Nearest-neighbor chain algorithm

In the theory of cluster analysis, the nearest-neighbor chain algorithm is an algorithm that can be used to perform several types of agglomerative hierarchical clustering, in which a hierarchy of clusters is created by repeatedly merging pairs of smaller clusters to form larger clusters. In particular it can be used for Ward's method, complete-linkage clustering, and single-linkage clustering, which all work by repeatedly merging the closest two clusters under different definitions of the distance between clusters.

The main idea of the algorithm is to find pairs of clusters to merge by following paths in the nearest neighbor graph of the clusters until the paths terminate in pairs of mutual nearest neighbors. That pair of clusters is then chosen as the pair to merge by the algorithm. The algorithm uses a stack to find and merge mutually nearest pairs of clusters efficiently. The resulting system of merges occurs in a different order than in a naive implementation of the same clustering algorithms, but can be shown to generate the same hierarchy of clusters.

The nearest-neighbor chain algorithm determines a clustering in time quadratic in the number of points. This time bound is linear in the input size for an input given as an explicit distance matrix. The method uses an amount of memory that is linear in the number of points to be clustered, for clustering methods such as Ward's method that allow constant-time calculation of the distance between clusters. However, for other clustering methods a larger amount of memory must be used to maintain an array of distances between pairs of clusters.

Background

A hierarchical clustering of six points. The points to be clustered are at the top of the diagram, and the nodes below them represent clusters.

The input to a clustering problem consists of a set of points.[1] A cluster is any proper subset of the points, and a hierarchical clustering is a maximal family of clusters with the property that any two clusters in the family are either nested or disjoint. Alternatively, a hierarchical clustering may be represented as a binary tree with the points at its leaves; the clusters of the clustering are the sets of points in subtrees descending from each node of the tree.[2]

In agglomerative clustering methods, the input also includes a distance function defined on the points, or a numerical measure of their dissimilarity. The distance or dissimilarity should be symmetric: the distance between two points does not depend on which of them is considered first. However, unlike the distances in a metric space, it is not required to satisfy the triangle inequality.[1]

Next, the dissimilarity function is extended from pairs of points to pairs of clusters. Different clustering methods perform this extension in different ways. For instance, in the single-linkage clustering method, the distance between two clusters is defined to be the minimum distance between any two points from each cluster. Given this distance between clusters, a hierarchical clustering may be defined by a greedy algorithm that initially places each point in its own single-point cluster and then repeatedly forms a new cluster by merging the closest pair of clusters.[1]

The bottleneck of this greedy algorithm is the subproblem of finding which two clusters to merge in each step. Known methods for repeatedly finding the closest pair of clusters in a dynamic set of clusters either require superlinear space to maintain a data structure that can find closest pairs quickly, or they take greater than linear time to find each closest pair.[3][4] The nearest-neighbor chain algorithm uses a smaller amount of time and space than the greedy algorithm by merging pairs of clusters in a different order. In this way, it avoids the problem of repeatedly finding closest pairs. Nevertheless, for many types of clustering problem, it can be guaranteed to come up with the same hierarchical clustering as the greedy algorithm despite the different merge order.[1]

The algorithm

Animated execution of Nearest-neighbor chain algorithm

Intuitively, the nearest neighbor chain algorithm repeatedly follows a chain of clusters ABC → ... where each cluster is the nearest neighbor of the previous one, until reaching a pair of clusters that are mutual nearest neighbors.[1]

In more detail, the algorithm performs the following steps:[1][5]

If it is possible that there are multiple equal nearest neighbors to a cluster, then the algorithm requires a consistent tie-breaking rule. For instance, one may assign arbitrary index numbers to all of the clusters, and then select (among the equal nearest neighbors) the one with the smallest index number. This rule prevents certain kinds of inconsistent behavior in the algorithm; for instance, without such a rule, the neighboring cluster D might occur earlier in the stack than as the predecessor of C.[6]

