Project details for AMIDST Toolbox

Screenshot AMIDST Toolbox 0.4.0

by ana - April 8, 2016, 10:28:41 CET [ Project Homepage BibTeX BibTeX for corresponding Paper ]

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The AMIDST toolbox offers a collection of scalable and parallel algorithms for inference and learning of hybrid static and dynamic Bayesian networks from streaming data.

For instance, AMIDST provides parallel multi-core implementations of Bayesian parameter learning algorithms, using variational message passing based algorithms. Inference can be effectively carried out with parallel Monte Carlo techniques. Additionally, AMIDST efficiently leverages existing functionalities and algorithms by interfacing to software tools such as Weka, Moa, HUGIN and R.

Example of well-known supported models:

  • Static models: Naive Bayes, TAN, AODE, Gaussian Discriminant Analysis, Latent Classification Models, Gaussian Mixtures, Bayesian Linear Regression, Factor analysis, Mixture of Factor Analysis, ...

  • Dynamic models: Dynamic Naive Bayes, Dynamic Latent Classification Models, Hidden Markov Model (HMM), Kalman Filter (KF), Switching KF, Factorial HMM, Auto-regressive HMM, Input-Output HMM, ...

Changes to previous version:

Initial Announcement on

BibTeX Entry: Download
Corresponding Paper BibTeX Entry: Download
Supported Operating Systems: Platform Independent
Data Formats: Arff
Tags: Approximate Inference, Bayesian Networks, Data Streams, Multi Core, Bayesian Learning, Hidden Markov Models, Importance Sampling, Maximum Likelihood, Parallelisation, Varational Message Passing, Kalma


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