PPT-Introduction Adversarial domain-invariant training (ADIT)
Author : likets | Published Date : 2020-06-17
Use adversarial learning to suppress the effects of domain variability eg environment speaker language dialect variability in acoustic modeling AM Deficiency
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Introduction Adversarial domain-invariant training (ADIT): Transcript
Use adversarial learning to suppress the effects of domain variability eg environment speaker language dialect variability in acoustic modeling AM Deficiency domain classifier treats deep features uniformly without discrimination. Rahul Sharma and Alex Aiken (Stanford University). 1. Randomized Search. x. = . i. ;. y = j;. while . y!=0 . do. . x = x-1;. . y = y-1;. if( . i. ==j ). assert x==0. No!. Yes!. . 2. Invariants. Jordi Cortadella. Department of Computer Science. Invariants. Invariants help to …. Define how variables must be initialized before a loop. Define the necessary condition to reach the post-condition . etc. Convnets. (optimize weights to predict bus). bus. Convnets. (optimize input to predict ostrich). ostrich. Work on Adversarial examples by . Goodfellow. et al. , . Szegedy. et. al., etc.. Generative Adversarial Networks (GAN) [. Statistical Relational AI. Daniel Lowd. University of Oregon. Outline. Why do we need adversarial modeling?. Because of the dream of AI. Because of current reality. Because of possible dangers. Our initial approach and results. Nets. İlke Çuğu 1881739. NIPS 2014 . Ian. . Goodfellow. et al.. At a . glance. (. http://www.kdnuggets.com/2017/01/generative-adversarial-networks-hot-topic-machine-learning.html. ). Idea. . Behind. Transfer Learning. Dog/Cat. Classifier. cat. dog. Data . not directly related to . the task considered. elephant. tiger. Similar domain, different tasks. Different domains, same task. http://weebly110810.weebly.com/396403913129399.html. —An Introduction. Binghui. Wang, Computer Engineering. Supervisor: Neil . Zhenqiang. Gong. 01/13/2017. Outline. Machine Learning (ML) . Adversarial . ML. Attack . Taxonomy. Capability. Adversarial Training . Presenters: Pooja Harekoppa, Daniel Friedman. Explaining and Harnessing Adversarial Examples. Ian J. . Goodfellow. , Jonathon . Shlens. and Christian . Szegedy. Google Inc., Mountain View, CA. Highlights . for . edge detection. Z. Zeng Y.K. Yu, K.H. Wong. In . IEEE iciev2018, International Conference on Informatics, Electronics & Vision '. June,kitakyushu. exhibition center, japan, 25~29, 2018. (. DATAWorks. 2021 - . Test & Evaluation Methods for Emerging Technology and Domains. 04/16/21. Galen Mullins. Gautam . Vallabha. Aurora Schmidt. Sam Barham. Sean McDaniel. Eric . Naber. Tyler Young. Dr. Alex Vakanski. Lecture 6. GANs for Adversarial Machine Learning. Lecture Outline. Mohamed Hassan presentation. Introduction to Generative Adversarial Networks (GANs). Jeffrey Wyrick presentation. Presenter: Syed Sharjeelullah. Course: CS-732. Authors: Jefferson L. P. Lima. David Macedo. . Cleber. . Zanchettin. Dr. Alex Vakanski. Lecture 1. Introduction to Adversarial Machine Learning. . Lecture Outline. Machine Learning (ML). Adversarial ML (AML). Adversarial examples. Attack taxonomy. Common adversarial attacks. Siloing. William Lewis, Chris Wendt, David Bullock. Microsoft Research. Machine Translation. Domain Specific Engines. Typically: News, Govt., Travel (e.g., WMT workshops, etc.). Typically: do quite well on test data drawn from the same source/domain (e.g., .
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