1 / 216

MIS 542 Data Mining Concepts and Techniques — Chapter 5 — Clustering

MIS 542 Data Mining Concepts and Techniques — Chapter 5 — Clustering. 2014/2015 Fall. Chapter 5 . Cluster Analysis. What is Cluster Analysis? Types of Data in Cluster Analysis A Categorization of Major Clustering Methods Partitioning Methods Hierarchical Methods Density-Based Methods

dahlia
Download Presentation

MIS 542 Data Mining Concepts and Techniques — Chapter 5 — Clustering

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. MIS 542Data MiningConcepts and Techniques — Chapter 5 —Clustering 2014/2015 Fall

  2. Chapter 5. Cluster Analysis • What is Cluster Analysis? • Types of Data in Cluster Analysis • A Categorization of Major Clustering Methods • Partitioning Methods • Hierarchical Methods • Density-Based Methods • Grid-Based Methods • Model-Based Clustering Methods • Outlier Analysis • Summary

  3. What is Cluster Analysis? • Cluster: a collection of data objects • Similar to one another within the same cluster • Dissimilar to the objects in other clusters • Cluster analysis • Finding similarities between data according to the characteristics found in the data and grouping similar data objects into clusters • Clustering is unsupervised learning: no predefined classes • Typical applications • As a stand-alone tool to get insight into data distribution • As a preprocessing step for other algorithms

  4. General Applications of Clustering • Pattern Recognition • Spatial Data Analysis • create thematic maps in GIS by clustering feature spaces • detect spatial clusters and explain them in spatial data mining • Image Processing • Economic Science (especially market research) • WWW • Document classification • Cluster Weblog data to discover groups of similar access patterns

  5. Examples of Clustering Applications • Marketing: Help marketers discover distinct groups in their customer bases, and then use this knowledge to develop targeted marketing programs • Land use: Identification of areas of similar land use in an earth observation database • Insurance: Identifying groups of motor insurance policy holders with a high average claim cost • City-planning: Identifying groups of houses according to their house type, value, and geographical location • Earth-quake studies: Observed earth quake epicenters should be clustered along continent faults

  6. What Is Good Clustering? • A good clustering method will produce high quality clusters with • high intra-class similarity • low inter-class similarity • The quality of a clustering result depends on both the similarity measure used by the method and its implementation. • The quality of a clustering method is also measured by its ability to discover some or all of the hidden patterns.

  7. Requirements of Clustering in Data Mining • Scalability • Ability to deal with different types of attributes • Ability to handle dynamic data • Discovery of clusters with arbitrary shape • Minimal requirements for domain knowledge to determine input parameters • Able to deal with noise and outliers • Insensitive to order of input records • High dimensionality • Incorporation of user-specified constraints • Interpretability and usability

  8. Chapter 5. Cluster Analysis • What is Cluster Analysis? • Types of Data in Cluster Analysis • A Categorization of Major Clustering Methods • Partitioning Methods • Hierarchical Methods • Density-Based Methods • Grid-Based Methods • Model-Based Clustering Methods • Outlier Analysis • Summary

  9. Data Structures • Data matrix • (two modes) • Dissimilarity matrix • (one mode)

  10. Properties of Dissimilarity Measures • Properties • d(i,j) 0 for i  j • d(i,i)= 0 • d(i,j)= d(j,i) symmetry • d(i,j) d(i,k)+ d(k,j) triangular inequality • Exercise: Can you find examples where distance between objects are not obeying symmetry property

  11. Measure the Quality of Clustering • Dissimilarity/Similarity metric: Similarity is expressed in terms of a distance function, which is typically metric: d(i, j) • There is a separate “quality” function that measures the “goodness” of a cluster. • The definitions of distance functions are usually very different for interval-scaled, boolean, categorical, ordinal and ratio variables. • Weights should be associated with different variables based on applications and data semantics. • It is hard to define “similar enough” or “good enough” • the answer is typically highly subjective.

