准的演化算法相比,安全电子学能够自动调整准确性和复杂性,而不会造成性能损失,超过GAMETES工具产生的复杂的模拟基因数据集。