Stimulative Training++: Go Beyond The Performance Limits of Residual Networks
Peng Ye, Tong He, Shengji Tang, Baopu Li, Tao Chen, Lei Bai, Wanli, Ouyang

TL;DR
This paper introduces Stimulative Training++, a novel approach inspired by social psychology to enhance residual networks by addressing the problem of network loafing, resulting in performance beyond current limits.
Contribution
It proposes a new training scheme and three strategies to mitigate network loafing, significantly boosting residual network performance.
Findings
Stimulative training improves residual network accuracy.
Three strategies further enhance performance gains.
Experimental results validate the effectiveness of the proposed methods.
Abstract
Residual networks have shown great success and become indispensable in recent deep neural network models. In this work, we aim to re-investigate the training process of residual networks from a novel social psychology perspective of loafing, and further propose a new training scheme as well as three improved strategies for boosting residual networks beyond their performance limits. Previous research has suggested that residual networks can be considered as ensembles of shallow networks, which implies that the final performance of a residual network is influenced by a group of subnetworks. We identify a previously overlooked problem that is analogous to social loafing, where subnetworks within a residual network are prone to exert less effort when working as part of a group compared to working alone. We define this problem as \textit{network loafing}. Similar to the decreased individual…
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Taxonomy
TopicsStochastic Gradient Optimization Techniques · Functional Brain Connectivity Studies · Ferroelectric and Negative Capacitance Devices
