A self-organizing map (SOM) or self-organizing feature map (SOFM) is an
unsupervised
''Unsupervised'' is an American adult animated sitcom created by David Hornsby, Rob Rosell, and Scott Marder which ran on FX from January 19 to December 20, 2012. The show was created, and for the most part, written by David Hornsby, Scott Marder ...
machine learning
Machine learning (ML) is a field of inquiry devoted to understanding and building methods that 'learn', that is, methods that leverage data to improve performance on some set of tasks. It is seen as a part of artificial intelligence.
Machine ...
technique used to produce a
low-dimensional (typically two-dimensional) representation of a higher dimensional data set while preserving the
topological structure of the data. For example, a data set with
variables measured in
observations could be represented as clusters of observations with similar values for the variables. These clusters then could be visualized as a two-dimensional "map" such that observations in proximal clusters have more similar values than observations in distal clusters. This can make high-dimensional data easier to visualize and analyze.
An SOM is a type of
artificial neural network
Artificial neural networks (ANNs), usually simply called neural networks (NNs) or neural nets, are computing systems inspired by the biological neural networks that constitute animal brains.
An ANN is based on a collection of connected unit ...
but is trained using
competitive learning Competitive learning is a form of unsupervised learning in artificial neural networks, in which nodes compete for the right to respond to a subset of the input data. A variant of Hebbian learning, competitive learning works by increasing the specia ...
rather than the error-correction learning (e.g.,
backpropagation with
gradient descent) used by other artificial neural networks. The SOM was introduced by the
Finnish professor
Teuvo Kohonen in the 1980s and therefore is sometimes called a Kohonen map or Kohonen network.
The Kohonen map or network is a computationally convenient abstraction building on biological models of neural systems from the 1970s and
morphogenesis models dating back to
Alan Turing
Alan Mathison Turing (; 23 June 1912 – 7 June 1954) was an English mathematician, computer scientist, logician, cryptanalyst, philosopher, and theoretical biologist. Turing was highly influential in the development of theoretical com ...
in the 1950s.
Overview
Self-organizing maps, like most artificial neural networks, operate in two modes: training and mapping. First, training uses an input data set (the "input space") to generate a lower-dimensional representation of the input data (the "map space"). Second, mapping classifies additional input data using the generated map.
In most cases, the goal of training is to represent an input space with ''p'' dimensions as a map space with two dimensions. Specifically, an input space with ''p'' variables is said to have ''p'' dimensions. A map space consists of components called "nodes" or "neurons," which are arranged as a
hexagonal
In geometry, a hexagon (from Greek , , meaning "six", and , , meaning "corner, angle") is a six-sided polygon. The total of the internal angles of any simple (non-self-intersecting) hexagon is 720°.
Regular hexagon
A '' regular hexagon'' has ...
or
rectangular grid with two dimensions. The number of nodes and their arrangement are specified beforehand based on the larger goals of the analysis and
exploration of the data.
Each node in the map space is associated with a "weight" vector, which is the position of the node in the input space. While nodes in the map space stay fixed, training consists in moving weight vectors toward the input data (reducing a distance metric such as
Euclidean distance
In mathematics, the Euclidean distance between two points in Euclidean space is the length of a line segment between the two points.
It can be calculated from the Cartesian coordinates of the points using the Pythagorean theorem, therefor ...
) without spoiling the topology induced from the map space. After training, the map can be used to classify additional observations for the input space by finding the node with the closest weight vector (smallest distance metric) to the input space vector.
Learning algorithm
The goal of learning in the self-organizing map is to cause different parts of the network to respond similarly to certain input patterns. This is partly motivated by how visual, auditory or other
sensory
Sensory may refer to:
Biology
* Sensory ecology, how organisms obtain information about their environment
* Sensory neuron, nerve cell responsible for transmitting information about external stimuli
* Sensory perception, the process of acquiri ...
information is handled in separate parts of the
cerebral cortex
The cerebral cortex, also known as the cerebral mantle, is the outer layer of neural tissue of the cerebrum of the brain in humans and other mammals. The cerebral cortex mostly consists of the six-layered neocortex, with just 10% consisting of ...
in the
human brain
The human brain is the central organ of the human nervous system, and with the spinal cord makes up the central nervous system. The brain consists of the cerebrum, the brainstem and the cerebellum. It controls most of the activities of the ...
