Clementine Server Clementine Server A data mining software for business solution.

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Presentation transcript:

Clementine Server Clementine Server A data mining software for business solution

What is Clementine Server Clementine Server is a large scale, distributed Data mining software package with  fast and scalable performance,  user-friendly visual workflow interface,  powerful analytical techniques..

Brief Introduction to Clementine History of Clementine Series: Clementine Series was initiated by Integral Solutions Ltd in SPSS took over ISL in SPSS introduced the latest version - Clementine Server 5.1 with distributed architecture in earlier Old version vs New version: Stand-alone application architecture vs Distributed architecture

Architecture Stand-alone application architecture

Architecture Distributed Architecture

Capabilities  Fast and scalable Performance with Distributed Architecture

Capabilities  Interactive and efficient mining process with Visual Workflow Interface Visual Programming –Enables non-technical users to solve business problems. Easy & Intuitive desktop –Allows rapid experimentation, and creative development of models.

Palette for Generated Models Desktop Object Palette

Clementine will report the predicted accuracy of the two used algorithms: neural network and rule induction.

The target data will run through the model to produce knowledge Data Source Useful Knowledge

Capabilities  Multiple model building techniques: - Rule Induction - Graph - Clustering - Association Rules - Linear Regression - Neural Networks

Functionalities Classification Rule Induction, neural Networks Association Rule Induction, Apriori Clustering Kohonen Networks, Rule Induction Sequence Rule Induction, Neural Networks, Linear Regression Prediction Rule Induction, Neural Networks

Applications Predict market share Detect possible fraud Locate new retail sites Assess financial risk Analyze demographic trends and patterns

Limitation Clementine does not have effective incremental methods to update mining results. Clementine does not support certain data sources i.e. Dbase, Foxpro.

Summary Clementine Server  Fast and scalable performance on large datasets - unique distributed architecture  Rapid and creative development of models - user-friendly visual workflow interface  Multiple applications - various modeling techniques

Clementine Study Group Peng Wang Chong Zhang Hang Cui