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Data Mining
Page 1
Syllabus
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Week
Material
Week
Introduction
Week 2
Data Warehouse & OLAP
Week 3
Data Preprocessing
Week 4
Data Mining Languages
Week 5
Concept Description
Week 6
Statistic
Week 7-8 Association Rules
Week 9-10 Classification
Week 11-12 Cluster Analysis
Week 13-14 Mining Complex Data
Week 15
Applications
• Midterm
3/2/04
• Project due
4/29/04
• Final 5/6/04
• No Late
Submissions
are allowed
Page 2
Textbook and Other Reading Materials
• Textbook: Data Mining: Concepts and Techniques
by Jiawei Han and Micheline Kamber, Morgan
Kaufman, 2001
• Other texts that I may use from time to time:
– Data Mining –Introductory and Advanced Topics by
Margaret H. Duhnam, Pearson Education,Inc, 2003
– Principles of Data Mining by David Hand, Heikki Mannila, and
Padhriac Smyth, MIT Press 2001
• Papers: VLDB, SIGMOD, and SIGKDD Proceedings`
Page 3
Introduction
• Motivation.
• What is data mining?
• Data mining functionality
• Are all the patterns interesting?
• Classification of data mining systems
Page 4
Motivation:
• Huge amount of databases and web pages make information
extraction next to impossible (remember the favored statement: I
will bury them in data!)
• Inability of many other disciplines: (statistic, AI, information
retrieval) to have scalable algorithms to extract information
and/or rules from the databases
• Necessity to find relationships among data
Page 5
Appetizer
• Consider a file consisting of 24471 records.
File contains at least two condition attributes:
A and D
A/D
0
1
total
0
9272
232
9504
1
14695 272
14967
Total 23967 504
24471
Page 6
Appetizer (con’t)
• Probability that person has A: P(A)=0.6, P(D)=0.02
• Conditional probability that person has D provided it has A:
P(D|A) = P(AD)/P(A)=(272/24471)/.6 = .02
• P(A|D) = P(AD)/P(D)= .56
• What can we say about dependencies between A and D?
A/D
0
1
total
0
9272
232
9504
1
14695 272
14967
Total 23967 504
24471
Page 7
Appetizer(3)
• So far we did not ask anything that statistics would not
have ask. So Data Mining another word for statistic?
• We hope that the response will be resounding NO
• The major difference is that statistical methods work
with random data samples, whereas the data in
databases is not necessarily random
• The second difference is the size of the data set
• The third data is that statistical samples do not
contain “dirty” data
Page 8
STATISTIC is NOT DATA MINING
• Originally data mining was a statistician term
for overusing data to create possible wrong
inferences.
• Famous example of wrong inferences is in
parapsychology on ECP (extrasensory
perception)
• If there are too many conclusions from the
data, then some will be certainly true.
• Data Mining is a discovery of UNEXPECTED
data correlations
Page 9
What Is Data Mining?
• Data mining (knowledge discovery in databases):
– Extraction of interesting information or patterns from data
in large databases
• Alternative names and their “inside stories”:
– Knowledge discovery(mining) in databases (KDD),
knowledge extraction, data/pattern analysis, data
archeology, data dredging, information harvesting,
business intelligence, etc.
• What is not data mining?
–
–
–
–
(Deductive) query processing.
Expert systems or small ML/statistical programs
Statistics
Artificial Intelligence
Page 10
Data Mining: Process
Pattern Evaluation
– Data mining: the core of
knowledge discovery
Data Mining
process.
Task-relevant Data
Data Warehouse
Selection
Data Cleaning
Data Integration
Databases
Page 11
What Is Data Mining – Steps in the DM
Process
• Data cleaning, noise removal
• Data Integration- data warehousing techniques,
OLAP
• Data Relevancy decision
• Data Transformation (data qube, aggregation and
summarization)
• Pattern evaluations
• Results presentation
Page 12
What is DM: Potential Applications
• Database analysis and decision support
– Market analysis and management
• target marketing, customer relation management, market basket
analysis, cross selling, market segmentation
– Risk analysis and management
• Forecasting, customer retention, improved underwriting, quality
control, competitive analysis
– Fraud detection and management
• Other Applications
– Text mining (news group, email, documents) and Web analysis.