.
The weights of the neurons are initialized either to small random values or sampled evenly from the subspace spanned by the two largest
principal component eigenvectors. With the latter alternative, learning is much faster because the initial weights already give a good approximation of SOM weights.
The network must be fed a large number of example vectors that represent, as close as possible, the kinds of vectors expected during mapping. The examples are usually administered several times as iterations.
The training utilizes
competitive learning Competitive learning is a form of unsupervised learning in artificial neural networks, in which nodes compete for the right to respond to a subset of the input data. A variant of Hebbian learning, competitive learning works by increasing the specia ...
. When a training example is fed to the network, its
Euclidean distance
In mathematics, the Euclidean distance between two points in Euclidean space is the length of a line segment between the two points.
It can be calculated from the Cartesian coordinates of the points using the Pythagorean theorem, therefor ...
to all weight vectors is computed. The neuron whose weight vector is most similar to the input is called the best matching unit (BMU). The weights of the BMU and neurons close to it in the SOM grid are adjusted towards the input vector. The magnitude of the change decreases with time and with the grid-distance from the BMU. The update formula for a neuron v with weight vector W
v(s) is
:
,
where ''s'' is the step index, ''t'' is an index into the training sample, ''u'' is the index of the BMU for the input vector D(''t''), ''α''(''s'') is a
monotonically decreasing learning coefficient; ''θ''(''u'', ''v'', ''s'') is the neighborhood function which gives the distance between the neuron u and the neuron ''v'' in step ''s''.
Depending on the implementations, t can scan the training data set systematically (''t'' is 0, 1, 2...''T''-1, then repeat, ''T'' being the training sample's size), be randomly drawn from the data set (
bootstrap sampling), or implement some other sampling method (such as
jackknifing).
The neighborhood function ''θ''(''u'', ''v'', ''s'') (also called ''function of lateral interaction'') depends on the grid-distance between the BMU (neuron ''u'') and neuron ''v''. In the simplest form, it is 1 for all neurons close enough to BMU and 0 for others, but the
Gaussian
Carl Friedrich Gauss (1777–1855) is the eponym of all of the topics listed below.
There are over 100 topics all named after this German mathematician and scientist, all in the fields of mathematics, physics, and astronomy. The English eponymo ...
and
mexican-hat functions are common choices, too. Regardless of the functional form, the neighborhood function shrinks with time.
At the beginning when the neighborhood is broad, the self-organizing takes place on the global scale. When the neighborhood has shrunk to just a couple of neurons, the weights are converging to local estimates. In some implementations, the learning coefficient ''α'' and the neighborhood function ''θ'' decrease steadily with increasing ''s'', in others (in particular those where ''t'' scans the training data set) they decrease in step-wise fashion, once every ''T'' steps.
This process is repeated for each input vector for a (usually large) number of cycles λ. The network winds up associating output nodes with groups or patterns in the input data set. If these patterns can be named, the names can be attached to the associated nodes in the trained net.
During mapping, there will be one single ''winning'' neuron: the neuron whose weight vector lies closest to the input vector. This can be simply determined by calculating the Euclidean distance between input vector and weight vector.
While representing input data as vectors has been emphasized in this article, any kind of object which can be represented digitally, which has an appropriate distance measure associated with it, and in which the necessary operations for training are possible can be used to construct a self-organizing map. This includes matrices, continuous functions or even other self-organizing maps.
Variables
These are the variables needed, with vectors in bold,
*
is the current iteration
*
is the iteration limit
*
is the index of the target input data vector in the input data set
*
is a target input data vector
*
is the index of the node in the map
*
is the current weight vector of node
*
is the index of the best matching unit (BMU) in the map
*
is a restraint due to distance from BMU, usually called the neighbourhood function, and
*
is a learning restraint due to iteration progress.
