Title: Data Mining Applications
1Data Mining Applications
- Fortune (Financial Magazine) in its annual report
of the best 500 companies. 80 of them are using
data mining for decision support. - Example Detecting unusual calling patterns.
2Data Mining - Application
- The main three business areas where data mining
is applied are - (1) Market Management
- Target Marketing
- Customer relationship management
- Market basket analysis
- Cross Selling
- (2) Risk Management
- Forecasting
- Customer retention
- Improved underwriting
- Quality control
- Competitive Analysis
- (3) Fraud Management
- Fraud detection
3Market Management Applications
- Market management is one of the most
well-established application areas for data
mining. - The organization builds the database of customer
product preferences and lifestyles from such
sources as credit card transactions, loyalty
cards, warranty cards, discount coupons, entries
to free prizes drawings and customer complaint
calls. - Data mining algorithms then surf through the data
looking for clusters of model consumers who all
share the same characteristics (examples income,
interests and spending habits).
4Determining customer purchasing patterns over time
- Examples
- The sequence in which they take up financial
services as their family grows - How they change their cars.
- Converting a single bank account to a joint
account indicates marriage which could lead to
future opportunities to get loans, insurance,
study fees.... - By understanding these patterns the organization
can advertise just-in-time.
5Improving Catalog Telesales
- The goal is track the products its customers
order most frequently as well as to suggest the
purchase of those products in future order. - Some products associations are obvious Camera
Films, Radio Batteries...
6Loyalty Cards
- To reward your frequently buyers.
- Cardholders get special treatment such as
exclusive discounts on selected items, to
encourage them to do more shopping at the shop
and less likely to visit the competition.
7Turning external influences to advantages
- The mining discovered -in an insurance company-
two groups of customers who appeared at first
sight to be similar because they had similar
levels of income and savings. Even the company
tried to merge them but after the analysis they
found that when one group decided to invest the
other group decided to cash in its policies.
8They found later that the reason was because of
the different fiscal treatment each group
received from the government
Payments as of Total
30 25 20 15 10 5 0
1988 1989 1990
1991 1992
9Getting more out of store promotions
- A data mining system found that shoppers who were
coming into a store were gravitating to the left
side of the store for the promotional items and
were not necessarily shopping the whole store. As
a result the manager added apparel, which was
stocked on the right side of the store, to the
promotion and launched a similar mid week
promotion. As a result, sales of all products
including apparel increased.
10Risk Management Applications
- Risk associated with insurance or investments.
- Risk associated to business risks arising from
competitive threat. - Risk associated to poor product quality.
- Risk associated to customer attrition (i.e. The
loss of customers, especially to competitors.
Examples in the retails, finance and
telecommunications fields). - The idea here is to build a model of a vulnerable
customer who shows characteristics typical of one
who is likely to leave for a competitive company.
11- For example customer losses may frequently
follow a change of address or a recent protracted
exchange with an agent of the company. - One US bank uses such models to predict the loss
of customers up to one year in advance. - Another bank analyzes more than one million
credit card account histories to ensure that it
is not over expected to high rates of attraction.
12- Retail organizations uses data mining to better
understanding the vulnerability of certain
products to competitive offerings or changing
consumer purchasing patterns. Historical
purchasing patterns of customers are analyzed to
identify groups of customers with low product or
brand loyalty. - A historical of bad and good loan histories is
used to develop a profile of a bad and good loan
applicant.
13- Telecommunication companies have several billion
dollars in uncollectible debts every year. Data
mining can build models that help predict whether
a particular account is likely to be collectible
and is therefore worth going after. - Competitive Intelligence (CI) is the process of
collecting, analyzing and disseminating
information about industry developments or market
trends to enhance a companys competitiveness.
14Forecasting Financial Future
- If changes in financial behavior can be
predicted, the organization can adjust its
investment strategy and capitalize on the
predicted changes. - Financial Engineering The application of
advanced quantitative techniques such as
statistics and data mining in the area of risk
management. - Example The ability to forecast the right price
of a future which is a contract that allows
someone to buy something at a certain price on a
certain date in the future. - A model is used to predict the future price
changes.
15Pricing Strategy in a Highly Competitive Market
- A chain of gasoline stations used data mining to
develop profitable pricing strategies in a very
competitive marketplace, by developing a model
that helps to determine - Appropriate pricing for its products on a day-to
day basis, with a view to maximizing sales and
profits. - Sales volumes and profitability.
- The likely competitive reaction to their price
changes. - The likely profitability of a new station.
16Fraud Management Applications
- Those sectors suffer more than most - especially
those where there are many transactions such as
health care, retail, credit card service and
telecommunication. - The goal is to use historical data to build a
model of fraudulent behavior and then use data
mining to help identify similar instances of this
behavior. - Detecting Telephone Fraud Example some of the
more important elements (patterns) in building
the model are the destination of the call,
duration, time of day and week.
17Detecting inappropriate medical treatments
- An insurance company maintains computerized
records of every doctors consultation in
Australia, including details on the diagnosis,
prescribed drugs and recommended treatment. - Using traditional data analysis techniques they
noticed a rapid increase in the number of
prescribed pathology tests. - Using data mining they were able to identify
which combinations of tests were commonly used,
they were able to detect these invalid
combinations and to no longer accept them for
benefit payment, and they were able to identify
that in many cases that a certain test has been
used at given symptoms.
18Future Application Areas
- Text Mining Words are analyzed in context, for
example the word memory used in a medical
article or a computer article. - Web Analytics to develop insights into users
behavior on the internet. For example today
hypertext are typically fixed, the site
developers have provided the most likely links by
trying to second guess what the user wants to do
next. With data mining, historical user browsing
patterns can be analyzed to dynamically suggest
related sites for users to visit.
19When Things Go Wrong?!
- A class of divorced women
- A data mining system discovered that divorced
women have distinctly different shopping pattern
from those of either single or married women. - After analyzing the data they found that the data
on martial status was much less accurate than the
other data because of cultural norms.
20- Missing the Point
- While preparing to mine a database of hospital
patient admission records. They found this
strange graph about the temperature. Then they
discovered that the nurse was likely to have the
temperature 37oC recorded as either 36.9oC or
37.1oC.
Population
35o 36o
37o 38o Temperature