Understanding Expressivity and Trustworthy Aspects of Deep Generative Models

Understanding Expressivity and Trustworthy Aspects of Deep Generative Models PDF Author: Zhifeng Kong
Publisher:
ISBN:
Category :
Languages : en
Pages : 0

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Book Description
Deep Generative Models are a kind of unsupervised deep learning methods that learn the data distribution from samples and then generate unseen, high-quality samples from the learned distributions. These models have achieved tremendous success in different domains and tasks. However, many questions are not well-understood for these models. In order to better understand these models, in this thesis, we investigate the following questions: (i) what is the representation power of deep generative models, and (ii) how to identify and mitigate trustworthy concerns in deep generative models. We study the representation power of deep generative models by looking at which distributions they can approximate arbitrarily well. we study normalizing flows and rigorously establish bounds on their expressive power. Our results indicate that some basic flows are highly expressive in one dimension, but in higher dimensions their representation power may be limited, especially when the flows have moderate depth. We then prove residual flows are universal approximators in maximum mean discrepancy and provide upper bounds on the depths under different assumptions. We next investigate three different trustworthy concerns. The first is how to explain the black box neural networks in these models. We introduce VAE-TracIn, a computationally efficient and theoretically sound interpretability solution, for VAEs. We evaluate VAE-TracIn on real world datasets with extensive quantitative and qualitative analysis. The second is how to mitigate privacy issues in learned generative models. We propose a density-ratio-based framework for efficient approximate data deletion in generative models, which avoids expensive re-training. We provide theoretical guarantees under various learner assumptions and empirically demonstrate our methods across a variety of generative methods. The third is how to prevent undesirable outputs from deep generative models. We take a compute-friendly approach and investigate how to post-edit a pre-trained model to redact certain samples. We consider several unconditional and conditional generative models and various types of descriptions of redacted samples. Extensive evaluations on real-world datasets show our algorithms outperform baseline methods in redaction quality as well as robustness while retaining high generation quality.

Understanding Expressivity and Trustworthy Aspects of Deep Generative Models

Understanding Expressivity and Trustworthy Aspects of Deep Generative Models PDF Author: Zhifeng Kong
Publisher:
ISBN:
Category :
Languages : en
Pages : 0

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Book Description
Deep Generative Models are a kind of unsupervised deep learning methods that learn the data distribution from samples and then generate unseen, high-quality samples from the learned distributions. These models have achieved tremendous success in different domains and tasks. However, many questions are not well-understood for these models. In order to better understand these models, in this thesis, we investigate the following questions: (i) what is the representation power of deep generative models, and (ii) how to identify and mitigate trustworthy concerns in deep generative models. We study the representation power of deep generative models by looking at which distributions they can approximate arbitrarily well. we study normalizing flows and rigorously establish bounds on their expressive power. Our results indicate that some basic flows are highly expressive in one dimension, but in higher dimensions their representation power may be limited, especially when the flows have moderate depth. We then prove residual flows are universal approximators in maximum mean discrepancy and provide upper bounds on the depths under different assumptions. We next investigate three different trustworthy concerns. The first is how to explain the black box neural networks in these models. We introduce VAE-TracIn, a computationally efficient and theoretically sound interpretability solution, for VAEs. We evaluate VAE-TracIn on real world datasets with extensive quantitative and qualitative analysis. The second is how to mitigate privacy issues in learned generative models. We propose a density-ratio-based framework for efficient approximate data deletion in generative models, which avoids expensive re-training. We provide theoretical guarantees under various learner assumptions and empirically demonstrate our methods across a variety of generative methods. The third is how to prevent undesirable outputs from deep generative models. We take a compute-friendly approach and investigate how to post-edit a pre-trained model to redact certain samples. We consider several unconditional and conditional generative models and various types of descriptions of redacted samples. Extensive evaluations on real-world datasets show our algorithms outperform baseline methods in redaction quality as well as robustness while retaining high generation quality.

Stability and Expressiveness of Deep Generative Models

Stability and Expressiveness of Deep Generative Models PDF Author: Lars Morton Mescheder
Publisher:
ISBN:
Category :
Languages : en
Pages :

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Proceedings of the 9th International Conference on Advanced Intelligent Systems and Informatics 2023

Proceedings of the 9th International Conference on Advanced Intelligent Systems and Informatics 2023 PDF Author: AboulElla Hassanien
Publisher: Springer Nature
ISBN: 3031432479
Category : Technology & Engineering
Languages : en
Pages : 572

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Book Description
This proceedings book constitutes the refereed proceedings of the 9th International Conference on Advanced Intelligent Systems and Informatics (AISI 2023), which took place in Port Said University, Port Said, Egypt, during September 20–22, 2023, Egypt, and is an international interdisciplinary conference that presents a spectrum of scientific research on all aspects of informatics and intelligent systems, technologies, and applications.

