Data Mining
 complete the table
 if you dont know the answer please dont wast my paid question
       | Algorithm | shapes of clusters that can be determined | input parameters that must be specified | limitations | 
    | BIRCH |  |  |  | 
    | DBSCAN |  |  |  | 
    | CHAMELEON |  |  |  | 
    | k-means |  |  |  | 
    | k-medoids |  |  |  | 
    | CLARA |  |  |  | 
    
Algorithm
 shapes of clusters that can be determined
 input parameters that must be specified
 limitations
 BIRCH
 DBSCAN
   
 CHAMELEON
 (or)
 k-means
 k-medoids
 CLARA
       | Algorithm | shapes of clusters that can be determined | input parameters that must be specified | limitations | 
    | BIRCH |   Better suited to find spherical clusters |   N d-dimensional data points |   Because a CF tree can hold only a limited number of entries due  to its size, a CF tree does not always correspond to what a user  may consider a natural cluster.   data order sensitivity and inability to deal with non-spherical  clusters of varying size because it uses the concept of diameter to  control the boundary of a cluster   Handles only numeric data, and sensitive to the order of the  data Record | 
    | DBSCAN |   To identify clusters of any shape in data set (or)discover clusters of arbitrary shapes |      Maximum possible distance for a point to be considered  density-reachable and minimum number of points in a cluster |   Quadratic time in the worst case   fails to identify clusters if density varies and if the data  set is too sparse   difficulties in high dimensional spaces | 
    | CHAMELEON |   discovering arbitrary-shaped clusters of varying density (or) |   N d-dimensional categorical points |   Quadratic time in the worst case | 
    | k-means |   finding spherical-shaped clusters (or) convex  clusters |   The number of clusters must be specify   (K) |   Sensitive to noise and outliers. Works well on small data sets  only   Sensitive to noisy and outlier.   K-Means cannot handle non-globular data of different sizes and  densitiesK-Means will not identify outliers | 
    | k-medoids |   finding spherical-shaped clusters( or) convex  clusters |   The number of clusters must be specify .it allow if presence of  noisy and outlier |   Small data sets (not scalable)   Processing more costly than k-mean.large data set cannot  handle | 
    | CLARA |   finding spherical-shaped clusters |   The number of clusters must be specify |   Sensitive to the selection of initial samples   Fixed sample at each stage .Does not find best cluster |