diffusion map
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Diffusion maps is a
dimensionality reduction Dimensionality reduction, or dimension reduction, is the transformation of data from a high-dimensional space into a low-dimensional space so that the low-dimensional representation retains some meaningful properties of the original data, ideally ...
or
feature extraction In machine learning, pattern recognition, and image processing, feature extraction starts from an initial set of measured data and builds derived values (features) intended to be informative and non-redundant, facilitating the subsequent learning a ...
algorithm introduced by Coifman and Lafon which computes a family of
embedding In mathematics, an embedding (or imbedding) is one instance of some mathematical structure contained within another instance, such as a group that is a subgroup. When some object X is said to be embedded in another object Y, the embedding is g ...
s of a data set into Euclidean space (often low-dimensional) whose coordinates can be computed from the eigenvectors and eigenvalues of a diffusion operator on the data. The Euclidean distance between points in the embedded space is equal to the "diffusion distance" between probability distributions centered at those points. Different from linear dimensionality reduction methods such as principal component analysis (PCA), diffusion maps is part of the family of nonlinear dimensionality reduction methods which focus on discovering the underlying manifold that the data has been sampled from. By integrating local similarities at different scales, diffusion maps give a global description of the data-set. Compared with other methods, the diffusion map algorithm is robust to noise perturbation and computationally inexpensive.


Definition of diffusion maps

Following and, diffusion maps can be defined in four steps.


Connectivity

Diffusion maps exploit the relationship between
heat diffusion In mathematics and physics, the heat equation is a certain partial differential equation. Solutions of the heat equation are sometimes known as caloric functions. The theory of the heat equation was first developed by Joseph Fourier in 1822 for ...
and
random walk In mathematics, a random walk is a random process that describes a path that consists of a succession of random steps on some mathematical space. An elementary example of a random walk is the random walk on the integer number line \mathbb Z ...
Markov chain. The basic observation is that if we take a random walk on the data, walking to a nearby data-point is more likely than walking to another that is far away. Let (X, \mathcal, \mu) be a measure space, where X is the data set and \mu represents the distribution of the points on X. Based on this, the connectivity k between two data points, x and y, can be defined as the probability of walking from x to y in one step of the random walk. Usually, this probability is specified in terms of a kernel function of the two points: k: X \times X \rightarrow \mathbb. For example, the popular Gaussian kernel: : k(x,y)=\exp\left(-\frac\right) More generally, the
kernel Kernel may refer to: Computing * Kernel (operating system), the central component of most operating systems * Kernel (image processing), a matrix used for image convolution * Compute kernel, in GPGPU programming * Kernel method, in machine learn ...
function has the following properties : k(x,y) = k(y,x) (k is symmetric) : k(x,y) \geq 0 \,\,\forall x,y (k is positivity preserving). The kernel constitutes the prior definition of the ''local'' geometry of the data-set. Since a given kernel will capture a specific feature of the data set, its choice should be guided by the application that one has in mind. This is a major difference with methods such as principal component analysis, where correlations between all data points are taken into account at once. Given (X, k), we can then construct a reversible discrete-time Markov chain on X (a process known as the normalized graph Laplacian construction): : d(x) = \int_X k(x,y) d\mu(y) and define: : p(x,y) = \frac Although the new normalized kernel does not inherit the symmetric property, it does inherit the positivity-preserving property and gains a conservation property: : \int_X p(x,y) d\mu(y) = 1


Diffusion process

From p(x,y) we can construct a transition matrix of a Markov chain (M) on X. In other words, p(x,y) represents the one-step transition probability from x to y, and M^t gives the t-step transition matrix. We define the diffusion matrix L (it is also a version of graph Laplacian matrix) : L_=k(x_i,x_j) \, We then define the new kernel : L^_= k^(x_i,x_j) =\frac \, or equivalently, : L^ = D^ L D^ \, where D is a diagonal matrix and D_ = \sum_j L_. We apply the graph Laplacian normalization to this new kernel: : M=(^)^L^, \, where D^ is a diagonal matrix and ^_ = \sum_j L^_. : p(x_j,t, x_i)=M^t_ \, One of the main ideas of the diffusion framework is that running the chain forward in time (taking larger and larger powers of M) reveals the geometric structure of X at larger and larger scales (the diffusion process). Specifically, the notion of a ''cluster'' in the data set is quantified as a region in which the probability of escaping this region is low (within a certain time t). Therefore, t not only serves as a time parameter, but it also has the dual role of scale parameter. The eigendecomposition of the matrix M^t yields : M^t_ = \sum_l \lambda_l^t \psi_l(x_i)\phi_l(x_j) \, where \ is the sequence of eigenvalues of M and \ and \ are the biorthogonal right and left eigenvectors respectively. Due to the spectrum decay of the eigenvalues, only a few terms are necessary to achieve a given relative accuracy in this sum.