  12. Type of data in clustering analysis • Interval-scaled variables: • Binary variables: • Nominal, ordinal, and ratio variables: • Variables of mixed types:

  13. Classification by Scale • Nominal scale:merely distinguish classes: with respect to A and B XA=XB or XAXB • e.g.: color {red, blue, green, …} • gender { male, female} • occupation {engineering, management. .. } • Ordinal scale: indicates ordering of objects in addition to distinguishing • XA=XB or XAXB XA>XB or XA<XB • e.g.: education {no school< primary sch. < high sch. < undergrad < grad} • age {young < middle < old} • income {low < medium < high }

  14. Interval scale: assign a meaningful measure of difference between two objects • Not only XA>XB but XAisXA – XB units different from XB • e.g.: specific gravity • temperature in oC or oF • Boiling point of water is 100 oC different then its melting point or 180 oF different • Ratio scale: an interval scale with a meaningful zero point • XA > XB but XA is XA/XB times greater then XB • e.g.: height, weight, age (as an integer) • temperature in oK or oR • Water boils at 373 oK and melts at 273 oK • Boiling point of water is 1.37 times hotter then melting poing

  15. Comparison of Scales • Strongest scale is ratio weakest scale is ordinal • Ahmet`s height is 2.00 meters HA • Mehmet`s height is 1.50 meter HM • HA  HM nominal: their heights are different • HA > HM ordinal Ahmet is taller then Mehmet • HA - HM =0.50 meters interval Ahmet is 50 cm taller then Mehmet • HA / HM =1.333 ratio scale, no mater height is measured in meter or inch …

  16. Interval-valued variables • Standardize data • Calculate the mean absolute deviation: where • Calculate the standardized measurement (z-score) • Using mean absolute deviation is more robust than using standard deviation

  17. Other Standardizations • Min Max scale between 0 and 1 or -1 and 1 • Decimal scale • For Ratio Scaled variales • Mean transformation • zi,f = xi,f/mean_f • Measure in terms of means of variable f • Log transformation • zi,f = logxi,f

  18. X2 * X2 * * * * * * * * X1 * * * * * * * * X1 * * * * * * * Both has zero mean and standardized by Z scores X1 and X2 are unity in both cases I and II X1.X2=0 in case I whereasX1.X2 1 in case II Shell we use the same distance measure in both cases After obtaining the z scores

  19. Exercise X2 * X2 * * * A* * * * * X1 * A* * * * * * * X1 * * * * * * * Suppose d(A,O) = 0.5 in case I and II Does it reflect the distance between A and origin? Suggest a transformation so as to handle correlation Between variables

  20. Similarity and Dissimilarity Between Objects • Distances are normally used to measure the similarity or dissimilarity between two data objects • Some popular ones include: Minkowski distance: where i = (xi1, xi2, …, xip) and j = (xj1, xj2, …, xjp) are two p-dimensional data objects, and q >=1 • If q = 1, d is Manhattan distance

  21. Similarity and Dissimilarity Between Objects (Cont.) • If q = 2, d is Euclidean distance: • Properties • d(i,j) 0 • d(i,i)= 0 • d(i,j)= d(j,i) • d(i,j) d(i,k)+ d(k,j) • Also, one can use weighted distance, parametric Pearson product moment correlation, or other disimilarity measures

  22. Similarity and Dissimilarity Between Objects (Cont.) • Weights can be assigned to variables • Where wi i = 1…P weights showing the importance of each variable

  23. XA XA XB XB Manhatan distance between XA and XB Euclidean distance between XA and XB

  24. When q =  Mincovsly distance becomes Chebychev distance or L metric • limq=(|Xi1-Xj1|q+|Xi2-Xj2|q+…+|Xip-Xjp|q)1/q • =maxp |Xip-Xjp|

  25. Exercise • Take one of these points as origin and draw the locus of points that are 1,2 ,3 units away from the oirgin with two dimensions according to • Menhattan distance • Euchlidean distance • Chebychev distance

  26. Binary Variables • Symmetric asymmetric • Symmetric: both of its states are equally valuable and carry the same weight • gender: male female • 0 male 1 female arbitarly coded as 0 or 1 • Asymmetric variables • Outcomes are not equally important • Encoded by 0 and 1 • E.g. patient smoker or not • 1 for smoker 0 for nonsmoker asymmetric • Positive and negative outcomes of a disease test • HIV positive by 1 HIV negative 0

