From Synapses to Rules : Discovering Symbolic Rules from Neural Processed Data /
The book aims to propose a theoretical and applicatory framework for extracting formal rules from data. To this end recent approaches in relevant disciplines are examined that bring together two typical goals of conventional Artificial Intelligence and connectionism - respectively, deducing within a...
| Main Author: | Apolloni, Bruno, 1946- |
|---|---|
| Corporate Author: | SpringerLink (Online service) |
| Other Authors: | Kurfess, Franz |
| Format: | eBook |
| Language: | English |
| Published: |
Boston, MA :
Springer US : Imprint : Springer,
2002.
|
| Subjects: | |
| Online Access: | Connect to the full text of this electronic book |
Similar Items
Machine learning : from theory to applications : cooperative research at Siemens and MIT /
Published: (1993)
Published: (1993)
From synapses to rules : discovering symbolic rules from neural processed data /
Published: (2002)
Published: (2002)
Deep learning : a visual approach /
by: Glassner, Andrew S.
Published: (2021)
by: Glassner, Andrew S.
Published: (2021)
Deep learning en action
by: Gibson, Adam
Published: (2018)
by: Gibson, Adam
Published: (2018)
Deep learning shen du xue xi ji chu : she ji xia yi dai ren gong zhi hui yan suan fa = Fundamentals of deep learning : designing next-generation machine intelligence algorithms /
by: Buduma, Nikhil
Published: (2018)
by: Buduma, Nikhil
Published: (2018)
Playing with GANs : building, coding, and modifying deep learning GAN models.
Published: (2021)
Published: (2021)
How smart machines think /
by: Gerrish, Sean
Published: (2018)
by: Gerrish, Sean
Published: (2018)
Hands-on deep learning with TensorFlow /
Published: (2018)
Published: (2018)
Hybrid data science (HDS) : modeling approaches for industrial and scientific applications /
by: Madasu, Srinath, et al.
Published: (2022)
by: Madasu, Srinath, et al.
Published: (2022)
Machine learning with neural networks : an introduction for scientists and engineers /
by: Mehlig, Bernhard, 1964-
Published: (2021)
by: Mehlig, Bernhard, 1964-
Published: (2021)
Python ji shu ji chu shi pin jiao cheng /
by: Deitel, Paul J.
Published: (2019)
by: Deitel, Paul J.
Published: (2019)
Advances in artificial intelligence : 14th Biennial Conference of the Canadian Society for Computational Studies of Intelligence, AI 2001, Ottawa, Canada, June 7-9, 2001 : proceedings /
Published: (2001)
Published: (2001)
Advances in artificial intelligence : 13th Biennial Conference of the Canadian Society for Computational Studies of Intelligence, AI 2000, Montréal, Québec, Canada, May 14-17, 2000 : proceedings /
Published: (2000)
Published: (2000)
Cellular Automata and Cooperative Systems /
by: Boccara, Nino
Published: (1993)
by: Boccara, Nino
Published: (1993)
Assimilate OpenAI.
Published: (2022)
Published: (2022)
Deep learning with TensorFlow and Keras /
by: Kapoor, Amita, et al.
Published: (2022)
by: Kapoor, Amita, et al.
Published: (2022)
Artificial neural networks-ICANN 2002 : international conference, Madrid, Spain, August 28-30, 2002 : proceedings /
Published: (2002)
Published: (2002)
Hybrid neural systems /
Published: (2000)
Published: (2000)
Getting started with neural nets in R /
Published: (2018)
Published: (2018)
TensorFlow shen du xue xi ke cheng : shen du shen jing wang luo zai ji qi xue ren wu de ying yong.
Published: (2017)
Published: (2017)
Python shen du xue xi ru men : cong ling gou jian CNN he RNN = Deep learning from scratch /
by: Weidman, Seth
Published: (2021)
by: Weidman, Seth
Published: (2021)
Deep learning and neural networks in PyTorch for beginners /
Published: (2018)
Published: (2018)
Advances in artificial intelligence : 12th Biennial Conference of the Canadian Society for Computational Studies of Intelligence, AI'98 Vancouver, BC, Canada, June 18-20, 1998 : proceedings /
Published: (1998)
Published: (1998)
Artificial neural networks : learning algorithms, performance evaluation, and applications /
by: Karayiannis, N. B. (Nicolaos B.), 1960-
Published: (2011)
by: Karayiannis, N. B. (Nicolaos B.), 1960-
Published: (2011)
Deep learning projects with PyTorch /
Published: (2018)
Published: (2018)
TensorFlow 1.x deep learning recipes for artificial intelligence applications /
Published: (2018)
Published: (2018)
SN Video coding and web development.
Published: (2020)
Published: (2020)
Radar talks : Justin Norman on building ML/AI products.
Published: (2021)
Published: (2021)
Principles and labs for deep learning /
by: Huang, Shih-Chia
Published: (2021)
by: Huang, Shih-Chia
Published: (2021)
Troubleshooting Python deep learning /
Published: (2019)
Published: (2019)
Applying the idiomatic design pattern to convolutional neural networks /
Published: (2020)
Published: (2020)
Applied Recommender Systems with Python : Build Recommender Systems with Deep Learning, NLP and Graph-Based Techniques /
by: Kulkarni, Akshay, et al.
Published: (2023)
by: Kulkarni, Akshay, et al.
Published: (2023)
Deep learning with R /
by: Chollet, François, et al.
Published: (2022)
by: Chollet, François, et al.
Published: (2022)
AI '92 : proceedings of the 5th Australian Joint Conference on Artificial Intelligence : Hobart, Tasmania, 16-18 November 1992 /
Published: (1992)
Published: (1992)
PyTorch recipes : A Problem-Solution Approach to Build, Train and Deploy Neural Network Models /
by: Mishra, Pradeepta
Published: (2022)
by: Mishra, Pradeepta
Published: (2022)
An introduction to computational learning theory /
by: Kearns, Michael J.
Published: (1994)
by: Kearns, Michael J.
Published: (1994)
Trends in deep learning methodologies : algorithms, applications, and systems /
Published: (2021)
Published: (2021)
Artificial neural networks : ICANN 2005 : 15th international conference, Warsaw, Poland, September 11-15, 2005 : proceedings /
Published: (2005)
Published: (2005)
Explanation-based neural network learning : a lifelong learning approach /
by: Thrun, Sebastian, 1967-
Published: (1996)
by: Thrun, Sebastian, 1967-
Published: (1996)
Gradient expectations : structure, origins, and synthesis of predictive neural networks /
by: Downing, Keith L.
Published: (2023)
by: Downing, Keith L.
Published: (2023)