1 / 51

Distance Metric Learning: A Comprehensive Survey

Distance Metric Learning: A Comprehensive Survey. Liu Yang Advisor: Rong Jin May 8th, 2006. Outline. Introduction Supervised Global Distance Metric Learning Supervised Local Distance Metric Learning Unsupervised Distance Metric Learning Distance Metric Learning based on SVM

sandra_john
Télécharger la présentation

Distance Metric Learning: A Comprehensive Survey

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. Distance Metric Learning: A Comprehensive Survey Liu Yang Advisor: Rong Jin May 8th, 2006

  2. Outline • Introduction • Supervised Global Distance Metric Learning • Supervised Local Distance Metric Learning • Unsupervised Distance Metric Learning • Distance Metric Learning based on SVM • Kernel Methods for Distance Metrics Learning • Conclusions

  3. Introduction • Definition • Distance Metric learning is to learn a distance metric for the input space of data from a given collection of pair of similar/dissimilar points that preserves the distance relation among the training data pairs. • Importance • Many machine learning algorithms, heavily rely on the distance metric for the input data patterns. e.g. kNN • A learned metric can significantly improve the performance in classification, clustering and retrieval tasks: e.g. KNN classifier, spectral clustering, content-based image retrieval (CBIR).

  4. Contributions of this Survey • Review distance metric learning under different learning conditions • supervised learning vs. unsupervised learning • learning in a global sense vs. in a local sense • distance matrix based on linear kernel vs. nonlinear kernel • Discuss central techniques of distance metric learning • K nearest neighbor • dimension reduction • semidefinite programming • kernel learning • large margin classification

  5. Global Distance Metric Learning by Convex Programming Local Adaptive Distance Metric Learning Supervised Distance Metric Learning Relevant Component Analysis Local Neighborhood Components Analysis Linear embedding PCA, MDS Unsupervised Distance Metric Learning Nonlinear embedding LLE, ISOMAP, Laplacian Eigenmaps Large Margin Nearest Neighbor Based Distance Metric Learning Distance Metric Learning based on SVM Cast Kernel Margin Maximization into a SDP problem Kernel Alignment with SDP Kernel Methods for Distance Metrics Learning Learning with Idealized Kernel

  6. Outline • Introduction • Supervised Global Distance Metric Learning • Supervised Local Distance Metric Learning • Unsupervised Distance Metric Learning • Distance Metric Learning based on SVM • Kernel Methods for Distance Metrics Learning

  7. Supervised Global Distance Metric Learning (Xing et al. 2003) • Goal : keep all the data points within the same classes close, while separating all the data points from different classes. • Formulate as a constrained convex programming problem • minimize the distance between the data pairs in S • Subject to data pairs in D are well separated

  8. Global Distance Metric Learning (Cont’d) • A is positive semi-definite • Ensure the negativity and the triangle inequality of the metric • The number of parameters is quadratic in the number of features • Difficult to scale to a large number of features • Simplify the computation

  9. Global Distance Metric Learning: Example I (b) Data scaled by the global metric • Data Dist. of the original dataset • Keep all the data points within the same classes close • Separate all the data points from different classes

  10. Global Distance Metric Learning: Example II • Original data (b) rescaling by learned full A (c) Rescaling by learned diagonal A • Diagonalize distance metric A can simplify computation, but could lead to disastrous results

  11. Problems with Global Distance Metric Learning • Data Dist. of the original dataset (b) Data scaled by the global metric Multimodal data distributions prevent global distance metrics from simultaneously satisfying constraints on within-class compactness and between-class separability.

  12. Outline • Introduction • Supervised Global Distance Metric Learning • Supervised Local Distance Metric Learning • Unsupervised Distance Metric Learning • Distance Metric Learning based on SVM • Kernel Methods for Distance Metrics Learning • Conclusions

  13. Supervised Local Distance Metric Learning • Local Adaptive Distance Metric Learning • Local Feature Relevance • Locally Adaptive Feature Relevance Analysis • Local Linear Discriminative Analysis • Neighborhood Components Analysis • Relevant Component Analysis

  14. Local Adaptive Distance Metric Learning • K Nearest Neighbor Classifier

  15. Modified local neighborhood by a distance metric Elongate the distance along the dimensions where the class labels change rapidly Squeeze the distance along the dimensions that are almost independent from the class labels Local Adaptive Distance Metric Learning • Assumption of KNN • Pr(y|x) in the local NN is constant or smooth • However, this is not necessarily true! • Near class boundaries • Irrelevant dimensions

  16. Local Feature Relevance[J. Friedman,1994] • Assume least-squared estimate for predicting f(x) is • Conditioned at , then the least-squared estimate of f(x) • The improvement in prediction error with knowing • Consider , a measure of relative influence of the ith input variable to the variation of f(x) at is given by