Understanding Deep Learning

Understanding Deep Learning PDF Author: Simon J.D. Prince
Publisher: MIT Press
ISBN: 0262048647
Category : Computers
Languages : en
Pages : 544

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Book Description
An authoritative, accessible, and up-to-date treatment of deep learning that strikes a pragmatic middle ground between theory and practice. Deep learning is a fast-moving field with sweeping relevance in today’s increasingly digital world. Understanding Deep Learning provides an authoritative, accessible, and up-to-date treatment of the subject, covering all the key topics along with recent advances and cutting-edge concepts. Many deep learning texts are crowded with technical details that obscure fundamentals, but Simon Prince ruthlessly curates only the most important ideas to provide a high density of critical information in an intuitive and digestible form. From machine learning basics to advanced models, each concept is presented in lay terms and then detailed precisely in mathematical form and illustrated visually. The result is a lucid, self-contained textbook suitable for anyone with a basic background in applied mathematics. Up-to-date treatment of deep learning covers cutting-edge topics not found in existing texts, such as transformers and diffusion models Short, focused chapters progress in complexity, easing students into difficult concepts Pragmatic approach straddling theory and practice gives readers the level of detail required to implement naive versions of models Streamlined presentation separates critical ideas from background context and extraneous detail Minimal mathematical prerequisites, extensive illustrations, and practice problems make challenging material widely accessible Programming exercises offered in accompanying Python Notebooks

Applications of Generative AI

Applications of Generative AI PDF Author: Zhihan Lyu
Publisher: Springer Nature
ISBN: 3031462386
Category :
Languages : en
Pages : 607

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Book Description


Artificial Intelligence in Music, Sound, Art and Design

Artificial Intelligence in Music, Sound, Art and Design PDF Author: Juan Romero
Publisher: Springer Nature
ISBN: 3030729141
Category : Computers
Languages : en
Pages : 501

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Book Description
This book constitutes the refereed proceedings of the 10th European Conference on Artificial Intelligence in Music, Sound, Art and Design, EvoMUSART 2021, held as part of Evo* 2021, as Virtual Event, in April 2021, co-located with the Evo* 2021 events, EvoCOP, EvoApplications, and EuroGP. The 24 revised full papers and 7 short papers presented in this book were carefully reviewed and selected from 66 submissions. They cover a wide range of topics and application areas, including generative approaches to music and visual art, deep learning, and architecture.

Deep Learning

Deep Learning PDF Author: Ian Goodfellow
Publisher: MIT Press
ISBN: 0262337371
Category : Computers
Languages : en
Pages : 801

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Book Description
An introduction to a broad range of topics in deep learning, covering mathematical and conceptual background, deep learning techniques used in industry, and research perspectives. “Written by three experts in the field, Deep Learning is the only comprehensive book on the subject.” —Elon Musk, cochair of OpenAI; cofounder and CEO of Tesla and SpaceX Deep learning is a form of machine learning that enables computers to learn from experience and understand the world in terms of a hierarchy of concepts. Because the computer gathers knowledge from experience, there is no need for a human computer operator to formally specify all the knowledge that the computer needs. The hierarchy of concepts allows the computer to learn complicated concepts by building them out of simpler ones; a graph of these hierarchies would be many layers deep. This book introduces a broad range of topics in deep learning. The text offers mathematical and conceptual background, covering relevant concepts in linear algebra, probability theory and information theory, numerical computation, and machine learning. It describes deep learning techniques used by practitioners in industry, including deep feedforward networks, regularization, optimization algorithms, convolutional networks, sequence modeling, and practical methodology; and it surveys such applications as natural language processing, speech recognition, computer vision, online recommendation systems, bioinformatics, and videogames. Finally, the book offers research perspectives, covering such theoretical topics as linear factor models, autoencoders, representation learning, structured probabilistic models, Monte Carlo methods, the partition function, approximate inference, and deep generative models. Deep Learning can be used by undergraduate or graduate students planning careers in either industry or research, and by software engineers who want to begin using deep learning in their products or platforms. A website offers supplementary material for both readers and instructors.

