Download rng JAR file with all dependencies
rng from group de.cit-ec.ml (version 1.0.0)
This is an implementation of the Neural Gas algorithm on
distance data (Relational Neural Gas) for unsupervised clustering.
We recommend that you use the functions provided by the RelationalNeuralGas
class for your purposes. All other classes and functions are utilities which
are used by this central class. In particular, you can use RelationalNeuralGas.train()
to obtain a RNGModel (i.e. a clustering of your data), and subsequently
you can use RelationalNeuralGas.getAssignments() to obtain the resulting
cluster assignments, and RelationalNeuralGas.classify() to cluster new points
which are not part of the training data set.
The underlying scientific work is summarized nicely in the dissertation
"Topographic Mapping of Dissimilarity Datasets" by Alexander Hasenfuss
(2009).
The basic properties of an Relational Neural Gas algorithm are the following:
1.) It is relational: The data is represented only in terms of a pairwise
distance matrix.
2.) It is a clustering method: The algorithm provides a clustering model,
that is: After calculation,
each data point should be assigned to a cluster (for this package here we
only consider hard clustering, that is: each data point is assigned to
exactly one cluster).
3.) It is a vector quantization method: Each cluster corresponds to a
prototype, which is in the center of the
cluster and data points are assigned to the cluster if and only if they are
closest to this particular prototype.
4.) It is rank-based: The updates of the prototypes depend only on
the distance ranking, not on the absolute value of the distances.
Artifact rng
Group de.cit-ec.ml
Version 1.0.0
Last update 26. January 2018
Tags: they 2009 dissimilarity prototypes terms package particular neural topographic used prototype distances after calculation center classify exactly rank subsequently basic represented unsupervised utilities value closest only train underlying points central relationalneuralgas work getassignments here class properties assignments quantization that obtain dissertation each ranking this model rngmodel other pairwise datasets data purposes mapping recommend resulting algorithm corresponds training absolute distance following consider vector nicely hard clustering classes functions updates depend your matrix assigned provides alexander should hasenfuss point which implementation summarized scientific relational cluster provided method part based
Organization not specified
URL https://gitlab.ub.uni-bielefeld.de/bpaassen/relational_neural_gas
License The GNU General Public License, Version 3
Dependencies amount 0
Dependencies No dependencies
There are maybe transitive dependencies!
Group de.cit-ec.ml
Version 1.0.0
Last update 26. January 2018
Tags: they 2009 dissimilarity prototypes terms package particular neural topographic used prototype distances after calculation center classify exactly rank subsequently basic represented unsupervised utilities value closest only train underlying points central relationalneuralgas work getassignments here class properties assignments quantization that obtain dissertation each ranking this model rngmodel other pairwise datasets data purposes mapping recommend resulting algorithm corresponds training absolute distance following consider vector nicely hard clustering classes functions updates depend your matrix assigned provides alexander should hasenfuss point which implementation summarized scientific relational cluster provided method part based
Organization not specified
URL https://gitlab.ub.uni-bielefeld.de/bpaassen/relational_neural_gas
License The GNU General Public License, Version 3
Dependencies amount 0
Dependencies No dependencies
There are maybe transitive dependencies!
Page 1 from 1 (items total 1)