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2012
Get a “Data Verified and Validated” Stamp




 'Think Green, Think                           Rely on Relevant
                       Take Data Quality to
   Blue’, Make the                              Data! Refresh,
                       the Next Level, Data
  Internet Highway                               Revamp and
                        Verification via the
   Devoid of Data                               Revitalize your
                               Cloud!
      Junkyards!                                  Database!




                         Expand Your
                          Enterprise
                        Exponentially!
Data Verification and Validation | February 2012




Table of Contents

INTRODUCTION……………………………………………………………………………………………………………………..….1

   Why Data Verification and Validation is Important……………………………………………..……………….3

DATA VERIFICATION AND VALIDATION DEFINED ……………………………………………..……………………..4

DATA LAUNDERING MECHANISM ……………………………………………………………………………………………………..5

NEW BUSINESS PRACTICES ..................................................................................................................... 4

CLOUD BASED DATA VERIFICATION ...................................................................................................... 8

CONCLUSION ............................................................................................................................................. 9




SUMMARY

This whitepaper aims to provide enterprises with an overview of data verification and
validation, the methods and techniques used to keep data clean as well as new business
practices in the industry that help in maintaining data quality and preventing data decay. It also
aims to encourage enterprises to extend new approaches of “Think Blue” and “Think Green”, in
order to create a pollution free virtual environment.




                                                                                                                                         2|Page
Data Verification and Validation | February 2012

     Is data driving your dynamic business environment?
     Is accurate data important in business decision making?
     Is verified data relevant if valid?
     Is validated data relevant if accurate?


If your answer is yes to the questions above, you will definitely understand the basis of why
data verification and validation is considered two sides of the same coin.

While new age concepts of ‘Think Green’ and ‘Think Blue’ are focused on conserving and
‘cleaning’ the environment, a similar drive on the Internet needs to be explored to obliterate
data dumps and create a pollution free virtual space.

INTRODUCTION


                               Verification + Validation = Valuable


Data is the heart of every organization and is an integral aspect in enabling decision making.
The importance of accurate data is explicit in the fact that strategies devised based on incorrect
data indefinitely leads to inconsistent decision making. If data sustains the life of enterprises,
accuracy drives processes and strategies in the right direction.

Accurate and updated data is vital for organizations across industries and relevant to business
developers, sales professionals, marketers, market researchers, recruiters and enterprises;
whether it is required to find updated and targeted sales leads for your team, or to increase ROI
from marketing investments or to screen verified candidates while headhunting.

The need for data quality has rapidly increased however not many people or enterprises know
how to obtain or maintain quality data. As per Google search statistics, there are 135,000
searches every month globally for the term “data quality”, however there are only 2,900
searches for the term “data quality tools". That is only 2 percent!

There are advanced processes and technologies in place, although enterprises usually do not
have the time and resources to implement them and therefore prefer data maintenance and
management through experts from data service companies.
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                                                                                       3|Page
Data Verification and Validation | February 2012


            How Accurate Data Accelerates Business Processes




Why Data Verification and Validation is Important

B2B data is integral to enterprises and it not only should be accurate but updated too. When
was the last time your database was updated? Did you know that in a year almost 25% of your
data goes stale? According to MarketingSherpa, an average of 2.1% of contact details change
every month!

To gain a better understanding on the extent to which data decays, the seminar presented by
John M. Coe, President and Founder of The Sales and Marketing Institute on ‘B2B Data Decay –
The Untold Story’, provides many insights.


                               Contact B2B Data Decay (Yearly)

                             42.9                           Change in Job Function
                                        41.9                Change in Phone Number
              65.8                                          Change in Address
                                           37.3
                                                            Change in Email Address
                       3.8      34.2                        Change in Company Name
                                                            Change in Name




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                                                                                       4|Page
Data Verification and Validation | February 2012



                           Other Reasons for B2B Data Decay (Yearly)

                               29.6
                                                     Change in position of individuals within Companies
                                                     Change in Jobs by Individuals
         41.2                            12.3
                                                     Change in Location of the Company
                                  4.6
                                                     Change in Company Name (eg. Merger)




While these numbers indicate a high percentage of changes in data on a yearly basis, it also
points to the fact that either you have updated data or not have data at all. To emphasize the
importance of accurate and relevant data, consider this, with B2B databases decaying around
30 percent every year, you will technically be spending a third of annual sales and marketing
budget on nothing but dead information!



