A Generative Framework for Zero-Shot Learning with Adversarial Domain Adaptation
Varun Khare,Divyat Mahajan,Homanga Bharadhwaj,Vinay Kumar Verma,Piyush Rai +4 more
- 01 Mar 2020
- pp 3101-3110
TL;DR: Khan et al. as mentioned in this paper proposed a domain adaptation based generative framework for zero-shot learning, which is based on end-to-end learning of the class distributions of seen and unseen classes.
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Abstract: We present a domain adaptation based generative framework for zero-shot learning. Our framework addresses the problem of domain shift between the seen and unseen class distributions in zero-shot learning and minimizes the shift by developing a generative model trained via adversarial domain adaptation. Our approach is based on end-to-end learning of the class distributions of seen classes and unseen classes. To enable the model to learn the class distributions of unseen classes, we parameterize these class distributions in terms of the class attribute information (which is available for both seen and unseen classes). This provides a very simple way to learn the class distribution of any unseen class, given only its class attribute information, and no labeled training data. Training this model with adversarial domain adaptation further provides robustness against the distribution mismatch between the data from seen and unseen classes. Our approach also provides a novel way for training neural net based classifiers to overcome the hubness problem in zero-shot learning. Through a comprehensive set of experiments, we show that our model yields superior accuracies as compared to various state-of-the-art zero shot learning models, on a variety of benchmark datasets. Code for the experiments is available at github.com/vkkhare/ZSL-ADA
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Citations
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A Meta-Learning Framework for Generalized Zero-Shot Learning
TL;DR: This paper proposes a meta-learning based generative model based on integrating model-agnostic meta learning with a Wasserstein GAN (WGAN) to handle $(i)$ and $(ii)$, and uses a novel task distribution to handle ($ii)$.
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Towards Zero-Shot Learning with Fewer Seen Class Examples
Vinay Kumar Verma,Ashish Mishra,Anubha Pandey,Hema A. Murthy,Piyush Rai +4 more
- 01 Jan 2021
TL;DR: In this article, a meta-learning based generative model for zero-shot learning (ZSL) is proposed, where meta-train and meta-validation classes are disjoint to simulate the ZSL behavior in training.
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Towards Zero-Shot Learning with Fewer Seen Class Examples
TL;DR: The proposed approach leverages meta-learning to train a deep generative model that integrates variational autoencoder and generative adversarial networks and outperforms state-of-the-art approaches by a significant margin when the number of examples per seen class is very small.
Unbalanced network attack traffic detection based on feature extraction and GFDA-WGAN
TL;DR: In this paper , a dynamic chaotic cross-optimized bidirectional residual-gated recurrent unit (DCCSO-Res-BIGRU) and an adaptive Wasserstein generative adversarial network with generated feature domains (GFDA-WGAN) are proposed.
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Graph embedding based multi-label Zero-shot Learning
TL;DR: A directed weighted semantic graph is built based on statistics and prior knowledge, in which node features represent category semantics and weighted edges represent conditional probabilities of label co-occurrence, to guide the targeted extraction of visual features.
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