We show experimentally that the accuracy of a trained neural network can be predicted surprisingly well by looking only at its weights, without evaluating it on input data. We motivate this task and introduce a formal setting for it. Even when using simple statistics of the weights, the predictors are able to rank neural networks by their performance with very high accuracy (R2 score more than 0.98). Furthermore, the predictors are able to rank networks trained on different, unobserved datasets and with different architectures. We release a collection of 120k convolutional neural networks trained on four different datasets to encourage further research in this area, with the goal of understanding network training and performance better.
翻译:我们实验性地显示,通过只看其重量,而不对输入数据进行评估,就可以对受过训练的神经网络的准确性作出令人惊讶的预测。我们激励这项任务并引入一个正式的环境。即使使用简单的重量统计,预测者也能以极高的精确性(R2得分超过0.98分)对神经网络进行评级,此外,预测者能够对经过不同、未观测到的数据集和不同结构培训的网络进行评级。我们发行了一组120k 革命神经网络,这些网络在四个不同的数据集上接受培训,以鼓励在这一领域进行进一步研究,目的是更好地了解网络培训和性能。