DATA VERIFICATION AND VALIDATION DEFINED


                                      Verification is Valid when
                                       Validation is Verified!


A basic definition of data verification is a process that ensures that data is correct and error
free. The data verification process is entirely factual and does not focus on the significance of
the result. This is where data validation is important, which is a process that ensures data is
logical and reasonable.

For instance, if you need to identify key business contacts in the automotive industry based in
Detroit, a relevant search result will provide details of Managers, D (Director) Level, V (Vice
President) Level and C (CEO) Level contacts located in Detroit in the automotive industry.
However, if the data is not verified and validated, you will find results of key business people in
the automotive industry located in Washington or contacts based in Detroit from a different
industry.


                                                                                             Back to Index

                                                                                              5|Page
Data Verification and Validation | February 2012

DATA LAUNDERING MECHANISM


                                   Clean Up Clutter, Make Space
                                       For Data that Counts!


Verification is conducted to ensure data entered is true to the original source. Some of the
methods used include:-
            Proof Reading – data is checked by manually comparing it with the original
            document.
            Double Entry Checks – where data is reentered and the two copies are compared
            for discrepancies.
            Other methods also include phone and email verification.

While manual methods may be time consuming and expensive, new software technologies
have been developed to automate the data verification process, proving to be cost effective as
well as faster.

Validation is conducted to qualify the logic of the content within a reasonable framework or
parameters. It is a process that is computer generated using codes to validate a range of data.
Some of the validation codes or checks commonly used are:-

 Validation Code
                                     Function                             Examples of Usage
     / Check
                    Searches for spelling errors through a
 Spell Check                                                     When word processing
                    search from the dictionary
                    Checks that the data is within a certain     When a password needs to be of a
 Length Check
                    number of characters                         particular length
                    Checks if the data is entered in the right   When bank account numbers or
 Format Check
                    format                                       insurance numbers are entered

 Presence Check     Checks that key fields have data entered     When certain fields are mandatory

                                                                 There are only 24 hours in a day and 7
 Lookup Check       Checks for acceptable or logical values
                                                                 days in a week
                    Checks for values that need to be entered    Specific parameters within which data
 Range Check
                    within a certain range                       needs to be entered.




                                                                                              Back to Index

                                                                                                6|Page
Data Verification and Validation | February 2012


Verification and validation applied in combination provides for quality assurance and is highly
recommended for any enterprise or professional utilizing data to make decisions or develop
strategies.



NEW BUSINESS PRACTICES

Crowdsourcing

Crowdsourcing is a community driven concept wherein data is contributed by users. Various
groups and people provide information such as email addresses, phone numbers and social
media profiles. This source provides unlimited amount of data and information, making it
possible build databases that could effectively utilized.

From ‘Crowdsourcing’ to ‘Changesourcing’

While crowdsourcing is the way to go currently, data service companies are taking it a step
further with a new approach of ‘changesourcing’. Users are not only encouraged to contribute
information, they are also urged to constantly update the information provided. Utilizing the
community-driven concept of contribution, this approach includes updating information as
well.

Why Download when you can View

In lines with being conscious of the conservation of the virtual space environment, sometimes it
is unnecessary to download an entire dataset. Why clutter you disk space with data that will
never be used?

Data service companies are providing the option where users can view some of the contacts
before downloading a whole dataset. This makes it easier for the user in saving time and
resources on downloading and browsing through entire database that may not have been
relevant in the first place.




                                                                                    Back to Index


                                                                                      7|Page
Data Verification and Validation | February 2012


CLOUD BASED DATA VERIFICATION


                           Revolutionalize your Approach to Data
                           Management, Cleanse Data in The Cloud!


