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Jiang / Song / Zhang

Probabilistic Topic Models

Foundation and Application

Medium: Buch
ISBN: 978-981-99-2433-2
Verlag: Springer Nature Singapore
Erscheinungstermin: 09.06.2024
Lieferfrist: bis zu 10 Tage

This book introduces readers to the theoretical foundation and application of topic models. It provides readers with efficient means to learn about the technical principles underlying topic models. More concretely, it covers topics such as fundamental concepts, topic model structures, approximate inference algorithms, and a range of methods used to create high-quality topic models. In addition, this book illustrates the applications of topic models applied in real-world scenarios. Readers will be instructed on the means to select and apply suitable models for specific real-world tasks, providing this book with greater use for the industry. Finally, the book presents a catalog of the most important topic models from the literature over the past decades, which can be referenced and indexed by researchers and engineers in related fields. We hope this book can bridge the gap between academic research and industrial application and help topic models play an increasingly effective role inboth academia and industry.

This book offers a valuable reference guide for senior undergraduate students, graduate students, and researchers, covering the latest advances in topic models, and for industrial practitioners, sharing state-of-the-art solutions for topic-related applications. The book can also serve as a reference for job seekers preparing for interviews.



Produkteigenschaften


  • Artikelnummer: 9789819924332
  • Medium: Buch
  • ISBN: 978-981-99-2433-2
  • Verlag: Springer Nature Singapore
  • Erscheinungstermin: 09.06.2024
  • Sprache(n): Englisch
  • Auflage: 2023
  • Produktform: Kartoniert
  • Gewicht: 254 g
  • Seiten: 149
  • Format (B x H x T): 155 x 235 x 9 mm
  • Ausgabetyp: Kein, Unbekannt
Autoren/Hrsg.

Autoren

Chapter 1. Basics.- Chapter 2. Topic Models.- 3. Chapter 3. Pre-processing of Training Data.- Chapter 4. Expectation Maximization.- Chapter 5. Markov Chain Monte Carlo Sampling.- Chapter 6. Variational Inference.- Chapter 7. Distributed Training.- Chapter 8. Parameter Setting.- Chapter 9. Topic Deduplication and Model Compression.- Chapter 10. Applications.