  27. Binary Variables • A contingency table for binary data • Simple matching coefficient (invariant, if the binary variable is symmetric): • Jaccard coefficient (noninvariant if the binary variable is asymmetric): Object j Object i

  28. Dissimilarity between Binary Variables • Example • gender is a symmetric attribute • the remaining attributes are asymmetric binary • let the values Y and P be set to 1, and the value N be set to 0

  29. Nominal Variables • A generalization of the binary variable in that it can take more than 2 states, e.g., red, yellow, blue, green • Method 1: Simple matching • m: # of matches, p: total # of variables • Higher weights can be assigned to variables with large number of states • Method 2: use a large number of binary variables • creating a new binary variable for each of the M nominal states

  30. Example • 2 nominal variables • Faculty and country for students • Faculty {eng, applied Sc., Pure Sc., Admin., } 5 distinct values • Country {Turkey, USA} 10 distinct values • P = 2 just two varibales • Weight of country may be increased • Student A (eng, Turkey) B(Applied Sc, Turkey) • m =1 in one variable A and B are similar • D(A,B) = (2-1)/2 =1/2

  31. Example cont. • Different binary variables for each faculty • Eng 1 if student is in engineering 0 otherwise • AppSc 1 if student in MIS, 0 otherwise • Different binary variables for each country • Turkey 1 if sturent Turkish, 0 otherwise • USA 1 if student USA ,0 otherwise

  32. Ordinal Variables • An ordinal variable can be discrete or continuous • Order is important, e.g., rank • Can be treated like interval-scaled • replace xif by their rank • map the range of each variable onto [0, 1] by replacing i-th object in the f-th variable by • compute the dissimilarity using methods for interval-scaled variables

  33. Example • Credit Card type: gold > silver > bronze > normal, 4 states • Education: grad > undergrad > highschool > primary school > no school, 5 states • Two customers • A(gold,highschool) • B(normal,no school) • rA,card = 1 , rB,card = 4 • rA,edu = 3 , rA,card = 5 • zA,card = (1-1)/(4-1)=0 • zB,card = (4-1)/(4-1)=1 • zA,edu = (3-1)/(5-1)=0.5 • zB,edu = (5-1)/(5-1)=1 • Use any interval scale distance measure on z values

  34. Exercise • Find an attribute having both ordinal and nominal charecterisitics define a similarity or dissimilarity measure for to objects A and B

  35. Ratio-Scaled Variables • Ratio-scaled variable: a positive measurement on a nonlinear scale, approximately at exponential scale, such as AeBt or Ae-Bt • Methods: • treat them like interval-scaled variables—not a good choice! (why?—the scale can be distorted) • apply logarithmic transformation yif = log(xif) • treat them as continuous ordinal data treat their rank as interval-scaled

  36. Example • Cluster individuals based on age weights and heights • All are ratio scale variables • Mean transformation • Zp,i = xp,i/meanp • As absolute zero makes sense measure distance by units of mean for each variable • Then you may apply z`= logz • Use any distance measure for interval scales then

  37. Example cont. • A weight difference of 0.5 kg is much more important for babies then for adults • d(3kg,3.5kg) = 0.5 (3.5-3)/3 percentage difference • d(71.5kg,70.0kg) =0.5 • d`(3kg,3.5kg) = (3.5-3)/3 percentage difference very significant approximately log(3.5)-log3 • d(71.5kg,71.0kg) = (71.5-70.0)/70.0 • Not important log71.5 – log71 almost zero

  38. Examples from Sports • Boxing wrestling • 48 48 • 51 52 • 54 56 • 57 62 • 60 68 • 63.5 74 • 67 82 • 71 90 • 75 100 • 81 130

  39. Variables of Mixed Types • A database may contain all the six types of variables • symmetric binary, asymmetric binary, nominal, ordinal, interval and ratio • One may use a weighted formula to combine their effects • f is binary or nominal: dij(f) = 0 if xif = xjf , or dij(f) = 1 o.w. • f is interval-based: use the normalized distance • f is ordinal or ratio-scaled • compute ranks rif and • and treat zif as interval-scaled

  40. fij is count variable • fij = 0 if • f is binary and asymmetric variable and • Xif = Xjf = 0 • fij = 1 o.w.

