data mining and knowledge discovery in large databases

16
„We are drowning in data, but we are starving for knowledge“ Part 2: Clustering - Hierarchical Clustering - Divisive Clustering - Density based Clustering Outline Data Mining and Knowledge Discovery in Large Databases Erik Kropat University of the Bundeswehr Munich, Germany

Upload: ssa-kpi

Post on 29-Nov-2014

1.251 views

Category:

Education


0 download

DESCRIPTION

AACIMP 2011 Summer School. Operational Research Stream. Lecture by Erik Kropat.

TRANSCRIPT

Page 1: Data Mining and Knowledge Discovery in Large Databases

„We are drowning in data, but we are starving for knowledge“ Part 2: Clustering - Hierarchical Clustering - Divisive Clustering - Density based Clustering

Outline

Data Mining and

Knowledge Discovery in Large Databases

Erik Kropat University of the Bundeswehr

Munich, Germany

Page 2: Data Mining and Knowledge Discovery in Large Databases

Why “Data Mining”?

• Companies are collecting massive amounts of data on customers, operations, and the competitive landscape.

Firms can gain a competitive advantage from these data

• But, there is far too much data

− Online shops record purchase behaviours for millions of customers (sometimes with hundreds features for each customer)

− Phone companies keep info on 100’s of millions of accounts (each with thousands of transactions)

− Databases can often be hundreds of terabytes in size (this will be peanuts in the future).

Page 3: Data Mining and Knowledge Discovery in Large Databases

„We are drowning in data, but we are starving for knowledge“

Why “Data Mining”?

(John Naisbitt)

Page 4: Data Mining and Knowledge Discovery in Large Databases

Process of finding valuable and useful patterns in datasets

Knowledge Discovery in Large Databases

Page 5: Data Mining and Knowledge Discovery in Large Databases

… or more complex data sets • multimedia & sound

• images & video

• automatic news analysis

• social media analysis.

• businesses & investments

• finance & economics

• science & technology

• bioinformatics

• telecommunication

Analysis of data sets from …

Page 6: Data Mining and Knowledge Discovery in Large Databases

What are the data sources?

− Credit card transactions data

− Supermarket transactions data

− Loyalty cards

− Web server logs

− Social media

Variety of features

− Name and address − History of shopping and purchases − Demographics − Credit rating − Quality & market share of products

Consumer data

Page 7: Data Mining and Knowledge Discovery in Large Databases

Business Intelligence ‒

Customer Data Analytics & Market Analysis

− customer segmentation

− market basket analysis

− target marketing

− geo-marketing

− cross-selling / up-selling

− customer relation management

Page 8: Data Mining and Knowledge Discovery in Large Databases

Market Basket Analysis ‒ Cross Selling

Page 9: Data Mining and Knowledge Discovery in Large Databases

Key Tasks

Assocation Rule Learning

Decision Trees

Automatic Derivation of Ontologies

Neural Networks

Digital Forensics

Page 10: Data Mining and Knowledge Discovery in Large Databases

Retail

• Customer segmentation Identify purchase patterns of „typical“ customers

Targeted advertisement, costumized pricing, cost-effective promotions • Market basket analysis Identify the purchase behaviour of groups of customers

• Sales promotions Identify likely responders to sales promotions

Page 11: Data Mining and Knowledge Discovery in Large Databases

Banking

• Credit rating

Given a large number names, which persons are likely to default on their credit cards?

• Fraud detection

− Credit card fraud detection

− Network intrusion detection

Page 12: Data Mining and Knowledge Discovery in Large Databases

Telecommunications

Companies are facing an escalating competition and are forced to aggressively market special pricing programs aimed at retaining existing customers and attracting new ones. • Call detail record analysis Identify customer segments with similar use patterns.

Offer attractive pricing and feature promotions. • Customer loyalty / customer churn management Some customers repeatedly „churn“ (switch providers).

Identify those who are likely to switch or who are likely to remain loyal.

Companies can target their spending on customers who will produce the most profit. • Set pricing strategies in a highly competitive market.

Page 13: Data Mining and Knowledge Discovery in Large Databases

Big Data is Big Business Companies are using their data sets to aim their services and products with increasing precision.

Business Intelligence

− SAP AG is a German global software corporation that provides enterprise software applications.

− SAP AG is one of the largest enterprise software companies. − In October 2007, SAP AG announced a $6.8 billion deal to acquire „Business Objects“.

− Since 2009 „Business Objects“ is a division of SAP AG instead of a separate company.

Page 14: Data Mining and Knowledge Discovery in Large Databases

Outline

Page 15: Data Mining and Knowledge Discovery in Large Databases

Part 1: Introduction - What is „Data Mining“ ? - Examples

Outline

Part 3: Clustering - Hierarchical Clustering - Partitional Clustering - Fuzzy Clustering - Graph Based Clustering

Part 4: Classification - k-th Nearest Neighbors - Support Vector Machines

Part 2: Formal Concept Analysis - Contexts and Concepts - Concept Lattices

Part 5: Spatial Data Mining - DBSCAN - Density & Connectivity

Part 6: Regulatory Networks - Eco-Finance Networks - Gene-Environment Networks

Page 16: Data Mining and Knowledge Discovery in Large Databases

Questions ?

For more information after today Email me at [email protected]