Algorithm
# Randomize the node weight vectors in a map
# Randomly pick an input vector
# Traverse each node in the map
## Use the
Euclidean distance
In mathematics, the Euclidean distance between two points in Euclidean space is the length of a line segment between the two points.
It can be calculated from the Cartesian coordinates of the points using the Pythagorean theorem, therefor ...
formula to find the similarity between the input vector and the map's node's weight vector
## Track the node that produces the smallest distance (this node is the best matching unit, BMU)
# Update the weight vectors of the nodes in the neighborhood of the BMU (including the BMU itself) by pulling them closer to the input vector
##
# Increase
and repeat from step 2 while
Alternative algorithm
# Randomize the map's nodes' weight vectors
# Traverse each input vector in the input data set
## Traverse each node in the map
### Use the
Euclidean distance
In mathematics, the Euclidean distance between two points in Euclidean space is the length of a line segment between the two points.
It can be calculated from the Cartesian coordinates of the points using the Pythagorean theorem, therefor ...
formula to find the similarity between the input vector and the map's node's weight vector
### Track the node that produces the smallest distance (this node is the best matching unit, BMU)
## Update the nodes in the neighborhood of the BMU (including the BMU itself) by pulling them closer to the input vector
###
# Increase
and repeat from step 2 while
Initialization options
Selection of initial weights as good approximations of the final weights is a well-known problem for all iterative methods of artificial neural networks, including self-organizing maps. Kohonen originally proposed random initiation of weights. (This approach is reflected by the algorithms described above.) More recently, principal component initialization, in which initial map weights are chosen from the space of the first principal components, has become popular due to the exact reproducibility of the results.
A careful comparison of random initialization to principal component initialization for a one-dimensional map, however, found that the advantages of principal component initialization are not universal. The best initialization method depends on the geometry of the specific dataset. Principal component initialization was preferable (for a one-dimensional map) when the principal curve approximating the dataset could be univalently and linearly projected on the first principal component (quasilinear sets). For nonlinear datasets, however, random initiation performed better.
Interpretation
There are two ways to interpret a SOM. Because in the training phase weights of the whole neighborhood are moved in the same direction, similar items tend to excite adjacent neurons. Therefore, SOM forms a semantic map where similar samples are mapped close together and dissimilar ones apart. This may be visualized by a
U-Matrix (Euclidean distance between weight vectors of neighboring cells) of the SOM.
[Ultsch, Alfred (2003); ''U*-Matrix: A tool to visualize clusters in high dimensional data'', Department of Computer Science, University of Marburg]
Technical Report Nr. 36:1-12
/ref>
The other way is to think of neuronal weights as pointers to the input space. They form a discrete approximation of the distribution of training samples. More neurons point to regions with high training sample concentration and fewer where the samples are scarce.
SOM may be considered a nonlinear generalization of Principal components analysis
Principal component analysis (PCA) is a popular technique for analyzing large datasets containing a high number of dimensions/features per observation, increasing the interpretability of data while preserving the maximum amount of information, and ...
(PCA). It has been shown, using both artificial and real geophysical data, that SOM has many advantages over the conventional feature extraction methods such as Empirical Orthogonal Functions (EOF) or PCA.
Originally, SOM was not formulated as a solution to an optimisation problem. Nevertheless, there have been several attempts to modify the definition of SOM and to formulate an optimisation problem which gives similar results. For example, Elastic map
Elastic maps provide a tool for nonlinear dimensionality reduction. By their construction, they are a system of elastic springs embedded in the data
space. This system approximates a low-dimensional manifold. The elastic coefficients of this s ...
s use the mechanical metaphor of elasticity to approximate principal manifolds: the analogy is an elastic membrane and plate.
Examples
Fisher's iris flower data
Consider an array of nodes, each of which contains a weight vector and is aware of its location in the array. Each weight vector is of the same dimension as the node's input vector. The weights may initially be set to random values.
