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Achieving and Maintaining
Quality in B2B Customer Data


As business decisions are
increasingly based on analysis of
in-house data, inaccuracies can
have far-reaching consequences.




                                        PAR AB     Telefon 08-775 36 00
                                        117 90 Stockholm      Fax 08-775 50 88
                                        Årstaängsvägen 11     E-post info@par.se
                                        Org.nr. 556112-5625 Internet www.par.se

                                        A Bisnode Company
Achieving and
Maintaining Quality
in B2B Customer Data
As business decisions are
increasingly based on analysis of
in-house data, inaccuracies can
have far-reaching consequences

The developing functionality of data


Data has grown from being a list of customer contacts to information that forms
the basis for key business decisions: investment, target markets, product
development, premises and staffing.
                                                           1
Yet research shows that between 15% and 40% of the records in the average
company’s in-house database are inaccurate. That means that business
decisions are wrong by that amount too – potentially catastrophic, particularly
in a recession.

Data quality isn’t just about having a correct address, it’s about business
intelligence: knowing whether the company still exists, whether it’s activity
trading and if not, why not? It’s about appending vital information that can
help in making decisions and identifying key contacts to open the door to new
business.

    One company recently sent out a sales catalogue to 50,000 potential customers on their database.
    Every mailshot cost € 2 and the database was 20% inaccurate so € 20,000 was wasted on this
    mailing alone.




The reasons for inaccurate company data fall primarily into five groups:

•         Insufficient investment in database management and updating.

•         Arbitrary uploading of information from other inaccurate sources.

1
    Based on research with more than 450 actual client projects carried out by PAR.


                                                                                                   2
•      Inadequate IT controls, allowing the inputting of duplicate files.

•      Insufficient ongoing monitoring leading to out-of-date information.



The impact of inaccurate data – cost, cost, cost!



•      Business decision-making – if key business decisions are based on
        company data then those decisions will be as wrong as the data is!
        This can affect decisions on: product development, marketing
        messages, geographical locations of (say) offices, focus of sales force,
        future investments, etc.

•      Wastage – if there is significant duplication / inaccuracy in the database
       then time is being spent on targeting non-responsive individuals and
       expensive marketing material will not arrive at all, or will be consigned
       to the trash.

•      Credibility – existing customers are unimpressed to receive inaccurate
        material from a company they’re already doing business with.
        Similarly, potential customers may be discouraged if they receive
        information aimed at executives who have left or that has been sent to
        wrong company addresses.

•      Green / Corporate Social Responsibility impact – sending out unwanted
        and / or duplicate communications impacts on a company’s CSR and
        green credentials, both in terms of the wastage it generates and the
        negative effect on recipients.



Thomas Carvalho, Market Segmentation Manager, Toyota Material Handling Europe:

“A sales person’s job is to sell, not to register precise company data, so it’s helpful to
work with someone who is a specialist in this kind of thing”.




Helene Dahlgren, PAR SE:

“A company in Sweden realised it takes a sales person 15 minutes to find out the right
things about the customer. This can be done by an automatic updating system at less
than a tenth of the cost”.




                                                                                             3
Understanding the problem – Data Audit



The only way to determine the accuracy or otherwise of an in-house customer
database is to match it against an accurate database covering the same
geographical area / industry codes.

Data can then be audited against a master database data match matrix, e.g:
company name, address, zip / postal code / city, telephone number, official
company number. Match algorithms can be used to cover: synonyms,
abbreviations, ‘string distance’, word relevancy, phonetics, ‘experience’.

Table 1 shows an example of the results that might come from a typical
company data audit. It can be seen from this that the postal address, for
example, is only present in 79% of the records held.




Table 1: Data Audit result (Table supplied by PAR).



This audit indicates ‘gaps’ in information that might be due to poor inputting
discipline.

The next step is to ‘link’ existing customer records to an accurate database to
identify to what extent the two databases ‘share’ data.




                                                                                  4
The example summary below (Table 2) illustrates that the company’s database
contained 213 unidentified records when benchmarked against accurate data,
representing 8 per cent of its entire database.




