Buchdetails
Beschreibung
The authors explore innovative techniques and methodologies that address data imperfections and the complexities of reliable labelling practices. By combining theoretical frameworks with practical applications, they aim to enhance the quality of data used in machine learning and artificial intelligence, pushing the envelope of what's possible.
Readers will find a wealth of knowledge, from foundational concepts to the exploration of real-world implications. This volume serves not only as a valuable resource for researchers and practitioners but also as an invitation to reflect on the future of data science in the realm of medical imaging.