  17. Locally Adaptive Feature Relevance Analysis [C. Domeniconi, 2002] • Use a Chi-squared distance analysis to compute metric for producing a neighborhood, in which • The posterior probabilities are approximately constant • Highly adaptive to query locations • Chi-squared distance between the true and estimated posterior at the test point • Use the Chi-squared distance for feature relevance: ---- to tell to which extent the ith dimension can be relied on for predicting p(j| )

  18. Local Relevance Measure in ith Dimension • measures the distance between Pr(j|z) and the conditional expectation of Pr(j|x) at location z • Calculate for each point z in the neighborhood of is a conditional expectation of p(j|x) • The closer is to p(j|z), the more information the ith dimension provides for predicting p(j|z)

  19. Locally Adaptive Feature Relevance Analysis • A local relevance measure in dimension i • Relative relevance • Weighted distance is the neighborhood of

  20. Local Linear Discriminative Analysis[T. Hastie et al. 1996] • LDA finds principleeigenvectors of matrix • to keep patterns from the same class close • separate patterns from different classes apart • LDA metric : stacking principleeigenvectors of T together

  21. Local Linear Discriminative Analysis • Need local adaptation of the nearest neighbor metric • Initialize as identical matrix • Given a testing point , iterate below two steps: • Estimate Sb and Sw based on the local neighbor of measured by • Form alocal metric behaving like LDA metric • is a small tuning parameter to prevent neighborhoods extending to infinity

  22. Local Linear Discriminative Analysis • LocalSb shows the inconsistency of the class centriods • The estimated metric • shrinks the neighborhood in directions in which the local class centroids differ to produce a neighborhood in which the class centriod coincide • shrinks neighborhoods in directions orthogonal to these local decision boundaries, and elongates them parallel to the boundaries.

  23. Neighborhood Components Analysis [J. Goldberger et al. 2005] • NCA learns a Mahalanobis distance metric for the KNN classifier by maximizing the leave-one-out cross validation. • The probability of classifying correctly, weighted counting involving pairwise distance • The expected number of correctly classification points: • Overfitting, Scalability problem, # parameters is quadratic in #features.

  24. RCA [N. Shen et al. 2002] • Constructs a Mahalanobis distance metric based on a sum of • in-chunklet covariance matrices • Chunklet : data have same but unknown class labels • Sum of in-chunklet covariance matrices for p points in k chunklets: • Apply linear transformation unlabeled data chuklet data labeled data

  25. Information maximization under chunklet constraints[A. Bar-Hillel etal, 2003] • Maximizes the mutual information I(X,Y) • Constraints: within-chunklet compactness

  26. RCA algorithm applied to synthetic Gaussian data • (a) The fully labeled data set with 3 classes. • (b) Same data unlabeled; classes' structure is less evident. • (c) The set of chunklets • (d) The centered chunklets, and their empirical covariance. • (e) The RCA transformation applied to the chunklets. (centered) • (f) The original data after applying the RCA transformation.

  27. Outline • Introduction • Supervised Global Distance Metric Learning • Supervised Local Distance Metric Learning • Unsupervised Distance Metric Learning • Distance Metric Learning based on SVM • Kernel Methods for Distance Metrics Learning • Conclusions

  28. Unsupervised Distance Metric Learning • A Unified Framework for Dimension Reduction • Solution 1 • Solution 2 • Most dimension reduction approaches are to learn a distance metric without label information. e.g. PCA • I will present five methods for dimensionality reduction.

  29. Dimensionality Reduction Algorithms • PCA finds the subspace that best preserves the variance of the data. • MDS finds the subspace that best preserves the interpoint distances. • Isomap finds the subspace that best preserves the geodesic interpoint distances. [Tenenbaum et al, 2000]. • LLE finds the subspace that best preserves the local linear structure of the data [Roweis and Saul, 2000]. • Laplacian Eigenmap finds the subspace that best preserves local neighborhood information in the adjacency graph [M. Belkin and P. Niyogi,2003].

  30. Multidimensional Scaling (MDS) • MDS finds the rank m projection that best preserves the inter-point distance given by matrix D • Converts distances to inner products • Calculate X • Rank m projections Y closet to X • Given the distance matrix among cities, MDS produces this map:

  31. PCA (Principal Component Analysis) • PCA finds the subspace that best preserves the data variance. • PCA projection of X with rank m • PCA vs. MDS • In the Euclidean case, MDS only differs from PCA by starting with D and calculating X.

  32. A B Isometric Feature Mapping (ISOMAP) [Tenenbaum et al, 2000] • Geodesic :the shortest curve on a manifold that connects two points on the manifold e.g. on a sphere, geodesics are great circles • Geodesicdistance: length of the geodesic • Points far apart measured by geodesic dist. appear close measured by Euclidean dist.