The Internet provides a seamless environment for exchange of services and resources beyond
boundaries. Then why should data quality management limit itself? Joining the band wagon of
cloud computing, data quality service companies in addition to the traditional on-premise
management are moving further to offer verification through the cloud.

If you are wondering, what is the meaning of this much spoken of ‘cloud’? The cloud basically
acts as a metered service on the Internet, where computing is provided more as a service than
as a product. It is a network space (such as the Internet), wherein computers and other devices
can utilize software, information and shared resources, offered as a metered service. The
dynamic nature of this data center environment enables data service companies provide not
only on-premise data quality management, but cloud-based verification as well.

Currently, verification is the only kind of data service offered in the cloud, wherein verification
of names, addresses, phone number and checks with the do-not-call registry is provided. Data
service companies are in the process of integrating cloud based verification systems and are
looking beyond only data verification in the cloud. The cloud based approach to data
management is definitely a huge benefit to enterprises and management of CRM Systems. The
cloud being a vast repository of information, the next step would be integrating information on
the cloud into business processes.

CONCLUSION


                           Transform Data to Insightful Information


As Data is an integral part of any business process for all enterprises and professionals, quality
should be of highest priority; quality in terms of data accuracy, relevancy and being up-to-date.
Data needs to be collected, compiled, organized and maintained in a way that it provide
insightful information. New processes and technologies have been developed to maintain
‘clean and green’ databases, one which has data that is accurate as well updated.
                                                                                       Back to Index


                                                                                        8|Page
Data Verification and Validation | February 2012


The way forward is to integrate data quality management into business processes and
enterprises.

Data dumps need to be deleted,
Data decay needs to be obliterated,
Data quality needs to be nurtured,
For a cleaner, pollution free virtual space environment!




ABOUT INFO CHECKPOINT

Info CheckPoint is a preferred provider of credible business to business (B2B) information, database
management, and marketing and sales solutions. The company manages, maintains and monitors an
extensive database of people, companies and industries. The database contains over 15 million people,
2 million companies in 80,000 industry sectors. Business information that is archived through crowd
sourcing is converted to high quality, verified, accurate and relevant data. With an objective to enable
customizable prospecting and speed in decision making, Info CheckPoint also facilitates companies align
their marketing and sales strategies through B2B intelligent data techniques.

