Browse
Publications
Preprints
About
About UCL Open: Env.
Aims and Scope
Editorial Board
Indexing
APCs
How to cite
Publishing policies
Editorial policy
Peer review policy
Equality, Diversity & Inclusion
About UCL Press
Contact us
For authors
Information for authors
How it works
Benefits of publishing with us
Submit
How to submit
Preparing your manuscript
Article types
Open Data
ORCID
APCs
Contributor agreement
For reviewers
Information for reviewers
Review process
How to peer review
Peer review policy
My ScienceOpen
Sign in
Register
Dashboard
Search
Browse
Publications
Preprints
About
About UCL Open: Env.
Aims and Scope
Editorial Board
Indexing
APCs
How to cite
Publishing policies
Editorial policy
Peer review policy
Equality, Diversity & Inclusion
About UCL Press
Contact us
For authors
Information for authors
How it works
Benefits of publishing with us
Submit
How to submit
Preparing your manuscript
Article types
Open Data
ORCID
APCs
Contributor agreement
For reviewers
Information for reviewers
Review process
How to peer review
Peer review policy
My ScienceOpen
Sign in
Register
Dashboard
Search
44
views
0
references
Top references
cited by
0
Cite as...
0 reviews
Review
0
comments
Comment
0
recommends
+1
Recommend
0
collections
Add to
0
shares
Share
Twitter
Sina Weibo
Facebook
Email
3,772
similar
All similar
Record
: found
Abstract
: not found
Book
: not found
Machine Learning Proceedings 1994
edited_book
Publication date
(Print):
1994
Publisher:
Elsevier
Read this book at
Review
Review book
Invite someone to review
Bookmark
Cite as...
There is no author summary for this book yet. Authors can add summaries to their books on ScienceOpen to make them more accessible to a non-specialist audience.
Related collections
Annual Reviews AI, Machine Learning, and Society
Author and book information
Book
ISBN (Print):
9781558603356
Publication date (Print):
1994
SO-VID:
ba12134f-80da-4c4d-99d7-d7be2a758881
History
Data availability:
Comments
Comment on this book
Sign in to comment
Book chapters
pp. 19
Improving Accuracy of Incorrect Domain Theories
pp. 28
Greedy Attribute Selection
pp. 37
Using Sampling and Queries to Extract Rules from Trained Neural Networks
pp. 53
Boosting and Other Machine Learning Algorithms
pp. 62
In Defense of C4.5: Notes on Learning One-Level Decision Trees
pp. 70
Incremental Reduced Error Pruning
pp. 105
Consideration of Risk in Reinforcement Learning
pp. 121
Irrelevant Features and the Subset Selection Problem
pp. 148
Heterogeneous Uncertainty Sampling for Supervised Learning
pp. 157
Markov games as a framework for multi-agent reinforcement learning
pp. 181
Reward Functions for Accelerated Learning
pp. 190
Efficient Algorithms for Minimizing Cross Validation Error
pp. 217
Reducing Misclassification Costs
pp. 226
Incremental Multi-Step Q-Learning
pp. 259
A Conservation Law for Generalization Performance
pp. 284
Learning Without State-Estimation in Partially Observable Markovian Decision Processes
pp. 293
Prototype and Feature Selection by Sampling and Random Mutation Hill Climbing Algorithms
Similar content
3,772
Die PDS nach dem Super-Wahljahr 1994. Konrad-Adenauer-Stiftung, Interne Studien Nr
Authors:
J. LANG
Acuerdo por el que se modifica el numeral 5.4 de la Norma Oficial Mexicana NOM-081-SEMARNAT-1994, Que establece los límites máximos permisibles de emisión de ruido de las fuentes fijas y su método de medición
Authors:
Die Außenpolitik der Bundesrepublik Deutschland: Dokumente von 1949–1994
Authors:
See all similar