  33. ISOMAP • Take a distance matrix as input • Construct a weighted graph G based on neighborhood relations • Estimate pairwise geodesic distance by “a sequence of short hops” on G • Apply MDS to the geodesic distance matrix

  34. Locally Linear Embedding (LLE)[Roweis and Saul, 2000] • LLE finds the subspace that best preserves the local linear structure of the data • Assumption: manifold is locally “linear” Each sample in the input space is a linearly weighted average of its neighbors. • A good projection should best preserve this geometric locality property

  35. LLE • W: a linear representation of every data point by its neighbors • Choose W by minimized the reconstruction error • Calculate a neighborhood preserving mapping Y, by minimizing the reconstruction error • Y is given by the eigenvectors of the m lowest nonzero eigenvalues of matrix

  36. Laplacian Eigenmap [M. Belkin and P. Niyogi,2003] • Laplacian Eigenmap finds the subspace that best preserves local neighborhood information in adjacency graph • Graph Laplacian: Given a graph G with weight matrix W D is a diagonal matrix with L =D –W is the graph Laplacian • Detailed steps: • Construct adjacency graph G. • Weight the edges: • Generalized eigen-decomposition of • Embedding : eigenvectors with top m nonzero eigenvalues

  37. A Unified Framework for Dimension Reduction Algorithms • All use an eigendecomposition to obtain a lower-dimensional embedding of data lying on a non-linear manifold. • Normalize affinity matrix • The embedding of has two alternative solutions • Solution 1 : (MDS & Isomap) is the best approximation of in the squared error sense. • Solution 2 : (LLE & Laplacian Eigenmap)

  38. Outline • Introduction • Supervised Global Distance Metric Learning • Supervised Local Distance Metric Learning • Unsupervised Distance Metric Learning • Distance Metric Learning based on SVM • Kernel Methods for Distance Metrics Learning • Conclusions

  39. Distance Metric Learning based on SVM • Large Margin Nearest Neighbor Based Distance Metric Learning • Objective Function • Reformulation as SDP • Cast Kernel Margin Maximization into a SDP Problem • Maximum Margin • Cast into SDP problem • Apply to Hard Margin and Soft Margin

  40. Large Margin Nearest Neighbor Based Distance Metric Learning [K. Weinberger et al., 2006] • Learns a Mahanalobis distance metric in the kNN classification setting by SDP, that • Enforces the k-nearest neighbors belong to the same class • examples from different classes are separated by a large margin • After training • k=3 target neighbors lie within a smaller radius • differently labeled inputs lie outside this smaller radius with a margin of at least one unit distance.

  41. Large Margin Nearest Neighbor Based Distance Metric Learning • Cost function: • Penalize large distances between each input and its target neighbors • The hinge loss is incurred by differently labeled inputs whose distances do not exceed the distance from input to any of its target neighbors by one absolute unit of distance -> do not threaten to invade each other’s neighborhoods

  42. Reformulation as SDP

  43. Cast Kernel Margin Maximization into a SDP Problem [G. R. G. Lanckriet et al, 2004] • Maximum margin : the decision boundary has the maximum minimum distance from the closest training point. • Hard Margin: linearly separable • Soft Margin: nonlinearly separable • The performance measure, generalized from dual solution of different maximizing margin problem

  44. Cast into SDP Problem • Hard Margin • 1-norm soft margin • 2-norm soft margin

  45. Outline • Introduction • Supervised Global Distance Metric Learning • Supervised Local Distance Metric Learning • Unsupervised Distance Metric Learning • Distance Metric Learning based on SVM • Kernel Methods for Distance Metrics Learning • Conclusions

  46. Kernel Methods for Distance Metrics Learning • Learning a good kernel is equivalent to distance metric learning • Kernel Alignment • Kernel Alignment with SDP • Learning with Idealized Kernel • Ideal Kernel • The Idealized Kernel

  47. Kernel Alignment [N. Cristianini,2001] • A measure of similarity between two kernel functions or between a kernel and a target function • The inner product between two kernel matrices based on kernel k1 and k2. • The alignment of K1 and K2 w.r.t S: • Measure the degree of agreement between a kernel and a given learning task.

  48. Kernel Alignment with SDP[G. R. G. Lanckriet et al, 2004] • Optimizing the alignment between a set of labels and a kernel matrix using SDP in a transductive setting. • Optimizing an objective function over the training data block -> automatic tuning of testing data block • Introduce A with , this reduces to

  49. Learning with Idealized Kernel[J. T. Kwok and I.W. Tsang,2003] • Idealize a given kernel by making it more similar to the ideal kernel matrix. • Ideal kernel: • Idealized kernel: • The alignment of will be greater than k, if are the number of positive and negative samples. • Under the original distance metric M:

  50. Idealized kernel • We modify • Search for a matrix A under which • different classes : pulled apart by an amount of at least • same class :getting close together. • Introduce slack variables for error tolerance

More Related