Contact Information

Phone: 800-662-2980
Email: support@infocheckpoint.com
www.infocheckpoint.com




                                                                                             9|Page

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Data Verification

  • 1. 2012 Get a “Data Verified and Validated” Stamp 'Think Green, Think Rely on Relevant Take Data Quality to Blue’, Make the Data! Refresh, the Next Level, Data Internet Highway Revamp and Verification via the Devoid of Data Revitalize your Cloud! Junkyards! Database! Expand Your Enterprise Exponentially!
  • 2. Data Verification and Validation | February 2012 Table of Contents INTRODUCTION……………………………………………………………………………………………………………………..….1 Why Data Verification and Validation is Important……………………………………………..……………….3 DATA VERIFICATION AND VALIDATION DEFINED ……………………………………………..……………………..4 DATA LAUNDERING MECHANISM ……………………………………………………………………………………………………..5 NEW BUSINESS PRACTICES ..................................................................................................................... 4 CLOUD BASED DATA VERIFICATION ...................................................................................................... 8 CONCLUSION ............................................................................................................................................. 9 SUMMARY This whitepaper aims to provide enterprises with an overview of data verification and validation, the methods and techniques used to keep data clean as well as new business practices in the industry that help in maintaining data quality and preventing data decay. It also aims to encourage enterprises to extend new approaches of “Think Blue” and “Think Green”, in order to create a pollution free virtual environment. 2|Page
  • 3. Data Verification and Validation | February 2012 Is data driving your dynamic business environment? Is accurate data important in business decision making? Is verified data relevant if valid? Is validated data relevant if accurate? If your answer is yes to the questions above, you will definitely understand the basis of why data verification and validation is considered two sides of the same coin. While new age concepts of ‘Think Green’ and ‘Think Blue’ are focused on conserving and ‘cleaning’ the environment, a similar drive on the Internet needs to be explored to obliterate data dumps and create a pollution free virtual space. INTRODUCTION Verification + Validation = Valuable Data is the heart of every organization and is an integral aspect in enabling decision making. The importance of accurate data is explicit in the fact that strategies devised based on incorrect data indefinitely leads to inconsistent decision making. If data sustains the life of enterprises, accuracy drives processes and strategies in the right direction. Accurate and updated data is vital for organizations across industries and relevant to business developers, sales professionals, marketers, market researchers, recruiters and enterprises; whether it is required to find updated and targeted sales leads for your team, or to increase ROI from marketing investments or to screen verified candidates while headhunting. The need for data quality has rapidly increased however not many people or enterprises know how to obtain or maintain quality data. As per Google search statistics, there are 135,000 searches every month globally for the term “data quality”, however there are only 2,900 searches for the term “data quality tools". That is only 2 percent! There are advanced processes and technologies in place, although enterprises usually do not have the time and resources to implement them and therefore prefer data maintenance and management through experts from data service companies. Back to Index 3|Page
  • 4. Data Verification and Validation | February 2012 How Accurate Data Accelerates Business Processes Why Data Verification and Validation is Important B2B data is integral to enterprises and it not only should be accurate but updated too. When was the last time your database was updated? Did you know that in a year almost 25% of your data goes stale? According to MarketingSherpa, an average of 2.1% of contact details change every month! To gain a better understanding on the extent to which data decays, the seminar presented by John M. Coe, President and Founder of The Sales and Marketing Institute on ‘B2B Data Decay – The Untold Story’, provides many insights. Contact B2B Data Decay (Yearly) 42.9 Change in Job Function 41.9 Change in Phone Number 65.8 Change in Address 37.3 Change in Email Address 3.8 34.2 Change in Company Name Change in Name Back to Index 4|Page
  • 5. Data Verification and Validation | February 2012 Other Reasons for B2B Data Decay (Yearly) 29.6 Change in position of individuals within Companies Change in Jobs by Individuals 41.2 12.3 Change in Location of the Company 4.6 Change in Company Name (eg. Merger) While these numbers indicate a high percentage of changes in data on a yearly basis, it also points to the fact that either you have updated data or not have data at all. To emphasize the importance of accurate and relevant data, consider this, with B2B databases decaying around 30 percent every year, you will technically be spending a third of annual sales and marketing budget on nothing but dead information! DATA VERIFICATION AND VALIDATION DEFINED Verification is Valid when Validation is Verified! A basic definition of data verification is a process that ensures that data is correct and error free. The data verification process is entirely factual and does not focus on the significance of the result. This is where data validation is important, which is a process that ensures data is logical and reasonable. For instance, if you need to identify key business contacts in the automotive industry based in Detroit, a relevant search result will provide details of Managers, D (Director) Level, V (Vice President) Level and C (CEO) Level contacts located in Detroit in the automotive industry. However, if the data is not verified and validated, you will find results of key business people in the automotive industry located in Washington or contacts based in Detroit from a different industry. Back to Index 5|Page