Now we need input to feed the map. Colors can be represented by their red, green, and blue components. Consequently, we will represent colors as vectors in the unit cube of the free vector space over generated by the basis:
:R = <255, 0, 0>
:G = <0, 255, 0>
:B = <0, 0, 255>
The diagram shown compares the results of training on the data sets[These data sets are not normalized. Normalization would be necessary to train the SOM.]
:threeColors = 55, 0, 0 , 255, 0
The comma is a punctuation mark that appears in several variants in different languages. It has the same shape as an apostrophe or single closing quotation mark () in many typefaces, but it differs from them in being placed on the baseline (t ...
, 0, 255
The comma is a punctuation mark that appears in several variants in different languages. It has the same shape as an apostrophe or single closing quotation mark () in many typefaces, but it differs from them in being placed on the baseline (t ...
:eightColors = , 0, 0
The comma is a punctuation mark that appears in several variants in different languages. It has the same shape as an apostrophe or single closing quotation mark () in many typefaces, but it differs from them in being placed on the baseline o ...
55, 0, 0 , 255, 0
The comma is a punctuation mark that appears in several variants in different languages. It has the same shape as an apostrophe or single closing quotation mark () in many typefaces, but it differs from them in being placed on the baseline (t ...
, 0, 255
The comma is a punctuation mark that appears in several variants in different languages. It has the same shape as an apostrophe or single closing quotation mark () in many typefaces, but it differs from them in being placed on the baseline (t ...
55, 255, 0 , 255, 255
The comma is a punctuation mark that appears in several variants in different languages. It has the same shape as an apostrophe or single closing quotation mark () in many typefaces, but it differs from them in being placed on the baseline o ...
55, 0, 255 55, 255, 255
and the original images. Note the striking resemblance between the two.
Similarly, after training a grid of neurons for 250 iterations with a learning rate
In machine learning and statistics, the learning rate is a tuning parameter in an optimization algorithm that determines the step size at each iteration while moving toward a minimum of a loss function. Since it influences to what extent newly ac ...
of 0.1 on Fisher's Iris
The ''Iris'' flower data set or Fisher's ''Iris'' data set is a multivariate data set used and made famous by the British statistician and biologist Ronald Fisher in his 1936 paper ''The use of multiple measurements in taxonomic problems'' as a ...
, the map can already detect the main differences between species.
Other
* Project prioritization and selection
* Seismic facies analysis for oil and gas exploration
* Failure mode and effects analysis
* Creation of artwork
*Finding representative data in large datasets (e.g., representative species for ecological communities, representative days for energy system models).
Alternatives
* The generative topographic map Generative topographic map (GTM) is a machine learning method that is a probabilistic counterpart of the self-organizing map (SOM), is probably convergent and does not require a shrinking neighborhood or a decreasing step size. It is a generative mo ...
(GTM) is a potential alternative to SOMs. In the sense that a GTM explicitly requires a smooth and continuous mapping from the input space to the map space, it is topology preserving. However, in a practical sense, this measure of topological preservation is lacking.
* The time adaptive self-organizing map
A self-organizing map (SOM) or self-organizing feature map (SOFM) is an unsupervised learning, unsupervised machine learning technique used to produce a dimensionality reduction, low-dimensional (typically two-dimensional) representation of a hig ...
(TASOM) network is an extension of the basic SOM. The TASOM employs adaptive learning rates and neighborhood functions. It also includes a scaling parameter to make the network invariant to scaling, translation and rotation of the input space. The TASOM and its variants have been used in several applications including adaptive clustering, multilevel thresholding, input space approximation, and active contour modeling. Moreover, a Binary Tree TASOM or BTASOM, resembling a binary natural tree having nodes composed of TASOM networks has been proposed where the number of its levels and the number of its nodes are adaptive with its environment.
* The growing self-organizing map
A growing self-organizing map (GSOM) is a growing variant of a self-organizing map (SOM). The GSOM was developed to address the issue of identifying a suitable map size in the SOM. It starts with a minimal number of nodes (usually 4) and grows new ...