Table 2: Computer-linked identification of worksites (Table supplied by PAR).




                                                                                5
Using this method it is possible to identify duplicates where several customer
numbers have been allocated to companies that actually exist within the same
worksite. In other words, there are several Customer Numbers within the client
database that link to the same ID in the master database. This shows the
number of duplicates that the company needs to eliminate from its database –
in this case representing 4% of all its data.




Table 3: Identifying duplicate records. (Table supplied by PAR).




                                                                             6
Enhancement and Updating


So far, this process has simply identified what is wrong with the data in terms
of incomplete or duplicate records.

The next step towards customer data accuracy is to identify how much the in-
house database can be enhanced – by appending new information – and
updated to increase the completeness of each record.

Table 4 below shows how the in-house database compares, when matched
against the master database. This indicates the degree of enhancement and
updates available to improve the quality of the in-house database.




Table 4: Enhancement and Updates available. (Table supplied by PAR).



‘Not Active’ and Direct Marketing Blocked Companies
Some of the most difficult records to weed out of a database are those where the
company is no longer active or is blocked for direct marketing. These customer
records should not be used for marketing so it’s necessary to identify and
compare against a master database that has been specifically developed for
the identification of customer files.

In the example below, 17% of the company’s database contained inactive
companies that will not generate any sales leads because they have ceased
trading, become bankrupt, gone out of business or merged.




Table 5: Inactive Companies. (Table supplied by PAR).




                                                                                  7
Identification of individuals


Maintaining a database of individual contacts is more difficult than a simple
company database, due to the high movement of individuals within the
marketplace.

The table below indicates that, compared with the Company match which
showed a 92% share, the individual match is only 33%. In other words, two-
thirds of the individual contact details held on the company’s in-house
database were incorrect or duplicated.




Table 6: Identification of individual contacts. (Table supplied by PAR).




                                                                                8
Moving forward to Accuracy in Customer Data

Swedish-based data specialist PAR has introduced a new class of products
designed to help organisations take control of data quality in their customer
databases.

These comprise:

•     Data audit (explained above).

•     Data match and cleansing – 85-95% by automatic data cleansing
       followed by 5-10% identified by manual data cleansing.

•     Enhancement, appending and updating.

•     Monitoring and regular updates.

•     New record ‘one-by-one’ matching.

•     Selecting ‘more of the same’ to increase an existing database.




                                                                                9
Creating a Monitoring Database


Monitoring is a key process in the ongoing accuracy of a database, or it will
quickly go out of date again, particularly in the current volatile economic
climate.

To achieve this, a monitoring database can be set up which links a unique ID
on the master database to a unique ID on the company’s in-house database.
This is easy to maintain because an automated process can be set up, taking
away the need for manual reminders or activity. There’s simply no need to run
manual matches and updates; the monitoring service takes care of this and
ensures the database is always fresh and up-to-date, leaving the user to
concentrate on getting new business.

Updates can be scheduled on a regular basis: daily, weekly or monthly. As
these updates take place, a ‘Change Log’ reports all changes at field level.
Within the record, a flag marks a changed field. Because PAR only updates
changed fields rather than the entire database, the update process is quick and
accurate – and automatic.

This approach is simplicity itself for CRM System Managers because loading
scripts are set up, predefined file layouts and updates are scheduled.
Monitoring and updates can be linked direct to the company’s CRM using PAR’s
Certified CRM plug-ins, enabling the entire process to be run through the
existing CRM – no duplication of inputting or costs.



One-by-one updates


This allows files – for example new customers identified by sales or marketing
teams – to be uploaded and monitored one-by-one. No duplicates can be
imported, which removes the cause of much data inaccuracy, and as records
are uploaded One-by-one they can automatically be identified and updated.




Increasing the universe of potential customers



At the start of this White Paper, we talked about the importance of customer
data in making business decisions. The more accurate and comprehensive that
data, the more effective is the decision-making process, customer
communications and marketing activity. Complete information enables
marketing information to hit the right target time after time, as well as reducing
wastage by sending only to extant and active companies.