– Intelligent query answering
Page 13
Market Analysis and Management (1)
• Where are the data sources for analysis?
– Credit card transactions, loyalty cards, discount coupons,
customer complaint calls, plus (public) lifestyle studies
• Target marketing
– Find clusters of “model” customers who share the same
characteristics: interest, income level, spending habits, etc.
• Determine customer purchasing patterns over time
– Conversion of single to a joint bank account: marriage, etc.
• Cross-market analysis
– Associations/co-relations between product sales
– Prediction based on the association information
Page 14
Market Analysis and Management (2)
• Customer profiling
– data mining can tell you what types of customers buy what
products (clustering or classification)
• Identifying customer requirements
– identifying the best products for different customers
– use prediction to find what factors will attract new customers
• Provides summary information
– various multidimensional summary reports
– statistical summary information (data central tendency and
variation)
Page 15
Corporate Analysis and Risk
Management
• Finance planning and asset evaluation
– cash flow analysis and prediction
– contingent claim analysis to evaluate assets
– cross-sectional and time series analysis (financial-ratio, trend
analysis, etc.)
• Resource planning:
– summarize and compare the resources and spending
• Competition:
– monitor competitors and market directions
– group customers into classes and a class-based pricing
procedure
– set pricing strategy in a highly competitive market
Page 16
Fraud Detection and Management (1)
• Applications
– widely used in health care, retail, credit card services,
telecommunications (phone card fraud), etc.
• Approach
– use historical data to build models of fraudulent behavior and
use data mining to help identify similar instances
• Examples
– auto insurance: detect a group of people who stage accidents to
collect on insurance
– money laundering: detect suspicious money transactions (US
Treasury's Financial Crimes Enforcement Network)
– medical insurance: detect professional patients and ring of
doctors and ring of references
Page 17
Fraud Detection and Management (2)
• Detecting inappropriate medical treatment
• Detecting telephone fraud
– Telephone call model: destination of the call, duration,
time of day or week. Analyze patterns that deviate
from an expected norm.
– British Telecom identified discrete groups of callers
with frequent intra-group calls, especially mobile
phones, and broke a multimillion dollar fraud.
• Retail
– Analysts estimate that 38% of retail shrink is due to
dishonest employees.
Page 18
Other Applications
• Sports
– IBM Advanced Scout analyzed NBA game statistics (shots
blocked, assists, and fouls) to gain competitive advantage for
New York Knicks and Miami Heat
• Astronomy
– JPL and the Palomar Observatory discovered 22 quasars with
the help of data mining
• Internet Web Surf-Aid
– IBM Surf-Aid applies data mining algorithms to Web access
logs for market-related pages to discover customer preference
and behavior pages, analyzing effectiveness of Web marketing,
improving Web site organization, etc.
Page 19
Architecture of a Typical Data Mining
System
Graphical user interface
Pattern evaluation
Data mining engine
Knowledge-base
Database or data
warehouse server
Data cleaning & data integration
Databases
Filtering
Data
Warehouse
Page 20
Data Mining System Architecture
• Database, data warehouse, data files- set of data to be mined.
Data Cleaning and data integration may be performed at this
stage
• Database or data warehouse server is responsible for fetching
relevant data. How to define relevancy?
• Knowledge Base – Domain knowledge that drives a search for
patterns. Concept hierarchy, User Beliefs, Interestingness
Constraints
• Data Mining Engine-Functional algorithms to perform a search
for domain experts
• Pattern Evaluation – Use knowledge base and other methods to
narrow search for domain patters
• GUI – Communicator between users and data mining system
Page 21
Data Mining: On What Kind of Data?