Parameter α and the diffusion operator

The reason to introduce the normalization step involving \alpha is to tune the influence of the data point density on the infinitesimal transition of the diffusion. In some applications, the sampling of the data is generally not related to the geometry of the manifold we are interested in describing. In this case, we can set \alpha=1 and the diffusion operator approximates the Laplace–Beltrami operator. We then recover the Riemannian geometry of the data set regardless of the distribution of the points. To describe the long-term behavior of the point distribution of a system of stochastic differential equations, we can use \alpha=0.5 and the resulting Markov chain approximates the Fokker–Planck diffusion. With \alpha=0, it reduces to the classical graph Laplacian normalization.


Diffusion distance

The diffusion distance at time t between two points can be measured as the similarity of two points in the observation space with the connectivity between them. It is given by : D_(x_i,x_j)^2 =\sum_y \frac where \phi_0(y) is the stationary distribution of the Markov chain, given by the first left eigenvector of M. Explicitly: : \phi_0(y) = \frac Intuitively, D_t(x_i,x_j) is small if there is a large number of short paths connecting x_i and x_j. There are several interesting features associated with the diffusion distance, based on our previous discussion that t also serves as a scale parameter: # Points are closer at a given scale (as specified by D_t(x_i,x_j)) if they are highly connected in the graph, therefore emphasizing the concept of a cluster. # This distance is robust to noise, since the distance between two points depends on all possible paths of length t between the points. # From a machine learning point of view, the distance takes into account all evidences linking x_i to x_j, allowing us to conclude that this distance is appropriate for the design of inference algorithms based on the majority of preponderance.


Diffusion process and low-dimensional embedding

The diffusion distance can be calculated using the eigenvectors by : D_t(x_i,x_j)^2=\sum_l \lambda_l^ (\psi_l(x_i)-\psi_l(x_j))^2 \, So the eigenvectors can be used as a new set of coordinates for the data. The diffusion map is defined as: : \Psi_t(x)=(\lambda_1^t\psi_1(x),\lambda_2^t\psi_2(x),\ldots,\lambda_k^t\psi_k(x)) Because of the spectrum decay, it is sufficient to use only the first ''k'' eigenvectors and eigenvalues. Thus we get the diffusion map from the original data to a ''k''-dimensional space which is embedded in the original space. In it is proved that : D_t(x_i,x_j)^2=, , \Psi_t(x_i)-\Psi_t(x_j), , ^2 \, so the Euclidean distance in the diffusion coordinates approximates the diffusion distance.


Algorithm

The basic algorithm framework of diffusion map is as: Step 1. Given the similarity matrix ''L''. Step 2. Normalize the matrix according to parameter \alpha: L^ = D^ L D^ . Step 3. Form the normalized matrix M=(^)^L^. Step 4. Compute the ''k'' largest eigenvalues of M^t and the corresponding eigenvectors. Step 5. Use diffusion map to get the embedding \Psi_t.


Application

In the paper Nadler et al. showed how to design a kernel that reproduces the diffusion induced by a Fokker–Planck equation. They also explained that, when the data approximate a manifold, one can recover the geometry of this manifold by computing an approximation of the Laplace–Beltrami operator. This computation is completely insensitive to the distribution of the points and therefore provides a separation of the statistics and the geometry of the data. Since diffusion maps give a global description of the data-set, they can measure the distances between pairs of sample points in the manifold in which the data is embedded. Applications based on diffusion maps include face recognition,
spectral clustering In multivariate statistics, spectral clustering techniques make use of the spectrum (eigenvalues) of the similarity matrix of the data to perform dimensionality reduction before clustering in fewer dimensions. The similarity matrix is provided as ...
, low dimensional representation of images, image segmentation, 3D model segmentation, speaker verification and identification, sampling on manifolds, anomaly detection, image inpainting, revealing brain resting state networks organization and so on. Furthermore, the diffusion maps framework has been productively extended to complex networks, revealing a functional organisation of networks which differs from the purely topological or structural one.


See also

* Nonlinear dimensionality reduction *
Spectral clustering In multivariate statistics, spectral clustering techniques make use of the spectrum (eigenvalues) of the similarity matrix of the data to perform dimensionality reduction before clustering in fewer dimensions. The similarity matrix is provided as ...