To achieve this, PAR has developed its ‘Analysis Online’ analytical tool to
enable companies to identify their most successful customers and find ‘more of
the same’ within the business universe. Customer profiling can identify the

                                                                                10
best target groups and these can be selected for marketing campaigns using
‘PAR Selection’.

PAR Selection links to the company’s monitoring database which enables it to
exclude existing customers from the search. Specific selection variables can be
added. Selections can be saved, stored and administered.



Linking database management into a company’s existing CRM System



By using PAR’s ‘One-by-One’ plug in, companies can verify and enhance their
customer data, and prospect for new customers, through their existing CRM
system.

The plug-in enables users of supported CRM systems* to input search
information they have, say from a telephone conversation, and immediately
enhance it with all other data from PAR’s master database. The application
opens a search window with a hot list of basic information so users can select
the correct company and populate the CRM with all relevant fields.

Research shows that automatic updating and enhancement can be carried out
at less than a tenth of the cost of a sales person asking the questions – and the
final results are far more accurate and complete.

*For supported CRM systems, see Appendix 1.




Maria Lennman, CEO of Cybernetics: “In most big organisations, the company’s value is
in its knowledge and intelligence, particularly information on its customers. It’s vital to
have a solution that adds value and information to the company and doesn’t let
employees keep it to themselves”.

“The companies that will be successful in this economic climate are the ones that are
deciding to invest in their CRM because they need to be aggressive in the market.”




                                                                                        11
Appendix 1 – PAR accredited CRM systems




                                          12
Appendix 2 – About PAR

PAR - DEVELOPERS OF DIRECT MARKETING INFORMATION

PAR was established in 1956 and is one of the leading providers of European
Business Information.

PAR is a database owner and an expert at collecting and handling large volumes of
information, such as postal addresses, telephone numbers and market information.
Depending on our client needs, we deliver the pieces of the information puzzle that
are useful to you – postal addresses, information handling services or long-term CRM
solutions.

PAR’s pan-European database EuroContactPool covers:

•      22 million companies

•      16 million named executives

•      16 countries.



More info on www.par.se




    PAR AB | Box 11124 | SE-404 23 Göteborg – Sweden |     Phone +46 31 10 53 00
    www.par.se | info@par.se
                                                                                   13

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White Paper Par Data Quality Management