• Relational databases – Universal relation vs
Multirelational search
• Data warehouses
• Transactional databases
• Advanced DB and information repositories
–
–
–
–
–
–
Object-oriented and object-relational databases
Spatial databases
Time-series data and temporal data
Text databases and multimedia databases
Heterogeneous and legacy databases
WWW
Page 22
Data Mining: On What Kind of Data?
• Attribute Types:
– Categorical – attribute that has a finite number of values
– Ordinal – attributes can be ordered by their values
• Attribute Transformations:
– Continuing - attribute that may have infinite but countable set of
values. These attributes always can be ordered
– Interval scale
– Boolean
• Nominal – attributes that cannot be ordered by their values
– Operational - example measurement of programming
productivity as am(n+m)log(a+b)/2b, where a is the number of
unique operators,b is the number of unique operands, n-number
of total operators occurences and m the number of total
operands occurences
Page 23
Data Mining Tasks
• Association (correlation and causality)
– Multi-dimensional vs. single-dimensional association
– age(X, “20..29”) ^ income(X, “20..29K”) -> buys(X, “PC”) [support
= 2%, confidence = 60%]
– contains(T, “computer”) -> contains(x, “software”) [1%, 75%]
– What is support? – the percentage of the tuples in the database
that have age between 20 and 29 and income between 20K and
29K and buying PC
– What is confidence? – the probability that if person is between 20
and 29 and income between 20K and 29K then it buys PC
• Clustering (getting data that are close together into the same
cluster.
• What does “close together” means?
Page 24
Distances between data
• Distance between data is a measure of dissimilarity
between data.
d(i,j)>=0; d(i,j) = d(j,i); d(i,j)<= d(i,k) + d(k,j)
• Euclidean distance: <x1,x2, … xk> and <y1,y2,…yk>
• Standardize variables by finding standard deviation and
dividing each xi by standard deviation of X
• Covariance(X,Y)=1/k(Sum(xi-mean(x))(y(I)-mean(y))
• Boolean variables and their distances
Page 25
Data Mining Tasks
• Outlier analysis
– Outlier: a data object that does not comply with the general behavior of
the data
– It can be considered as noise or exception but is quite useful in fraud
detection, rare events analysis
• Trend and evolution analysis
– Trend and deviation: regression analysis
– Sequential pattern mining, periodicity analysis
– Similarity-based analysis
• Other pattern-directed or statistical analyses
Page 26
Are All the “Discovered” Patterns
Interesting?
• A data mining system/query may generate thousands of patterns,
not all of them are interesting.
– Suggested approach: Human-centered, query-based, focused mining
• Interestingness measures: A pattern is interesting if it is easily
understood by humans, valid on new or test data with some degree
of certainty, potentially useful, novel, or validates some hypothesis
that a user seeks to confirm
• Objective vs. subjective interestingness measures:
– Objective: based on statistics and structures of patterns, e.g., support,
confidence, etc.
– Subjective: based on user’s belief in the data, e.g., unexpectedness,
novelty, actionability, etc.
Page 27
Are All the “Discovered” Patterns
Interesting? - Example
coffee
0
1
0
5
70
1
5
tea
20
75
25
Conditional probability that if one buys coffee, one also buys tea
is 2/9
Conditional probability that if one buys tea she also buys coffee
is 20/25=.8
However, the probability that she buys coffee is .9
So, is it significant inference that if customer buys tea she also buys
coffee?
Is buying tea and coffee independent activities?