Time and space analysis

Each iteration of the loop performs a single search for the nearest neighbor of a cluster, and either adds one cluster to the stack or removes two clusters from it. Every cluster is only ever added once to the stack, because when it is removed again it is immediately made inactive and merged. There are a total of 2n 2 clusters that ever get added to the stack: n single-point clusters in the initial set, and n 2 internal nodes other than the root in the binary tree representing the clustering. Therefore, the algorithm performs 2n 2 pushing iterations and n 1 popping iterations.[1]

Each of these iterations may spend time scanning as many as n 1 inter-cluster distances to find the nearest neighbor. The total number of distance calculations it makes is therefore less than 3n2. For the same reason, the total time used by the algorithm outside of these distance calculations is O(n2).[1]

Since the only data structure is the set of active clusters and the stack containing a subset of the active clusters, the space required is linear in the number of input points.[1]

Correctness

For the algorithm to be correct, it must be the case that popping and merging the top two clusters from the algorithm's stack preserves the property that the remaining clusters on the stack form a chain of nearest neighbors. Additionally, it should be the case that all of the clusters produced during the algorithm are the same as the clusters produced by a greedy algorithm that always merges the closest two clusters, even though the greedy algorithm will in general perform its merges in a different order than the nearest-neighbor chain algorithm. Both of these properties depend on the specific choice of how to measure the distance between clusters.[1]

The correctness of this algorithm relies on a property of its distance function called reducibility. This property was identified by Bruynooghe (1977) in connection with an earlier clustering method that used mutual nearest neighbor pairs but not chains of nearest neighbors.[7] A distance function d on clusters is defined to be reducible if, for every three clusters A, B and C in the greedy hierarchical clustering such that A and B are mutual nearest neighbors, the following inequality holds:[1]

d(AB, C) ≥ min(d(A,C), d(B,C)).

If a distance function has the reducibility property, then merging two clusters C and D can only cause the nearest neighbor of E to change if that nearest neighbor was one of C and D. This has two important consequences for the nearest neighbor chain algorithm. First, it can be shown using this property that, at each step of the algorithm, the clusters on the stack S form a valid chain of nearest neighbors, because whenever a nearest neighbor becomes invalidated it is immediately removed from the stack.[1]

Second, and even more importantly, it follows from this property that, if two clusters C and D both belong to the greedy hierarchical clustering, and are mutual nearest neighbors at any point in time, then they will be merged by the greedy clustering, for they must remain mutual nearest neighbors until they are merged. It follows that each mutual nearest neighbor pair found by the nearest neighbor chain algorithm is also a pair of clusters found by the greedy algorithm, and therefore that the nearest neighbor chain algorithm computes exactly the same clustering (although in a different order) as the greedy algorithm.[1]

Application to specific clustering distances

Ward's method

Ward's method is an agglomerative clustering method in which the dissimilarity between two clusters A and B is measured by the amount by which merging the two clusters into a single larger cluster would increase the average squared distance of a point to its cluster centroid.[8] That is,

Expressed in terms of the centroid and cardinality of the two clusters, it has the simpler formula

allowing it to be computed in constant time per distance calculation. Although highly sensitive to outliers, Ward's method is the most popular variation of agglomerative clustering both because of the round shape of the clusters it typically forms and because of its principled definition as the clustering that at each step has the smallest variance within its clusters.[9] Alternatively, this distance can be seen as the difference in k-means cost between the new cluster and the two old clusters.

Ward's distance is also reducible, as can be seen more easily from a different formula for calculating the distance of a merged cluster from the distances of the clusters it was merged from:[8][10]

Distance update formulas such as this one are called formulas "of Lance–Williams type" after the work of Lance & Williams (1967). If is the smallest of the three distances on the right hand side (as would necessarily be true if and are mutual nearest-neighbors) then the negative contribution from its term is cancelled by the coefficient of one of the two other terms, leaving a positive value added to the weighted average of the other two distances. Therefore, the combined distance is always at least as large as the minimum of and , meeting the definition of reducibility.