  • 1. Type Address Here Achieving and Maintaining Quality in B2B Customer Data As business decisions are increasingly based on analysis of in-house data, inaccuracies can have far-reaching consequences. PAR AB Telefon 08-775 36 00 117 90 Stockholm Fax 08-775 50 88 Årstaängsvägen 11 E-post info@par.se Org.nr. 556112-5625 Internet www.par.se A Bisnode Company
  • 2. Achieving and Maintaining Quality in B2B Customer Data As business decisions are increasingly based on analysis of in-house data, inaccuracies can have far-reaching consequences The developing functionality of data Data has grown from being a list of customer contacts to information that forms the basis for key business decisions: investment, target markets, product development, premises and staffing. 1 Yet research shows that between 15% and 40% of the records in the average company’s in-house database are inaccurate. That means that business decisions are wrong by that amount too – potentially catastrophic, particularly in a recession. Data quality isn’t just about having a correct address, it’s about business intelligence: knowing whether the company still exists, whether it’s activity trading and if not, why not? It’s about appending vital information that can help in making decisions and identifying key contacts to open the door to new business. One company recently sent out a sales catalogue to 50,000 potential customers on their database. Every mailshot cost € 2 and the database was 20% inaccurate so € 20,000 was wasted on this mailing alone. The reasons for inaccurate company data fall primarily into five groups: • Insufficient investment in database management and updating. • Arbitrary uploading of information from other inaccurate sources. 1 Based on research with more than 450 actual client projects carried out by PAR. 2
  • 3. Inadequate IT controls, allowing the inputting of duplicate files. • Insufficient ongoing monitoring leading to out-of-date information. The impact of inaccurate data – cost, cost, cost! • Business decision-making – if key business decisions are based on company data then those decisions will be as wrong as the data is! This can affect decisions on: product development, marketing messages, geographical locations of (say) offices, focus of sales force, future investments, etc. • Wastage – if there is significant duplication / inaccuracy in the database then time is being spent on targeting non-responsive individuals and expensive marketing material will not arrive at all, or will be consigned to the trash. • Credibility – existing customers are unimpressed to receive inaccurate material from a company they’re already doing business with. Similarly, potential customers may be discouraged if they receive information aimed at executives who have left or that has been sent to wrong company addresses. • Green / Corporate Social Responsibility impact – sending out unwanted and / or duplicate communications impacts on a company’s CSR and green credentials, both in terms of the wastage it generates and the negative effect on recipients. Thomas Carvalho, Market Segmentation Manager, Toyota Material Handling Europe: “A sales person’s job is to sell, not to register precise company data, so it’s helpful to work with someone who is a specialist in this kind of thing”. Helene Dahlgren, PAR SE: “A company in Sweden realised it takes a sales person 15 minutes to find out the right things about the customer. This can be done by an automatic updating system at less than a tenth of the cost”. 3
  • 4. Understanding the problem – Data Audit The only way to determine the accuracy or otherwise of an in-house customer database is to match it against an accurate database covering the same geographical area / industry codes. Data can then be audited against a master database data match matrix, e.g: company name, address, zip / postal code / city, telephone number, official company number. Match algorithms can be used to cover: synonyms, abbreviations, ‘string distance’, word relevancy, phonetics, ‘experience’. Table 1 shows an example of the results that might come from a typical company data audit. It can be seen from this that the postal address, for example, is only present in 79% of the records held. Table 1: Data Audit result (Table supplied by PAR). This audit indicates ‘gaps’ in information that might be due to poor inputting discipline. The next step is to ‘link’ existing customer records to an accurate database to identify to what extent the two databases ‘share’ data. 4
  • 5. The example summary below (Table 2) illustrates that the company’s database contained 213 unidentified records when benchmarked against accurate data, representing 8 per cent of its entire database. Table 2: Computer-linked identification of worksites (Table supplied by PAR). 5
  • 6. Using this method it is possible to identify duplicates where several customer numbers have been allocated to companies that actually exist within the same worksite. In other words, there are several Customer Numbers within the client database that link to the same ID in the master database. This shows the number of duplicates that the company needs to eliminate from its database – in this case representing 4% of all its data. Table 3: Identifying duplicate records. (Table supplied by PAR). 6
  • 7. Enhancement and Updating So far, this process has simply identified what is wrong with the data in terms of incomplete or duplicate records. The next step towards customer data accuracy is to identify how much the in- house database can be enhanced – by appending new information – and updated to increase the completeness of each record. Table 4 below shows how the in-house database compares, when matched against the master database. This indicates the degree of enhancement and updates available to improve the quality of the in-house database. Table 4: Enhancement and Updates available. (Table supplied by PAR). ‘Not Active’ and Direct Marketing Blocked Companies Some of the most difficult records to weed out of a database are those where the company is no longer active or is blocked for direct marketing. These customer records should not be used for marketing so it’s necessary to identify and compare against a master database that has been specifically developed for the identification of customer files. In the example below, 17% of the company’s database contained inactive companies that will not generate any sales leads because they have ceased trading, become bankrupt, gone out of business or merged. Table 5: Inactive Companies. (Table supplied by PAR). 7