  41. Exercise • Construct an example data containiing all types of variables • Define variables in that data set • and compute distance between two sample objects

  42. Chapter 6. Cluster Analysis • What is Cluster Analysis? • Types of Data in Cluster Analysis • A Categorization of Major Clustering Methods • Partitioning Methods • Hierarchical Methods • Density-Based Methods • Grid-Based Methods • Model-Based Clustering Methods • Outlier Analysis • Summary

  43. Basic Measures for Clustering • Clustering: Given a database D = {t1, t2, .., tn}, a distance measure dis(ti, tj) defined between any two objects ti and tj, and an integer value k, the clustering problem is to define a mapping f: D  {1, …, k} where each ti is assigned to one cluster Kf, 1 ≤ f ≤ k, such that tfp,tfq ∈Kf and ts ∉Kf, dis(tfp,tfq)≤dis(tfp,ts) • Centroid, radius, diameter • Typical alternatives to calculate the distance between clusters • Single link, complete link, average, centroid, medoid

  44. Centroid, Radius and Diameter of a Cluster (for numerical data sets) • Centroid: the “middle” of a cluster • Radius: square root of average distance from any point of the cluster to its centroid • Diameter: square root of average mean squared distance between all pairs of points in the cluster

  45. Typical Alternatives to Calculate the Distance between Clusters • Single link: smallest distance between an element in one cluster and an element in the other, i.e., dis(Ki, Kj) = min(tip, tjq) • Complete link: largest distance between an element in one cluster and an element in the other, i.e., dis(Ki, Kj) = max(tip, tjq) • Average: avg distance between an element in one cluster and an element in the other, i.e., dis(Ki, Kj) = avg(tip, tjq) • Centroid: distance between the centroids of two clusters, i.e., dis(Ki, Kj) = dis(Ci, Cj) • Medoid: distance between the medoids of two clusters, i.e., dis(Ki, Kj) = dis(Mi, Mj) • Medoid: one chosen, centrally located object in the cluster

  46. Major Clustering Approaches • Partitioning algorithms: Construct various partitions and then evaluate them by some criterion • Hierarchy algorithms: Create a hierarchical decomposition of the set of data (or objects) using some criterion • Density-based: based on connectivity and density functions • Grid-based: based on a multiple-level granularity structure • Model-based: A model is hypothesized for each of the clusters and the idea is to find the best fit of that model to each other

  47. Chapter 6. Cluster Analysis • What is Cluster Analysis? • Types of Data in Cluster Analysis • A Categorization of Major Clustering Methods • Partitioning Methods • Hierarchical Methods • Density-Based Methods • Grid-Based Methods • Model-Based Clustering Methods • Outlier Analysis • Summary

  48. Partitioning Algorithms: Basic Concept • Partitioning method: Construct a partition of a database D of n objects into a set of k clusters, s.t., min sum of squared distance • Given a k, find a partition of k clusters that optimizes the chosen partitioning criterion • Global optimal: exhaustively enumerate all partitions • Heuristic methods: k-means and k-medoids algorithms • k-means (MacQueen’67): Each cluster is represented by the center of the cluster • k-medoids or PAM (Partition around medoids) (Kaufman & Rousseeuw’87): Each cluster is represented by one of the objects in the cluster

  49. The K-Means Clustering Method • Given k, the k-means algorithm is implemented in four steps: • Partition objects into k nonempty subsets • Compute seed points as the centroids of the clusters of the current partition (the centroid is the center, i.e., mean point, of the cluster) • Assign each object to the cluster with the nearest seed point • Go back to Step 2, stop when no more new assignment

  50. 10 9 8 7 6 5 4 3 2 1 0 0 1 2 3 4 5 6 7 8 9 10 The K-Means Clustering Method • Example 10 9 8 7 6 5 Update the cluster means Assign each objects to most similar center 4 3 2 1 0 0 1 2 3 4 5 6 7 8 9 10 reassign reassign K=2 Arbitrarily choose K object as initial cluster center Update the cluster means

More Related