Data mining techniques and applications



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Data mining techniques and applications


Partitioning Methods 

Hierarchical Agglomerative (divisive) methods 

Density based methods 

Grid-based methods 

Model-based methods 
ISSN : 0976-5166
302


Bharati M. Ramageri / Indian Journal of Computer Science and Engineering 
Vol. 1 No. 4 301-305 
2.3. Predication 
 
Regression technique can be adapted for predication. Regression analysis can be used to model the 
relationship between one or more independent variables and dependent variables. In data mining 
independent variables are attributes already known and response variables are what we want to predict. 
Unfortunately, many real-world problems are not simply prediction. For instance, sales volumes, stock 
prices, and product failure rates are all very difficult to predict because they may depend on complex 
interactions of multiple predictor variables. Therefore, more complex techniques (e.g., logistic regression
decision trees, or neural nets) may be necessary to forecast future values. The same model types can often 
be used for both regression and classification. For example, the CART (Classification and Regression 
Trees) decision tree algorithm can be used to build both classification trees (to classify categorical response 
variables) and regression trees (to forecast continuous response variables). Neural networks too can create 
both classification and regression models. 
Types of regression methods 

Linear Regression 

Multivariate Linear Regression 

Nonlinear Regression 

Multivariate Nonlinear Regression 
2.4. Association rule
Association and correlation is usually to find frequent item set findings among large data sets. This type of 
finding helps businesses to make certain decisions, such as catalogue design, cross marketing and customer 
shopping behavior analysis. Association Rule algorithms need to be able to generate rules with confidence 
values less than one. However the number of possible Association Rules for a given dataset is generally 
very large and a high proportion of the rules are usually of little (if any) value. 
Types of association rule 

Multilevel association rule 

Multidimensional association rule

Quantitative association rule 

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