References

{{Reflist, 30em, refs= {{cite journal , last = Nadler , first = Boaz , author2 = Stéphane Lafon , author3 = Ronald R. Coifman , author4 = Ioannis G. Kevrekidis , year = 2005 , title = Diffusion Maps, Spectral Clustering and Eigenfunctions of Fokker–Planck Operators , url = http://www.wisdom.weizmann.ac.il/~nadler/Publications/dm_nips05.pdf , journal = Advances in Neural Information Processing Systems , volume = 18 , bibcode = 2005math......6090N , arxiv = math/0506090 {{cite journal , last = Zeev , first = Farbman , author2 = Fattal Raanan , author3 = Lischinski Dani , year = 2010 , title = Diffusion maps for edge-aware image editing , journal = ACM Trans. Graph. , volume = 29 , issue = 6 , pages = 145:1–145:10 , doi = 10.1145/1882261.1866171 {{cite journal , last = Coifman , first = R.R. , author2 = Lafon, S , author3 = Lee, A B , author4 = Maggioni, M , author5 = Nadler, B , author6 = Warner, F , author7 = Zucker, S W , year = 2005 , title = Geometric diffusions as a tool for harmonic analysis and structure definition of data: Diffusion maps , journal = PNAS , doi = 10.1073/pnas.0500334102 , volume = 102 , issue = 21 , pages = 7426–7431 , pmid=15899970 , pmc=1140422 , bibcode = 2005PNAS..102.7426C , doi-access = free {{cite journal , last = Coifman , first = R.R. , author2 = Lafon, S , author3 = Lee, A B , author4 = Maggioni, M , author5 = Nadler, B , author6 = Warner, F , author7 = Zucker, S W , year = 2005 , title = Geometric diffusions as a tool for harmonic analysis and structure definition of data: Multiscale methods , journal = PNAS , doi = 10.1073/pnas.0500896102 , volume = 102 , issue = 21 , pages = 7432–7437 , pmid=15899969 , pmc=1140426 , bibcode = 2005PNAS..102.7432C , doi-access = free {{cite journal , last = Coifman , first = R.R. , author2 = S. Lafon. , year = 2006 , title = Diffusion maps , journal = Applied and Computational Harmonic Analysis , doi = 10.1016/j.acha.2006.04.006 , volume = 21 , pages = 5–30 , doi-access= free {{cite thesis , last = Lafon , first = S.S. , year = 2004 , title = Diffusion Maps and Geometric Harmonics , publisher = Yale University , type = PhD , url = https://690cd646-a-62cb3a1a-s-sites.googlegroups.com/site/stefansresearchpapers/home/dissertation.pdf {{cite journal , last1 = De la Porte , first1 = J. , last2 = Herbst , first2 = B M , last3 = Hereman , first3 = W , last4 = Van der Walt , first4 = S J , year = 2008 , title = An Introduction to Diffusion Maps , journal = Proceedings of the Nineteenth Annual Symposium of the Pattern Recognition Association of South Africa (PRASA) , citeseerx = 10.1.1.309.674 {{cite conference , last1 = Oana , first1 = Sidi , first2 = Oliver , last2 = van Kaick , first3 = Yanir , last3 = Kleiman , first4 = Hao , last4 = Zhang , first5 = Daniel , last5 = Cohen-Or , year = 2011 , title = Unsupervised Co-Segmentation of a Set of Shapes via Descriptor-Space Spectral Clustering , journal = ACM Transactions on Graphics , url = https://www.cs.sfu.ca/~haoz/pubs/sidi_siga11_coseg.pdf {{cite conference , last1 = Michalevsky , first1 = Yan , first2 = Ronen , last2 = Talmon , first3 = Israel , last3 = Cohen , year = 2011 , title = Speaker Identification Using Diffusion Maps , conference = European signal processing conference 2011 , url = http://www.eurasip.org/Proceedings/Eusipco/Eusipco2011/papers/1569414913.pdf {{cite journal , last1 = Mishne , first1 = Gal , first2 = Israel , last2 = Cohen , year = 2013 , title = Multiscale Anomaly Detection Using Diffusion Maps , journal = IEEE Selected Topics in Signal Processing , volume = 7 , issue = 1 , pages = 111–123 , doi = 10.1109/jstsp.2012.2232279 , bibcode = 2013ISTSP...7..111M , s2cid = 1954466 {{cite journal , last1 = Gepshtein , first1 = Shai , first2 = Yosi , last2 = Keller , year = 2013 , title = Image Completion by Diffusion Maps and Spectral Relaxation , journal = IEEE Transactions on Image Processing , volume = 22 , issue = 8 , pages = 2983–2994 , doi = 10.1109/tip.2013.2237916 , pmid = 23322762 , bibcode = 2013ITIP...22.2983G , s2cid = 14375333 Machine learning algorithms