Computer Vision – ACCV 2022

Computer Vision – ACCV 2022 PDF Author: Lei Wang
Publisher: Springer Nature
ISBN: 3031263162
Category : Computers
Languages : en
Pages : 781

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Book Description
The 7-volume set of LNCS 13841-13847 constitutes the proceedings of the 16th Asian Conference on Computer Vision, ACCV 2022, held in Macao, China, December 2022. The total of 277 contributions included in the proceedings set was carefully reviewed and selected from 836 submissions during two rounds of reviewing and improvement. The papers focus on the following topics: Part I: 3D computer vision; optimization methods; Part II: applications of computer vision, vision for X; computational photography, sensing, and display; Part III: low-level vision, image processing; Part IV: face and gesture; pose and action; video analysis and event recognition; vision and language; biometrics; Part V: recognition: feature detection, indexing, matching, and shape representation; datasets and performance analysis; Part VI: biomedical image analysis; deep learning for computer vision; Part VII: generative models for computer vision; segmentation and grouping; motion and tracking; document image analysis; big data, large scale methods.

Generative Adversarial Networks for Image-to-Image Translation

Generative Adversarial Networks for Image-to-Image Translation PDF Author: Arun Solanki
Publisher: Academic Press
ISBN: 0128236132
Category : Science
Languages : en
Pages : 446

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Book Description
Generative Adversarial Networks (GAN) have started a revolution in Deep Learning, and today GAN is one of the most researched topics in Artificial Intelligence. Generative Adversarial Networks for Image-to-Image Translation provides a comprehensive overview of the GAN (Generative Adversarial Network) concept starting from the original GAN network to various GAN-based systems such as Deep Convolutional GANs (DCGANs), Conditional GANs (cGANs), StackGAN, Wasserstein GANs (WGAN), cyclical GANs, and many more. The book also provides readers with detailed real-world applications and common projects built using the GAN system with respective Python code. A typical GAN system consists of two neural networks, i.e., generator and discriminator. Both of these networks contest with each other, similar to game theory. The generator is responsible for generating quality images that should resemble ground truth, and the discriminator is accountable for identifying whether the generated image is a real image or a fake image generated by the generator. Being one of the unsupervised learning-based architectures, GAN is a preferred method in cases where labeled data is not available. GAN can generate high-quality images, images of human faces developed from several sketches, convert images from one domain to another, enhance images, combine an image with the style of another image, change the appearance of a human face image to show the effects in the progression of aging, generate images from text, and many more applications. GAN is helpful in generating output very close to the output generated by humans in a fraction of second, and it can efficiently produce high-quality music, speech, and images. - Introduces the concept of Generative Adversarial Networks (GAN), including the basics of Generative Modelling, Deep Learning, Autoencoders, and advanced topics in GAN - Demonstrates GANs for a wide variety of applications, including image generation, Big Data and data analytics, cloud computing, digital transformation, E-Commerce, and Artistic Neural Networks - Includes a wide variety of biomedical and scientific applications, including unsupervised learning, natural language processing, pattern recognition, image and video processing, and disease diagnosis - Provides a robust set of methods that will help readers to appropriately and judiciously use the suitable GANs for their applications

Revolutionizing Healthcare Treatment With Sensor Technology

Revolutionizing Healthcare Treatment With Sensor Technology PDF Author: Das, Sima
Publisher: IGI Global
ISBN:
Category : Medical
Languages : en
Pages : 399

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Book Description
Traditional patient care and treatment approaches often lack the personalized and interactive elements necessary for effective healthcare delivery. This means that the healthcare industry must find innovative solutions to improve patient outcomes, enhance rehabilitation processes, and optimize resource utilization. There is a gap between the traditional approach and the need for innovation that highlights the importance of a comprehensive understanding of emerging technologies, including Kinect Sensor technology, and the potential to transform healthcare practices with this tech. Revolutionizing Healthcare Treatment With Sensor Technology addresses this critical need by thoroughly exploring how Kinect Sensor technology can revolutionize patient care and treatment methodologies. By repurposing and customizing Kinect Sensor for healthcare applications, this book showcases how depth-sensing cameras, infrared sensors, and advanced motion tracking can capture and interpret real-time patient movements and interactions. This book is ideal for healthcare professionals, hospital administrators, researchers, patients, caregivers, and healthcare technology developers seeking to leverage Kinect Sensor technology for enhanced healthcare delivery. Through detailed case studies and practical examples, experts can learn how to integrate Kinect Sensor into various medical settings to gain valuable insights into patients' physical capabilities, monitor their progress, and create personalized treatment plans.