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Zhangjie Cao

Researcher at Stanford University

Publications -  66
Citations -  6519

Zhangjie Cao is an academic researcher from Stanford University. The author has contributed to research in topics: Domain (software engineering) & Computer science. The author has an hindex of 22, co-authored 59 publications receiving 3723 citations. Previous affiliations of Zhangjie Cao include Tsinghua University.

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Conditional Adversarial Domain Adaptation

TL;DR: Conditional adversarial domain adaptation is presented, a principled framework that conditions the adversarial adaptation models on discriminative information conveyed in the classifier predictions to guarantee the transferability.
Proceedings Article

Conditional Adversarial Domain Adaptation

TL;DR: Conditional domain adversarial networks (CDANs) as discussed by the authors are designed with two novel conditioning strategies: multilinear conditioning that captures the cross-covariance between feature representations and classifier predictions to improve the discriminability, and entropy conditioning that controls the uncertainty of classifier prediction to guarantee the transferability.
Proceedings Article

Multi-Adversarial Domain Adaptation

TL;DR: A multi-adversarial domain adaptation (MADA) approach, which captures multimode structures to enable fine-grained alignment of different data distributions based on multiple domain discriminators and outperforms state of the art methods on standard domain adaptation datasets.
Proceedings ArticleDOI

HashNet: Deep Learning to Hash by Continuation

TL;DR: HashNet as discussed by the authors proposes a deep architecture for deep learning to hash by continuation method with convergence guarantees, which learns exactly binary hash codes from imbalanced similarity data, and achieves state-of-the-art multimedia retrieval performance on standard benchmarks.
Journal ArticleDOI

Transferable Representation Learning with Deep Adaptation Networks

TL;DR: A novel framework for deep adaptation networks is developed that extends deep convolutional neural networks to domain adaptation problems and yields state-of-the-art results on standard visual domain-adaptation benchmarks.