Best Practices for Creating and Maintaining a Clean Database. An Experian QAS White Paper



Similar documents
5 tips to improve your database. An Experian Data Quality white paper

Data quality and the customer experience. An Experian Data Quality white paper

The ROI of data quality. How organizations are getting the most from their solutions

Why data quality should be a central focus of your CRM initiative. An Experian Data Quality white paper

InfoGlobalData specialise in B2B Lists and Appending Services.

Experian Data. A simple insight into our solutions. Experian Data Quality Tools

Data quality and predictive analytics. An Experian Data Quality white paper

DIRECT MAIL SOLUTIONS. Redi-Mail Direct Marketing 5 Audrey Place Fairfield, NJ sales@redimail.com

QAS Batch - The Best Contact Database Management Solution

Getting to a better customer on-boarding experience. An Experian Data Quality White Paper

Under the lens: Addressing business challenges with real-time analytics

Data Quality and Your Digital Reputation. An Experian Data Quality Guide

Target Analytics Data Enrichment Services Portfolio

WHITEPAPER. The importance of a clean data infrastructure STIRISTA 1

A Melissa Data White Paper. Six Steps to Managing Data Quality with SQL Server Integration Services

The SAS Transformation Project Deploying SAS Customer Intelligence for a Single View of the Customer

TELEMARKETING Don t miss a Golden Egg opportunity to turn your telemarketing campaigns into profit centers.

Harness the power of data to drive marketing ROI

D&B Optimizer Powered by Acxiom

The effect of dirty data on business

The Advantages of a Golden Record in Customer Master Data Management. January 2015

AgilOne integrates with your existing Silverpop implementation

Six Steps to to Managing Data Data Quality with SQL Server Integration Services

Data Enhancement Solutions The essential source for comprehensive and integrated data sevices

ACHIEVING YOUR SINGLE CUSTOMER VIEW

How To Print Mail From The Post Office

The Power of Personalizing the Customer Experience

Marketing Evaluation

The data quality benchmark report. How practitioners today are managing and using valuable data to generate actionable insight

Getting started with a data quality program

A SMARTER WAY TO MANAGE YOUR MARKETING DATA A GUIDE TO NETPROSPEX DATA MANAGEMENT SOLUTIONS

Background Who are AddressWorks? How do I get a Statement of Accuracy? Data Cleansing Frequently asked Questions...

Marketing Database Toolkit. Everything You Need to Build and Manage a High-Quality Marketing Database

Data management for improved customer experience and higher returns

Mergers and Acquisitions: The Data Dimension

Strategy + Experience + Execution = Results. Multi-Channel Marketing Solutions That Generate Results. Targeted, Effective Results!

Real-time customer information data quality and location based service determination implementation best practices.

Marketing data quality

META DATA QUALITY CONTROL ARCHITECTURE IN DATA WAREHOUSING

How to create an effective data management strategy

Span Global Services Marketing and Data Management Solutions

Where Did My Customers Go? The Problem of Undeliverable-As-Addressed Mail

Squaring the circle: using a Data Governance Framework to support Data Quality. An Experian white paper

How To Use An Ibm Infosphere Mdm For Salesforce.Com

Customer Database. A strong foundation to build a successful organization.

Four Methods to Monetize Service Assurance Monitoring Data

The Butterfly Effect on Data Quality How small data quality issues can lead to big consequences

4How Marketing Leaders Can Take Control of Data for Better

Data ownership within governance: getting it right

What Your CEO Should Know About Master Data Management

ORACLE ENTERPRISE DATA QUALITY PRODUCT FAMILY

COMMUNICATING B2B SERIES. Bb 2 I N S I G H T ISSUE 3. What are the best lead generation techniques?

NCOE whitepaper Master Data Deployment and Management in a Global ERP Implementation

Understanding the Financial Value of Data Quality Improvement

IBM Software Master data management vision and value: Part 1

Sales Prospecting. Multiply Leads Choosing Right Marketing Solutions. prospecting like pros:

Transcription:

Best Practices for Creating and Maintaining a Clean Database An Experian QAS White Paper

Best Practices for Creating and Maintaining a Clean Database Data cleansing and maintenance are critical to a successful contact data management strategy. An uncleansed, poorly maintained database can rob your business of profits, limit communication efforts and damage ROI. Storing bad data inhibits your ability to market and crosssell products and delays the bill collection process. Accurate street addresses, telephone numbers, and emails are critical components of customer communications. A cleansed and enhanced contact database eliminates unnecessary mailings, cuts expensive printing and postage costs, and improves call center and back-office staff efficiency. Ultimately, ensuring the accuracy of contact data improves customer and prospect relationships- a positive result for any type of organization. It s not just about having a database; it s about what you do with it A contact database is an essential component of effective sales and marketing initiatives. Failure to establish a process and institute a consistent approach to maintaining contact data quality can negate the overall usefulness of your database. Further, the costs associated with bad data can significantly diminish the value of your database. It is essential to have processes in place that enable your organization to maintain high-quality data. Even the largest and most expensive databases will be virtually useless if the contact information contained within it is inaccurate or incomplete. Six steps for cleansing and maintaining a database A continuous, systematic approach to maintaining a database requires consistent follow up. The following 6-step process is designed to help you better understand your database and how to keep it clean. Step 1: Understand Your Data Learning what is in your database will provide you with better insight into the condition of your data. It s important to be aware of your data quality processes in order to better understand how contact information is used downstream. Step 2: Clean Existing Data Start with a data cleansing project that will provide you with the greatest benefit. Starting with a clean slate for future data quality initiatives is most effective. Step 3: Remove Duplicate Records Removing duplicate records is an important step in the cleansing process that provides a better sense of your true customer base. Step 4: Enhance and Update Data Understand the complete view of your customer or prospect with enhanced data. This step will allow you to fine tune your message for your target audience. Step 5: Verify Data at Capture Points Reduce the need for after the fact cleansing by capturing accurate information at the point of entry. Look for tools that will help you ensure that data is accurate, valid and standardized before the information ever enters your database. Step 6: Enhance, Update, and Learn Since data is constantly changing, implement a continuous process that is performed regularly to clean, augment and update data.

