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Provides a complete and concise overview of deep learning using the language of mathematics. Provides a self-contained background on machine learning and optimization algorithms, and progresses through the key ideas of deep learning.
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Provides a complete and concise overview of deep learning using the language of mathematics. Provides a self-contained background on machine learning and optimization algorithms, and progresses through the key ideas of deep learning.
Hinweis: Dieser Artikel kann nur an eine deutsche Lieferadresse ausgeliefert werden.
Hinweis: Dieser Artikel kann nur an eine deutsche Lieferadresse ausgeliefert werden.
Produktdetails
- Produktdetails
- Chapman & Hall/CRC Data Science Series
- Verlag: Taylor & Francis Ltd
- Seitenzahl: 402
- Erscheinungstermin: 3. Oktober 2024
- Englisch
- Abmessung: 178mm x 253mm x 21mm
- Gewicht: 868g
- ISBN-13: 9781032288284
- ISBN-10: 1032288280
- Artikelnr.: 70239590
- Chapman & Hall/CRC Data Science Series
- Verlag: Taylor & Francis Ltd
- Seitenzahl: 402
- Erscheinungstermin: 3. Oktober 2024
- Englisch
- Abmessung: 178mm x 253mm x 21mm
- Gewicht: 868g
- ISBN-13: 9781032288284
- ISBN-10: 1032288280
- Artikelnr.: 70239590
Dr. Benoit Liquet is a Professor of Mathematical and Computational Statistics at Macquarie University currently on detachment from his professor position at Université de Pau et Pays de l'Adour (France). He also holds an adjunct position at The University of Queensland. His research spans the broad spectrum of applied statistics, with a focus on statistical modeling for complex data. He has made significant contributions to methodological developments, exploiting modern statistical and computational cutting-edge methods to tackle a variety of real-world problems from small, designed studies to large-scale high-dimensional data challenges in bioinformatics and biometrics. His research extends to the development of R packages and industrial applications, particularly in the realm of machine learning. Over the years, he has authored numerous articles, book chapters, and books, including the co-authored book "The R Software, Fundamentals of Programming and Statistical Analysis". He has also co-authored books on dynamical biostatistical models and developed over a dozen R packages, making his methodologies accessible to a wide range of users. He is deeply committed to education and has taught advanced courses in statistics and machine learning at multiple institutions around the globe. Such educational activities reflect his dedication to bridging the gap between theoretical advancements and practical applications. Dr. Sarat Moka is an academic researcher and educator at the School of Mathematics and Statistics at The University of New South Wales (UNSW). His research interests encompass applied probability, computational statistics, machine learning, and deep learning. Dr. Moka has made contributions to optimization methods for efficient model selection in high-dimensional settings. Additionally, he has developed fast unbiased sampling and estimation techniques for spatial point processes and random graphs. Moreover, his research focus extends to efficient pruning methods for deep neural networks. In addition to research, he has been actively teaching advanced statistical and deep learning courses. Prior to joining UNSW in 2023, he was a senior research fellow at the School of Mathematical and Physical Science at Macquarie University and held an ACEMS (ARC Centre of Excellence for Mathematical & Statistical Frontiers) postdoctoral researcher position in the School of Mathematics and Physics at The University of Queensland. He earned a PhD in Applied Probability from the School of Technology and Computer Science at Tata Institute of Fundamental Research, and a Master's and a Bachelor's in Engineering with a focus on electrical, electronics, and communications, at the Indian Institute of Science and Andhra University, respectively. Before pursuing his doctoral studies, he was a scientist at the Indian Space Research Organization (SHAR, Sriharikota), where he worked on Communication Networks that support rocket launch activities. Dr. Yoni Nazarathy is an Associate Professor at the School of Mathematics and Physics at The University of Queensland (UQ). He is also a consultant and co-director of a machine learning consultancy, Accumulation Point. His research spans applied probability, statistics, and machine learning and his industry work includes biostatistical software development, data science training for industry, and large language models. In addition to his many refereed publications in the mathematical sciences, he is a co-author of the book "Statistics with Julia". Prior to his PhD in the field of queueing theory at the University of Haifa, Israel, he worked as a software engineer, algorithm developer, and team leader in the Israeli tech industry. He then followed with post doc positions in The Netherlands, and academic positions in Melbourne, Australia, before settling at UQ where he has been for over a decade. He is also an avid educator and has taught and created academic and professional courses across the spectrum. He has also contributed to mathematical education via software apps and engagement with pre-university level educators.
1. Introduction. 2. Principles of Machine Learning. 3. Simple Neural
Networks. 4. Optimization Algorithms. 5. Feedforward Deep Networks. 6.
Convolutional Neural Networks. 7. Sequence Models. 8. Specialized
Architectures and Paradigms.
Networks. 4. Optimization Algorithms. 5. Feedforward Deep Networks. 6.
Convolutional Neural Networks. 7. Sequence Models. 8. Specialized
Architectures and Paradigms.
1. Introduction. 2. Principles of Machine Learning. 3. Simple Neural
Networks. 4. Optimization Algorithms. 5. Feedforward Deep Networks. 6.
Convolutional Neural Networks. 7. Sequence Models. 8. Specialized
Architectures and Paradigms.
Networks. 4. Optimization Algorithms. 5. Feedforward Deep Networks. 6.
Convolutional Neural Networks. 7. Sequence Models. 8. Specialized
Architectures and Paradigms.