For graduate-/research- level students and professors, this book integrates machine learning with knowledge acquisition to overcome the problems of building models for knowledge-based systems to maintain them successfully. It also reports on BLIP and MOBAL systems developed over the last decade, which illustrate a particular way of unifying knowledge acquisition and machine learning. Practically-orientated, theoretical skills have been used and tested in real-world applications. Integrates machine learning with knowledge acquisition to overcome the problems of building models for knowledge based systems to maintain them successfully Reports on BLIP and MOBAL systems that have been developed over the past 10 years, which illustrate a particular way of unifying knowledge acquisition and machine learning Practically oriented–theoretical results have been used and tested in real-world applications from the start
Knowledge Acquisition and Machine Learning: Theory, Methods, and Applications (Knowledge-Based Systems)
$83.96
This book provides graduate-level instruction on integrating machine learning with knowledge acquisition for building knowledge-based systems.
Additional information
Weight | 0.6 lbs |
---|---|
Dimensions | 15.9 × 1.9 × 24.1 in |
Reviews
There are no reviews yet.