“Know your customers and give them what they want” is the fundamental principle of marketing.
This principle is simple in theory, but increasingly challenging to
put into practice. Short of being a mind reader or having a crystal
ball, it's difficult for marketers to know what's on a customer's mind
today, or anticipate what the customer may need or want tomorrow.
The challenge doesn't stem from lack of customer data. The fact is,
customers and prospects are giving us information about themselves all
the time. Through every response, customer contact, event, transaction
and Web site hit, they reveal something about themselves.
Databases are chock full of these useful tidbits, and call centers
and other customer management systems are overflowing with details about
customers and contacts. The challenge is that raw data does not have
value per se; it needs to be turned into useful information.
That is where analytical technology comes into play. A philosopher
once wrote that finding the patterns in the randomness of life is the
way we create beauty and make art. A similar statement could be made
about analytics, which find patterns in the randomness of data so that
you can discover valuable information and gain insight.
An array of analytical products is available for desktop and enterprise systems and for pros and novices alike.
Generally, analytics fall into four categories:
- Statistical analysis
- On-line analytical processing (OLAP)
- Data mining
- Text mining
Statistical analysis refers to a collection of methods used to process large amounts of data to uncover key facts, patterns and trends.
Numerous statistical analysis procedures can be applied, but the two
most commonly used by direct marketers are classification and
segmentation. Classification uses predictor fields to predict a
categorical target field, such as which groups of people will respond to
a mailing. Segmentation divides subjects, objects or variables into
various relatively homogeneous groups (e.g., segmenting customers into
usage-pattern groups).
Popular statistical software can handle the entire analytical
process—planning, data collection, data access, data management and
preparation, data analysis, reporting and deployment.
For example, Rural Cellular Corporation (RCC), which provides
wireless service to subscribers in 14 states covering a population of
5.9 million, uses statistical analysis for market research. This
research includes customer satisfaction and branding studies to
determine positioning for its products and service features. Before
investing money in any new feature, RCC surveys its customers to
determine exactly what features they want, what they want each of the
features to do and how much they are willing to pay for them.
Online Analytical Processing enables users to easily and
selectively extract data and then view it from different perspectives.
For example, a user can request that data be analyzed and presented in a
format that shows all of a company's widgets sold in Wyoming in the
month of August, compares revenue figures with those for the same
products in October, and then compares other product sales in Wyoming
for the same time period.
To facilitate this kind of analysis, OLAP data is stored in a
multidimensional database, which considers each data attribute (such as
product, geographic sales region and time period) as a separate
“dimension.” This management tool allows marketers to quickly review
history and trends to take advantage of emerging opportunities, and take
corrective action on developing problems.
For example, Johnsonville Sausage Inc., a manufacturer and marketer
of fresh, smoked and cooked sausage products, uses OLAP to access
operational and financial data. Johnsonville can compare sales by
customer, region and brand. With this information, it develops more
accurate sales forecasts for production and manufacturing scheduling.
Data mining discovers the meaningful patterns and
relationships in data—separating signals from noise—and provides
decision-making information about the future. Data mining procedures
include the following:
- Association: looking for patterns where one event is connected to another event
- Sequence or path analysis: looking for patterns where one event leads to a later event
- Classification: looking for new patterns
- Clustering: finding and visually documenting groups of facts not previously known
- Forecasting: discovering patterns in data that can lead to reasonable predictions about the future
Data mining provides a clear picture of what is going to happen—in
time to change it—such as which customers might be most valuable, which
customers are likely to defect, or, if the right data is gathered, which
carry the risk of adverse reactions to marketing offers.
For example, Standard Life, a global mutual financial services
company, needed to expand its share of the increasingly competitive
mortgage market. A major part of its efforts was to develop models that
could identify customer characteristics relevant to any mortgage
product. Data mining enabled Standard Life to better understand the
characteristics of its mortgage customers so that it could more
accurately search for potential new clients. As a result, the company
achieved a nine-times greater response to offers and has secured
approximately $50 million worth of mortgage application revenue.
Text mining analyzes unstructured textual data by finding and
discovering the patterns and relationships within thousands of
documents, such as emails, call reports, Web sites and other information
sources.
Text mining extracts terms and phrases and then classifies the terms
into related groups, such as products, organizations or people, using
the meaning and context of the text. This distilled information can be
combined with other data sources and used with traditional data mining
techniques such as clustering, classification and predictive modeling.
Questions to explore include… Which concepts occur together? What
else are they linked to? What do they predict? With answers to such
questions, the marketer is better able to identify potential customer
defection, head it off and then maximize consumer satisfaction.
For example, a major online retailer combines data mining with text
mining to analyze customer calls, emails, Web surveys and other customer
communications to better understand what offers and recommendations are
appropriate for each customer. As a result, the retailer has tripled
its profits from the previous year.
With the massive amounts of customer data being generated every
moment of every day, and the absolute necessity of carefully managing
the customer relationship, analytics are no longer a nice thing to have;
they are essential. The backlash against spam marketing, and new
privacy legislation put into place as a result of this backlash, is
forcing a more scientific approach to the art of marketing.
It will no longer be a matter of just throwing out a hook and seeing
who bites; it will be about taking the time and using the right tools to
truly understand customers, satisfy their needs and wants, and
anticipate what they may want tomorrow.
No comments:
Post a Comment