论文标题

模型动物园:神经网络模型不同人群的数据集

Model Zoos: A Dataset of Diverse Populations of Neural Network Models

论文作者

Schürholt, Konstantin, Taskiran, Diyar, Knyazev, Boris, Giró-i-Nieto, Xavier, Borth, Damian

论文摘要

在过去的几年中,神经网络(NN)从实验室环境中发展为许多现实世界中的最新问题。结果表明,NN模型(即它们的重量和偏见)在训练期间体重空间中的独特轨迹上演变。随后,这种神经网络模型(称为模型动物园)的人群将在体重空间中形成结构。我们认为,这些结构的几何形状,曲率和平滑度包含有关训练状态的信息,并且可以揭示单个模型的潜在特性。借助这种模型动物园,可以研究(i)模型分析的新方法,(ii)发现未知的学习动力学,(iii)学习此类人群的丰富表示形式,或(iv)利用模型动物园来实现NN重量和偏见的生成模型。不幸的是,缺乏标准化模型动物园和可用的基准可以显着增加摩擦,以进一步研究NNS人群。通过这项工作,我们发布了一个新颖的模型动物园数据集,其中包含系统生成和多样化的NN模型种群,以进行进一步研究。总共提出的模型动物园数据集基于八个图像数据集,由27个模型动物园组成,该模型动物园训练有不同的超参数组合,包括50'360唯一的NN型号以及其稀疏的双胞胎,导致超过3'844'360收集的模型状态。此外,对于模型动物园数据,我们提供了对动物园的深入分析,并为多个下游任务提供了基准。该数据集可在www.modelzoos.cc上找到。

In the last years, neural networks (NN) have evolved from laboratory environments to the state-of-the-art for many real-world problems. It was shown that NN models (i.e., their weights and biases) evolve on unique trajectories in weight space during training. Following, a population of such neural network models (referred to as model zoo) would form structures in weight space. We think that the geometry, curvature and smoothness of these structures contain information about the state of training and can reveal latent properties of individual models. With such model zoos, one could investigate novel approaches for (i) model analysis, (ii) discover unknown learning dynamics, (iii) learn rich representations of such populations, or (iv) exploit the model zoos for generative modelling of NN weights and biases. Unfortunately, the lack of standardized model zoos and available benchmarks significantly increases the friction for further research about populations of NNs. With this work, we publish a novel dataset of model zoos containing systematically generated and diverse populations of NN models for further research. In total the proposed model zoo dataset is based on eight image datasets, consists of 27 model zoos trained with varying hyperparameter combinations and includes 50'360 unique NN models as well as their sparsified twins, resulting in over 3'844'360 collected model states. Additionally, to the model zoo data we provide an in-depth analysis of the zoos and provide benchmarks for multiple downstream tasks. The dataset can be found at www.modelzoos.cc.

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