Page 28
How to measure Interestingness
• RI = | X , Y| - |X||Y|/N
• Support and Confidence: |X Y|/N – support and |X Y|/|X| confidence of X->Y
• Chi^2: (|XY| - E(|XY|)) ^2 /E(|XY|);
• J(X->Y) = P(Y)(P(X|Y)*log (P(X|Y)/P(X)) + (1- P(X|Y))*log ((1P(X|Y)/(1-P(X))
• Sufficiency (X->Y) = P(X|Y)/P(X|!Y); Necessity (X->Y) =
P(!X|Y)/P(!X|!Y). Interestingness of Y->X is
NC++ = 1-N(X->Y)*P(Y), if N(…) is less than 1 or 0 otherwise
Page 29
Can We Find All and Only Interesting
Patterns?
• Find all the interesting patterns: Completeness
– Can a data mining system find all the interesting patterns?
– Association vs. classification vs. clustering
• Search for only interesting patterns: Optimization
– Can a data mining system find only the interesting patterns?
– Approaches
• First general all the patterns and then filter out the uninteresting
ones.
• Generate only the interesting patterns—mining query optimization
Page 30
A Multi-Dimensional View of Data Mining
Classification
• Databases to be mined
– Relational, transactional, object-oriented, object-relational,
active, spatial, time-series, text, multi-media, heterogeneous,
legacy, WWW, etc.
• Knowledge to be mined
– Characterization, discrimination, association, classification,
clustering, trend, deviation and outlier analysis, etc.
– Multiple/integrated functions and mining at multiple levels
• Techniques utilized
– Database-oriented, data warehouse (OLAP), machine learning,
statistics, visualization, neural network, etc.
• Applications adapted
– Retail, telecommunication, banking, fraud analysis, DNA mining, stock
Page 31
market analysis, Web mining, Weblog analysis, etc.
OLAP Mining: An Integration of Data Mining
and Data Warehousing
• Data mining systems, DBMS, Data warehouse
systems coupling
– No coupling, loose-coupling, semi-tight-coupling, tight-coupling
• On-line analytical mining data
– integration of mining and OLAP technologies
• Interactive mining multi-level knowledge
– Necessity of mining knowledge and patterns at different levels of
abstraction by drilling/rolling, pivoting, slicing/dicing, etc.
• Integration of multiple mining functions
– Characterized classification, first clustering and then association
Page 32
An OLAM Architecture
Mining query
Mining result
Layer4
User Interface
User GUI API
OLAM
Engine
OLAP
Engine
Layer3
OLAP/OLAM
Data Cube API
Layer2
MDDB
MDDB
Meta Data
Filtering&Integration
Database API
Filtering
Layer1
Data cleaning
Databases
Data
Data integration Warehouse
Data
Repository
Page 33
Major Issues in Data Mining (1)
• Mining methodology and user interaction
– Mining different kinds of knowledge in databases
– Interactive mining of knowledge at multiple levels of abstraction
– Incorporation of background knowledge
– Data mining query languages and ad-hoc data mining
– Expression and visualization of data mining results
– Handling noise and incomplete data
– Pattern evaluation: the interestingness problem
• Performance and scalability
– Efficiency and scalability of data mining algorithms
– Parallel, distributed and incremental mining methods
Page 34
Major Issues in Data Mining (2)
• Issues relating to the diversity of data types
– Handling relational and complex types of data
– Mining information from heterogeneous databases and global
information systems (WWW)
• Issues related to applications and social impacts
– Application of discovered knowledge
• Domain-specific data mining tools
• Intelligent query answering
• Process control and decision making
– Integration of the discovered knowledge with existing knowledge:
A knowledge fusion problem
– Protection of data security, integrity, and privacy
Page 35
Summary
• Data mining: discovering interesting patterns from large amounts of
data
• A natural evolution of database technology, in great demand, with
wide applications
• A KDD process includes data cleaning, data integration, data
selection, transformation, data mining, pattern evaluation, and
knowledge presentation
• Mining can be performed in a variety of information repositories
• Data mining functionalities: characterization, discrimination,
association, classification, clustering, outlier and trend analysis, etc.
• Classification of data mining systems
• Major issues in data mining
Page 36