  • 6. Data Verification and Validation | February 2012 DATA LAUNDERING MECHANISM Clean Up Clutter, Make Space For Data that Counts! Verification is conducted to ensure data entered is true to the original source. Some of the methods used include:- Proof Reading – data is checked by manually comparing it with the original document. Double Entry Checks – where data is reentered and the two copies are compared for discrepancies. Other methods also include phone and email verification. While manual methods may be time consuming and expensive, new software technologies have been developed to automate the data verification process, proving to be cost effective as well as faster. Validation is conducted to qualify the logic of the content within a reasonable framework or parameters. It is a process that is computer generated using codes to validate a range of data. Some of the validation codes or checks commonly used are:- Validation Code Function Examples of Usage / Check Searches for spelling errors through a Spell Check When word processing search from the dictionary Checks that the data is within a certain When a password needs to be of a Length Check number of characters particular length Checks if the data is entered in the right When bank account numbers or Format Check format insurance numbers are entered Presence Check Checks that key fields have data entered When certain fields are mandatory There are only 24 hours in a day and 7 Lookup Check Checks for acceptable or logical values days in a week Checks for values that need to be entered Specific parameters within which data Range Check within a certain range needs to be entered. Back to Index 6|Page
  • 7. Data Verification and Validation | February 2012 Verification and validation applied in combination provides for quality assurance and is highly recommended for any enterprise or professional utilizing data to make decisions or develop strategies. NEW BUSINESS PRACTICES Crowdsourcing Crowdsourcing is a community driven concept wherein data is contributed by users. Various groups and people provide information such as email addresses, phone numbers and social media profiles. This source provides unlimited amount of data and information, making it possible build databases that could effectively utilized. From ‘Crowdsourcing’ to ‘Changesourcing’ While crowdsourcing is the way to go currently, data service companies are taking it a step further with a new approach of ‘changesourcing’. Users are not only encouraged to contribute information, they are also urged to constantly update the information provided. Utilizing the community-driven concept of contribution, this approach includes updating information as well. Why Download when you can View In lines with being conscious of the conservation of the virtual space environment, sometimes it is unnecessary to download an entire dataset. Why clutter you disk space with data that will never be used? Data service companies are providing the option where users can view some of the contacts before downloading a whole dataset. This makes it easier for the user in saving time and resources on downloading and browsing through entire database that may not have been relevant in the first place. Back to Index 7|Page
  • 8. Data Verification and Validation | February 2012 CLOUD BASED DATA VERIFICATION Revolutionalize your Approach to Data Management, Cleanse Data in The Cloud! The Internet provides a seamless environment for exchange of services and resources beyond boundaries. Then why should data quality management limit itself? Joining the band wagon of cloud computing, data quality service companies in addition to the traditional on-premise management are moving further to offer verification through the cloud. If you are wondering, what is the meaning of this much spoken of ‘cloud’? The cloud basically acts as a metered service on the Internet, where computing is provided more as a service than as a product. It is a network space (such as the Internet), wherein computers and other devices can utilize software, information and shared resources, offered as a metered service. The dynamic nature of this data center environment enables data service companies provide not only on-premise data quality management, but cloud-based verification as well. Currently, verification is the only kind of data service offered in the cloud, wherein verification of names, addresses, phone number and checks with the do-not-call registry is provided. Data service companies are in the process of integrating cloud based verification systems and are looking beyond only data verification in the cloud. The cloud based approach to data management is definitely a huge benefit to enterprises and management of CRM Systems. The cloud being a vast repository of information, the next step would be integrating information on the cloud into business processes. CONCLUSION Transform Data to Insightful Information As Data is an integral part of any business process for all enterprises and professionals, quality should be of highest priority; quality in terms of data accuracy, relevancy and being up-to-date. Data needs to be collected, compiled, organized and maintained in a way that it provide insightful information. New processes and technologies have been developed to maintain ‘clean and green’ databases, one which has data that is accurate as well updated. Back to Index 8|Page
  • 9. Data Verification and Validation | February 2012 The way forward is to integrate data quality management into business processes and enterprises. Data dumps need to be deleted, Data decay needs to be obliterated, Data quality needs to be nurtured, For a cleaner, pollution free virtual space environment! ABOUT INFO CHECKPOINT Info CheckPoint is a preferred provider of credible business to business (B2B) information, database management, and marketing and sales solutions. The company manages, maintains and monitors an extensive database of people, companies and industries. The database contains over 15 million people, 2 million companies in 80,000 industry sectors. Business information that is archived through crowd sourcing is converted to high quality, verified, accurate and relevant data. With an objective to enable customizable prospecting and speed in decision making, Info CheckPoint also facilitates companies align their marketing and sales strategies through B2B intelligent data techniques. Contact Information Phone: 800-662-2980 Email: support@infocheckpoint.com www.infocheckpoint.com 9|Page