Improved Techniques for Adversarial Discriminative Domain Adaptation
Aaron Chadha, Yiannis Andreopoulos

TL;DR
This paper enhances adversarial discriminative domain adaptation by introducing new loss functions, regularization techniques, and a comprehensive analysis, leading to improved performance on standard and neuromorphic datasets.
Contribution
The paper proposes novel loss formulations and regularization strategies to improve ADDA's stability and effectiveness in unsupervised domain adaptation, including for neuromorphic vision data.
Findings
Outperforms state-of-the-art on SVHN and MNIST datasets
Effective regularization reduces overfitting during training
Improves domain adaptation for neuromorphic vision sensing data
Abstract
Adversarial discriminative domain adaptation (ADDA) is an efficient framework for unsupervised domain adaptation in image classification, where the source and target domains are assumed to have the same classes, but no labels are available for the target domain. We investigate whether we can improve performance of ADDA with a new framework and new loss formulations. Following the framework of semi-supervised GANs, we first extend the discriminator output over the source classes, in order to model the joint distribution over domain and task. We thus leverage on the distribution over the source encoder posteriors (which is fixed during adversarial training) and propose maximum mean discrepancy (MMD) and reconstruction-based loss functions for aligning the target encoder distribution to the source domain. We compare and provide a comprehensive analysis of how our framework and loss…
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Taxonomy
MethodsDenoising Autoencoder · Solana Customer Service Number +1-833-534-1729
