Discriminative AI Impact in Healthcare by Claude Louis-Charles, Matthew Wilson, Kyasia Morgan
English | January 31, 2025 | ISBN: N/A | ASIN: B0DVMW37XB | 104 pages | EPUB | 5.47 Mb
English | January 31, 2025 | ISBN: N/A | ASIN: B0DVMW37XB | 104 pages | EPUB | 5.47 Mb
Discriminative Al is a group of specialized Als focusing on learning and distinguishing boundaries among classes in a dataset. This type of Al has shown significant application in fields such as speech recognition. While it has shown numerous benefits in various spheres, it has also introduced various challenges, like data privacy concerns. This book examines the advantages, drawbacks, and ways discriminative Al has transformed various sectors. A literature search was used to identify and retrieve information from various sources, including scholarly articles, books, and technical publications on discriminative Al. Consequently, the book discovered algorithms such as SVM, KNN, Naïve Bayes, Decision Trees, and Logistic Regression as a basis of discriminative Al. The book contrasts discriminative and generative Al. It notes that although these technologies use pre-trained data similarly, they differ in processing capacity, essential jobs, main algorithms, and practical uses. It also discloses that discriminative Al is efficient, accurate, adaptable, and interoperable. It finally acknowledges several limitations of discriminative Al/such as unfairness and bias, limited generalization, data dependency, and overfitting. This book also provides useful case studies on Discriminative Al Healthcare.