Because Ward's distance is reducible, the nearest-neighbor chain algorithm using Ward's distance calculates exactly the same clustering as the standard greedy algorithm. For n points in a Euclidean space of constant dimension, it takes time O(n2) and space O(n).[5]

Complete linkage and average distance

Complete-linkage or furthest-neighbor clustering is a form of agglomerative clustering that defines the dissimilarity between clusters to be the maximum distance between any two points from the two clusters. Similarly, average-distance clustering uses the average pairwise distance as the dissimilarity. Like Ward's distance, these two forms of clustering obey a formula of Lance–Williams type. In complete linkage, the distance is the maximum of the two distances and . Therefore, it is at least equal to the minimum of these two distances, the requirement for being reducible. For average distance, is just a weighted average of the distances and . Again, this is at least as large as the minimum of the two distances. Thus, in both of these cases, the distance is reducible.[8][10]

Unlike Ward's method, these two forms of clustering do not have a constant-time method for computing distances between pairs of clusters. Instead it is possible to maintain an array of distances between all pairs of clusters. Whenever two clusters are merged, the formula can be used to compute the distance between the merged cluster and all other clusters. Maintaining this array over the course of the clustering algorithm takes time and space O(n2). The nearest-neighbor chain algorithm may be used in conjunction with this array of distances to find the same clustering as the greedy algorithm for these cases. Its total time and space, using this array, is also O(n2).[11]

The same O(n2) time and space bounds can also be achieved in a different way, by a technique that overlays a quadtree-based priority queue data structure on top of the distance matrix and uses it to perform the standard greedy clustering algorithm. This quadtree method is more general, as it works even for clustering methods that are not reducible.[3] However, the nearest-neighbor chain algorithm matches its time and space bounds while using simpler data structures.[11]

Single linkage

In single-linkage or nearest-neighbor clustering, the oldest form of agglomerative hierarchical clustering,[10] the dissimilarity between clusters is measured as the minimum distance between any two points from the two clusters. With this dissimilarity,

meeting as an equality rather than an inequality the requirement of reducibility. (Single-linkage also obeys a Lance–Williams formula,[8][10] but with a negative coefficient from which it is more difficult to prove reducibility.)

As with complete linkage and average distance, the difficulty of calculating cluster distances causes the nearest-neighbor chain algorithm to take time and space O(n2) to compute the single-linkage clustering. However, the single-linkage clustering can be found more efficiently by an alternative algorithm that computes the minimum spanning tree of the input distances using Prim's algorithm, and then sorts the minimum spanning tree edges and uses this sorted list to guide the merger of pairs of clusters. Within Prim's algorithm, each successive minimum spanning tree edge can be found by a sequential search through an unsorted list of the smallest edges connecting the partially constructed tree to each additional vertex. This choice saves the time that the algorithm would otherwise spend adjusting the weights of vertices in its priority queue. Using Prim's algorithm in this way would take time O(n2) and space O(n), matching the best bounds that could be achieved with the nearest-neighbor chain algorithm for distances with constant-time calculations.[12]

Centroid distance

Another distance measure commonly used in agglomerative clustering is the distance between the centroids of pairs of clusters, also known as the weighted group method.[8][10] It can be calculated easily in constant time per distance calculation. However, it is not reducible. For instance, if the input forms the set of three points of an equilateral triangle, merging two of these points into a larger cluster causes the inter-cluster distance to decrease, a violation of reducibility. Therefore, the nearest-neighbor chain algorithm will not necessarily find the same clustering as the greedy algorithm. Nevertheless, Murtagh (1983) writes that the nearest-neighbor chain algorithm provides "a good heuristic" for the centroid method.[1] A different algorithm by Day & Edelsbrunner (1984) can be used to find the greedy clustering in O(n2) time for this distance measure.[4]

Distances sensitive to merge order

The above presentation explicitly disallowed distances sensitive to merge order. Indeed, allowing such distances can cause problems. In particular, there exist order-sensitive cluster distances which satisfy reducibility, but for which the above algorithm will return a hierarchy with suboptimal costs.[13] Following the earlier discussion of the value of defining cluster distances recursively (so that memoization can be used to greatly speed up distance computations), care must be taken with recursively defined distances so that they are not using the hierarchy in a way which is sensitive to merge order.

