The book is currently out of stock
Handling Data Problems in Machine Learning Applications in Supply Chain Management.
A Multiple-Case Study on the Analysis of Data Augmentation Approaches.. Dissertationsschrift
Authors
More about the book
Focusing on the intersection of data augmentation (DA) and machine learning (ML), this dissertation addresses challenges posed by poor data quality in ML applications. It explores various DA methods, aiming to clarify their benefits and obstacles in practical use. Through a multiple-case study, the research demonstrates how DA can enhance the performance and applicability of ML techniques, specifically within supply chain management, thereby contributing valuable insights to both fields.
Book purchase
Handling Data Problems in Machine Learning Applications in Supply Chain Management., Christian Menden
- Language
- Released
- 2022
We’ll notify you via email once we track it down.
Payment methods
- Title
- Handling Data Problems in Machine Learning Applications in Supply Chain Management.
- Subtitle
- A Multiple-Case Study on the Analysis of Data Augmentation Approaches.. Dissertationsschrift
- Language
- English
- Authors
- Christian Menden
- Publisher
- Fraunhofer Verlag
- Released
- 2022
- Format
- Paperback
- Pages
- 365
- ISBN13
- 9783839617861
- Category
- Transport, Mathematics
- Description
- Focusing on the intersection of data augmentation (DA) and machine learning (ML), this dissertation addresses challenges posed by poor data quality in ML applications. It explores various DA methods, aiming to clarify their benefits and obstacles in practical use. Through a multiple-case study, the research demonstrates how DA can enhance the performance and applicability of ML techniques, specifically within supply chain management, thereby contributing valuable insights to both fields.