Maximum Probability Framework, powered by Maximum Probability Theorem, is a recent theoretical development in artificial intelligence, aiming to formally define probabilistic models, guiding development of objective functions, and regularization of probabilistic models. MPT uses the probability distribution that the models assume on random variables to provide an upper bound on the probability of the model. We apply MPT to challenging out-of-distribution (OOD) detection problems in computer vision by incorporating MPT as a regularization scheme in the training of CNNs and their energy-based variants. We demonstrate the effectiveness of the proposed method on 1080 trained models, with varying hyperparameters, and conclude that the MPT-based regularization strategy stabilizes and improves the generalization and robustness of base models in addition to enhanced OOD performance on CIFAR10, CIFAR100, and MNIST datasets.
翻译:以最大概率理论为动力的《最大概率框架》是最近人工智能的理论发展,旨在正式确定概率模型,指导客观功能的开发,并使概率模型正规化。MOT利用模型在随机变量上假设的概率分布,为模型的概率提供上限。我们运用MOT来挑战计算机视觉的超出分配(OOOD)探测问题,在CNN及其基于能源的变异器的培训中将MOT作为正规化计划。我们展示了1080个经过培训的模型的拟议方法的有效性,这些模型具有不同的超度。我们的结论是,基于MOT的正规化战略除了加强COD在CIFAR10、CIFAR100和MNIST数据集上的绩效外,还稳定并改善基础模型的通用性和稳健性。