Most jobs need reasoningโdrawing conclusions based on available dataโby a person or an automated system. This book’s framework of probabilistic graphical models provides a generic approach to this problem. The method is model-based, allowing for the creation of interpretable models that may then be changed by reasoning algorithms. These models can also be trained automatically from data, which means they can be utilised in situations when manually building a model is difficult or impossible. Because uncertainty is an unavoidable part of most real-world applications, the book focuses on probabilistic models, which make uncertainty explicit and enable more accurate models.
Probabilistic Graphical Models: Principles and Techniques Adaptive Computation and Machine Learning series 1st Edition
SKU:
Read082
The mit press
New
978-0262013192
by Daphne Koller
Hardcover
New
978-0262013192
by Daphne Koller
Hardcover
$109.00
10 in stock
10 in stock
Product details
Made possible by exploring innovative molded plywood techniques, Iskos-Berlinโs Soft Edge Chair blends strong curves with extreme lightness to create a three-dimensionality not usually possible with 2-D plywood.
Description
Customer Reviews
Rated 0 out of 5
0 reviews
Rated 5 out of 5
0
Rated 4 out of 5
0
Rated 3 out of 5
0
Rated 2 out of 5
0
Rated 1 out of 5
0
Be the first to review “Probabilistic Graphical Models: Principles and Techniques Adaptive Computation and Machine Learning series 1st Edition” Cancel reply
Reviews
Clear filtersThere are no reviews yet.