论文标题
修剪结合学习,最小神经网络的合奏以及XAI的未来
Pruning coupled with learning, ensembles of minimal neural networks, and future of XAI
论文作者
论文摘要
结合学习的旨在优化神经网络(NN)结构,以解决特定问题。该优化可用于各种目的:防止过度拟合,为实施和培训节省资源,提供训练有素的NN以及许多其他人的解释性。无法进一步修剪的最小结构并非唯一。最小结构的合奏可以用作通过投票解决问题的知识分子委员会。每个最小NN都列出了有关该问题的“经验知识”,并且可以口头表达。从数据中提取的这种知识的非唯一性是数据驱动的人工智能(AI)的重要特性。在这项工作中,我们根据原则回顾一种修剪方法:哪些控制培训应控制修剪。预计该原理在人工NN和选择和修改大脑中的重要突触接触方面有效。在反向传播中,人工NN学习由损失函数的梯度控制。因此,一阶灵敏度指标用于修剪,并审查了基于这些指标的算法。引入了逻辑上透明的NN概念。关于政治预测问题的说明了这种方法:预测美国总统大选的结果。产生了八个最小NN,这些NN产生了不同的预测算法。可以通过创建专家小组(委员会)来利用解决方案的唯一性。 NN多元化的另一种用途是确定进一步数据收集最有用的输入信号区域。总之,我们讨论了广告广告的XAI计划的未来。
Pruning coupled with learning aims to optimize the neural network (NN) structure for solving specific problems. This optimization can be used for various purposes: to prevent overfitting, to save resources for implementation and training, to provide explainability of the trained NN, and many others. The minimal structure that cannot be pruned further is not unique. Ensemble of minimal structures can be used as a committee of intellectual agents that solves problems by voting. Each minimal NN presents an "empirical knowledge" about the problem and can be verbalized. The non-uniqueness of such knowledge extracted from data is an important property of data-driven Artificial Intelligence (AI). In this work, we review an approach to pruning based on the principle: What controls training should control pruning. This principle is expected to work both for artificial NN and for selection and modification of important synaptic contacts in brain. In back-propagation artificial NN learning is controlled by the gradient of loss functions. Therefore, the first order sensitivity indicators are used for pruning and the algorithms based on these indicators are reviewed. The notion of logically transparent NN was introduced. The approach was illustrated on the problem of political forecasting: predicting the results of the US presidential election. Eight minimal NN were produced that give different forecasting algorithms. The non-uniqueness of solution can be utilised by creation of expert panels (committee). Another use of NN pluralism is to identify areas of input signals where further data collection is most useful. In Conclusion, we discuss the possible future of widely advertised XAI program.