(GSOM) is a growing variant of the self-organizing map. The GSOM was developed to address the issue of identifying a suitable map size in the SOM. It starts with a minimal number of nodes (usually four) and grows new nodes on the boundary based on a heuristic. By using a value called the ''spread factor'', the data analyst has the ability to control the growth of the GSOM.
* The elastic map
Elastic maps provide a tool for nonlinear dimensionality reduction. By their construction, they are a system of elastic springs embedded in the data
space. This system approximates a low-dimensional manifold. The elastic coefficients of this s ...
s approach borrows from the spline interpolation the idea of minimization of the elastic energy
Elastic energy is the mechanical potential energy stored in the configuration of a material or physical system as it is subjected to elastic deformation by work performed upon it. Elastic energy occurs when objects are impermanently compressed, ...
. In learning, it minimizes the sum of quadratic bending and stretching energy with the least squares
The method of least squares is a standard approach in regression analysis to approximate the solution of overdetermined systems (sets of equations in which there are more equations than unknowns) by minimizing the sum of the squares of the res ...
approximation error
The approximation error in a data value is the discrepancy between an exact value and some ''approximation'' to it. This error can be expressed as an absolute error (the numerical amount of the discrepancy) or as a relative error (the absolute er ...
.
* The conformal approach that uses conformal mapping to interpolate each training sample between grid nodes in a continuous surface. A one-to-one smooth mapping is possible in this approach.
* The oriented and scalable map
In mathematics, orientability is a property of some topological spaces such as real vector spaces, Euclidean spaces, surfaces, and more generally manifolds that allows a consistent definition of "clockwise" and "counterclockwise". A space is ...
(OS-Map) generalises the neighborhood function and the winner selection. The homogeneous Gaussian neighborhood function is replaced with the matrix exponential. Thus one can specify the orientation either in the map space or in the data space. SOM has a fixed scale (=1), so that the maps "optimally describe the domain of observation". But what about a map covering the domain twice or in n-folds? This entails the conception of scaling. The OS-Map regards the scale as a statistical description of how many best-matching nodes an input has in the map.
See also
* Neural gas
Neural gas is an artificial neural network, inspired by the self-organizing map and introduced in 1991 by Thomas Martinetz and Klaus Schulten. The neural gas is a simple algorithm for finding optimal data representations based on feature ve ...
* Learning Vector Quantization In computer science, learning vector quantization (LVQ) is a prototype-based supervised classification algorithm. LVQ is the supervised counterpart of vector quantization systems.
Overview
LVQ can be understood as a special case of an artifici ...
* Liquid state machine
A liquid state machine (LSM) is a type of reservoir computing, reservoir computer that uses a spiking neural network. An LSM consists of a large collection of units (called ''nodes'', or ''neurons''). Each node receives time varying input from exte ...
* Hybrid Kohonen SOM In artificial neural networks, a hybrid Kohonen self-organizing map is a type of self-organizing map (SOM) named for the Finland, Finnish professor Teuvo Kohonen, where the network architecture consists of an input layer fully connected to a 2–D S ...
* Sparse coding
* Sparse distributed memory Sparse distributed memory (SDM) is a mathematical model of human long-term memory introduced by Pentti Kanerva in 1988 while he was at NASA Ames Research Center. It is a generalized random-access memory (RAM) for long (e.g., 1,000 bit) binary words. ...
* Deep learning
Deep learning (also known as deep structured learning) is part of a broader family of machine learning methods based on artificial neural networks with representation learning. Learning can be supervised, semi-supervised or unsupervised.
De ...
* Neocognitron
* Topological data analysis
* Rustum, Rabee, Adebayo Adeloye, and Aurore Simala. "Kohonen self-organising map (KSOM) extracted features for enhancing MLP-ANN prediction models of BOD5." In International Symposium: Quantification and Reduction of Predictive Uncertainty for Sustainable Water Resources Management-24th General Assembly of the International Union of Geodesy and Geophysics (IUGG), pp. 181-187. 2007.
Notes
References
{{DEFAULTSORT:Self-Organizing Map
Artificial neural networks
Dimension reduction
Cluster analysis algorithms
Finnish inventions
Unsupervised learning