  • 8. Identification of individuals Maintaining a database of individual contacts is more difficult than a simple company database, due to the high movement of individuals within the marketplace. The table below indicates that, compared with the Company match which showed a 92% share, the individual match is only 33%. In other words, two- thirds of the individual contact details held on the company’s in-house database were incorrect or duplicated. Table 6: Identification of individual contacts. (Table supplied by PAR). 8
  • 9. Moving forward to Accuracy in Customer Data Swedish-based data specialist PAR has introduced a new class of products designed to help organisations take control of data quality in their customer databases. These comprise: • Data audit (explained above). • Data match and cleansing – 85-95% by automatic data cleansing followed by 5-10% identified by manual data cleansing. • Enhancement, appending and updating. • Monitoring and regular updates. • New record ‘one-by-one’ matching. • Selecting ‘more of the same’ to increase an existing database. 9
  • 10. Creating a Monitoring Database Monitoring is a key process in the ongoing accuracy of a database, or it will quickly go out of date again, particularly in the current volatile economic climate. To achieve this, a monitoring database can be set up which links a unique ID on the master database to a unique ID on the company’s in-house database. This is easy to maintain because an automated process can be set up, taking away the need for manual reminders or activity. There’s simply no need to run manual matches and updates; the monitoring service takes care of this and ensures the database is always fresh and up-to-date, leaving the user to concentrate on getting new business. Updates can be scheduled on a regular basis: daily, weekly or monthly. As these updates take place, a ‘Change Log’ reports all changes at field level. Within the record, a flag marks a changed field. Because PAR only updates changed fields rather than the entire database, the update process is quick and accurate – and automatic. This approach is simplicity itself for CRM System Managers because loading scripts are set up, predefined file layouts and updates are scheduled. Monitoring and updates can be linked direct to the company’s CRM using PAR’s Certified CRM plug-ins, enabling the entire process to be run through the existing CRM – no duplication of inputting or costs. One-by-one updates This allows files – for example new customers identified by sales or marketing teams – to be uploaded and monitored one-by-one. No duplicates can be imported, which removes the cause of much data inaccuracy, and as records are uploaded One-by-one they can automatically be identified and updated. Increasing the universe of potential customers At the start of this White Paper, we talked about the importance of customer data in making business decisions. The more accurate and comprehensive that data, the more effective is the decision-making process, customer communications and marketing activity. Complete information enables marketing information to hit the right target time after time, as well as reducing wastage by sending only to extant and active companies. To achieve this, PAR has developed its ‘Analysis Online’ analytical tool to enable companies to identify their most successful customers and find ‘more of the same’ within the business universe. Customer profiling can identify the 10
  • 11. best target groups and these can be selected for marketing campaigns using ‘PAR Selection’. PAR Selection links to the company’s monitoring database which enables it to exclude existing customers from the search. Specific selection variables can be added. Selections can be saved, stored and administered. Linking database management into a company’s existing CRM System By using PAR’s ‘One-by-One’ plug in, companies can verify and enhance their customer data, and prospect for new customers, through their existing CRM system. The plug-in enables users of supported CRM systems* to input search information they have, say from a telephone conversation, and immediately enhance it with all other data from PAR’s master database. The application opens a search window with a hot list of basic information so users can select the correct company and populate the CRM with all relevant fields. Research shows that automatic updating and enhancement can be carried out at less than a tenth of the cost of a sales person asking the questions – and the final results are far more accurate and complete. *For supported CRM systems, see Appendix 1. Maria Lennman, CEO of Cybernetics: “In most big organisations, the company’s value is in its knowledge and intelligence, particularly information on its customers. It’s vital to have a solution that adds value and information to the company and doesn’t let employees keep it to themselves”. “The companies that will be successful in this economic climate are the ones that are deciding to invest in their CRM because they need to be aggressive in the market.” 11
  • 12. Appendix 1 – PAR accredited CRM systems 12
  • 13. Appendix 2 – About PAR PAR - DEVELOPERS OF DIRECT MARKETING INFORMATION PAR was established in 1956 and is one of the leading providers of European Business Information. PAR is a database owner and an expert at collecting and handling large volumes of information, such as postal addresses, telephone numbers and market information. Depending on our client needs, we deliver the pieces of the information puzzle that are useful to you – postal addresses, information handling services or long-term CRM solutions. PAR’s pan-European database EuroContactPool covers: • 22 million companies • 16 million named executives • 16 countries. More info on www.par.se PAR AB | Box 11124 | SE-404 23 Göteborg – Sweden | Phone +46 31 10 53 00 www.par.se | info@par.se 13