History

The nearest-neighbor chain algorithm was developed and implemented in 1982 by Jean-Paul Benzécri[14] and J. Juan.[15] They based this algorithm on earlier methods that constructed hierarchical clusterings using mutual nearest neighbor pairs without taking advantage of nearest neighbor chains.[7][16]

References

  1. 1 2 3 4 5 6 7 8 9 10 11 12 13 14 Murtagh, Fionn (1983), "A survey of recent advances in hierarchical clustering algorithms" (PDF), The Computer Journal, 26 (4): 354–359, doi:10.1093/comjnl/26.4.354.
  2. Xu, Rui; Wunsch, Don (2008), "3.1 Hierarchical Clustering: Introduction", Clustering, IEEE Press Series on Computational Intelligence, 10, John Wiley & Sons, p. 31, ISBN 978-0-470-38278-3.
  3. 1 2 Eppstein, David (2000), "Fast hierarchical clustering and other applications of dynamic closest pairs", J. Experimental Algorithmics, ACM, 5 (1): 1–23, arXiv:cs.DS/9912014Freely accessible, Bibcode:1999cs.......12014E.
  4. 1 2 Day, William H. E.; Edelsbrunner, Herbert (1984), "Efficient algorithms for agglomerative hierarchical clustering methods" (PDF), Journal of Classification, 1 (1): 7–24, doi:10.1007/BF01890115.
  5. 1 2 Murtagh, Fionn (2002), "Clustering in massive data sets", in Abello, James M.; Pardalos, Panos M.; Resende, Mauricio G. C., Handbook of massive data sets, Massive Computing, 4, Springer, pp. 513–516, Bibcode:2002hmds.book.....A, ISBN 978-1-4020-0489-6.
  6. For this tie-breaking rule, and an example of how tie-breaking is needed to prevent cycles in the nearest neighbor graph, see Sedgewick, Robert (2004), "Figure 20.7", Algorithms in Java, Part 5: Graph Algorithms (3rd ed.), Addison-Wesley, p. 244, ISBN 0-201-36121-3.
  7. 1 2 Bruynooghe, Michel (1977), "Méthodes nouvelles en classification automatique de données taxinomiqes nombreuses", Statistique et Analyse des Données, 3: 24–42.
  8. 1 2 3 4 5 Mirkin, Boris (1996), Mathematical classification and clustering, Nonconvex Optimization and its Applications, 11, Dordrecht: Kluwer Academic Publishers, pp. 140–144, ISBN 0-7923-4159-7, MR 1480413.
  9. Tuffery, Stéphane (2011), "9.10 Agglomerative hierarchical clustering", Data Mining and Statistics for Decision Making, Wiley Series in Computational Statistics, pp. 253–261, ISBN 978-0-470-68829-8.
  10. 1 2 3 4 5 Lance, G. N.; Williams, W. T. (1967), "A general theory of classificatory sorting strategies. I. Hierarchical systems", The Computer Journal, 9 (4): 373–380, doi:10.1093/comjnl/9.4.373.
  11. 1 2 Gronau, Ilan; Moran, Shlomo (2007), "Optimal implementations of UPGMA and other common clustering algorithms", Information Processing Letters, 104 (6): 205–210, doi:10.1016/j.ipl.2007.07.002, MR 2353367.
  12. Gower, J. C.; Ross, G. J. S. (1969), "Minimum spanning trees and single linkage cluster analysis", Journal of the Royal Statistical Society, Series C, 18 (1): 54–64, JSTOR 2346439, MR 0242315.
  13. Müllner, Daniel (2011), Modern hierarchical, agglomerative clustering algorithms, 1109, arXiv:1109.2378Freely accessible, Bibcode:2011arXiv1109.2378M.
  14. Benzécri, J.-P. (1982), "Construction d'une classification ascendante hiérarchique par la recherche en chaîne des voisins réciproques", Les Cahiers de l'Analyse des Données, 7 (2): 209–218.
  15. Juan, J. (1982), "Programme de classification hiérarchique par l'algorithme de la recherche en chaîne des voisins réciproques", Les Cahiers de l'Analyse des Données, 7 (2): 219–225.
  16. de Rham, C. (1980), "La classification hiérarchique ascendante selon la méthode des voisins réciproques", Les Cahiers de l'Analyse des Données, 5 (2): 135–144.
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