Replacement Learning: Training Vision Tasks with Fewer Learnable Parameters
Yuming Zhang, Peizhe Wang, Shouxin Zhang, Dongzhi Guan, Jiabin Liu and, Junhao Su

TL;DR
Replacement Learning is a novel training method that replaces all frozen layer parameters with only two learnable parameters, reducing resource usage while improving performance across multiple datasets and architectures.
Contribution
The paper introduces Replacement Learning, a new approach that replaces all frozen layer parameters with two learnable parameters, enhancing efficiency and performance.
Findings
Reduces parameters, training time, and memory consumption.
Surpasses end-to-end training performance.
Effective across various datasets and architectures.
Abstract
Traditional end-to-end deep learning models often enhance feature representation and overall performance by increasing the depth and complexity of the network during training. However, this approach inevitably introduces issues of parameter redundancy and resource inefficiency, especially in deeper networks. While existing works attempt to skip certain redundant layers to alleviate these problems, challenges related to poor performance, computational complexity, and inefficient memory usage remain. To address these issues, we propose an innovative training approach called Replacement Learning, which mitigates these limitations by completely replacing all the parameters of the frozen layers with only two learnable parameters. Specifically, Replacement Learning selectively freezes the parameters of certain layers, and the frozen layers utilize parameters from adjacent layers, updating…
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Taxonomy
TopicsReligion and Sociopolitical Dynamics in Nigeria
