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Apache Mahout is a new Lucene TLP project to create scalable, machine learning algorithms under the Apache license. For more information on the project goals please see the original proposal
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This section contains links to information, examples, use cases, etc. for the various algorithms we intend to implement. Click the individual links to learn more. The initial algorithms descriptions have been copied here from the original project proposal. The algorithms are grouped by the application setting, they can be used for. In case of multiple applications, the version presented in the paper was chosen, versions as implemented in our project will be added as soon as we are working on them.
Original Paper: Map Reduce for Machine Learning on Multicore![]()
Papers related to Map Reduce:
Papers, videos and books related to machine learning in general:
All algorithms are either marked as integrated, that is the implementation is integrated into the development version of Mahout. Algorithms that are currently being developed are annotated with a link to the JIRA issue that deals with the specific implementation. Usually these issues already contain patches that are more or less major, depending on how much work was spent on the issue so far. Algorithms that have so far not been touched are marked as open.
A general introduction to the most common text classification algorithms can be found at Google Answers: http://answers.google.com/answers/main?cmd=threadview&id=225316
For information on the algorithms implemented in Mahout (or scheduled for implementation) please visit the following pages.
Logistic Regression (open, GSoC project)
Complementary Naive Bayes
(MAHOUT-60
)
Support Vector Machines (SVM) (open: MAHOUT-14
)
Neural Network (open)
Canopy Clustering (integrated)
k-Means (integrated)
Expectation Maximization (EM) (MAHOUT-28
)
Hierarchical Clustering
(MAHOUT-19
)
Dirichlet Process Clustering
(MAHOUT-30
)
Locally Weighted Linear Regression (open)
Principal Components Analysis (PCA) (open)
Independent Component Analysis (open)
Gaussian Discriminative Analysis (GDA) (open)
see also: MAHOUT-56![]()
You will find here information, examples, use cases, etc. related to Evolutionary Algorithms.
Introductions and Tutorials:
Some algorithms and applications appeared on the mailing list, that have not been published in map reduce form so far. As we do not restrict ourselves to hadoop-only versions, these proposals are listed here.
Hidden Markov Models
(HMM) (open)
Recommendation Learning
(integrated)
Project inspiration and formulation can be found at http://ml-site.grantingersoll.com![]()
Apache Machine Status
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