Step 1: Understand Your Data The first step in cleaning and maintaining your contact data is to truly understand what information is contained in the database, as well as how that information is currently maintained. There are several key questions that should be asked during this process; 1. Questions related to data entry: Where does the data come from? Who enters it? Is it entered by customers or by staff in a call center or other department? Are they motivated to enter accurate data? Do they understand the cost of improper entries and incomplete records? 2. Questions related to what data is stored and how: What type of technology do you use to store your customer data records? How is data formatted? Do you use Excel files, a SQL Server database, or another format? What fields are required to constitute a full record? The illustration uses a multi-channel retailer model to demonstrate how records may be entered into a database and how contact information is used. This method of mapping data inputs and outputs can also be applied to other industries. The left side of the diagram shows data sources that enter contact information into the retailer s database. These sources include the online, call center, mail or fax and point-of-sale channels. The right side of the diagram illustrates how data is used. For example, fulfillment of an order is complete when a package is delivered to the correct address. Poor contact data can impact the successful fulfillment of an order. The success of marketing campaigns depends on marketers ability to 3. Questions around data quality processes: Do you have controls in place to ensure the quality of records being entered into the database? Does your organization provide data entry training to ensure employees understand the importance of accurately entered data? Do you audit newly entered information? As you learn more about your data acquisition and entry practices, it may be helpful to organize the data flow in a diagram such as Figure 1 below. Figure 1. Typical contact data inputs to a multi-channel retailer database and the business processes impacted by the data

understand their customers needs and reach them with relevant offers. Customer service departments may use customer data to send correspondence and order-related documentation. Understanding the Challenges of Data Capture According to Experian QAS research, corporate databases double in size every six months. This exponential growth can be attributed to numerous data capture points such as the Internet, call centers, and mailings. The high number of potential input channels increases the likelihood of data errors due to inaccurate record entry. Understanding where bad data originates will help organizations to modify current processes and flag and correct bad data up front. Web/Online It is a common misconception that information entered into a database by customers is accurate and complete because the customer has directly provided the information. In fact, close to 20% of information entered online is incorrect or incomplete and requires cleansing. Individuals entering information online are frequently distracted while they enter data, and typos and missing information are common. Call Center Call centers are controlled environments where representatives are trained in collecting and entering information. A challenge inherent with call centers is the misinterpretation of what a caller is saying, perhaps because the representative is unfamiliar with the caller s accent. This can be particularly challenging in an international organization where callers may be dialing in from a variety of countries. Fat fingering, or pressing more than one key at a time, can also introduce problems as a representative may inadvertently press a key next to the intended keystroke. Finally, call center representatives are typically short on time, adding to the challenges around ensuring high levels of accuracy. Mail/Fax (Manual Entry) Challenges with mailing and faxing can stem from poor handwriting, typing and/or incomplete information. This raises the likelihood of misinterpretation by the recipient of the forms, who may ultimately enter details into the database system. Stores The challenge inherent in stores (or branches) is that this channel includes face-to-face interaction in a highpressure environment. At times, a customer may be rushed to provide information or they may be unwilling to provide contact details. A sales associate may be impatient and incorrectly enter contact details due to lack of time or understanding about the importance of collecting accurate data.

Organizations should go through this exercise of identifying and mapping sources of contact data, thinking through potential areas contributing errors, and evaluating downstream business impacts of inaccurate and incomplete contact information. Once this exercise is completed, Step 2 follows. Step 2: Clean Existing Data Once you have an understanding of the sources of the records in your database, how errors are entered and how poor data quality affects your business processes, you are ready to begin cleansing existing data. This task is typically accomplished within organizations by Database Analysts or IT Analysts. Review Your Data A key step in this process is the review of existing records and patterns. Manually reviewing records will help to uncover data inconsistencies. This provides a better sense of what your data actually looks like. Audit Completeness An audit can determine whether fields need to be filled in. When appending data, you should pay careful attention to where and when fields may be incomplete. Re-evaluating your required fields helps define how you will deal with incomplete information in the future. Clean and Standardize Leverage a 3rd party data source to clean and standardize your data. A host of companies exist that can perform this task and verify the records in your database. It is recommended that you speak with an industry expert to learn more about the data with which your data is being compared. This ensures that the 3rd party vendor is using the best quality data available. Don t Underestimate Addresses One of the most valuable pieces of data you have is a customer address. Just as important as email address and telephone number, the address record is the core of customer contact data. Physical addresses can be matched against postal authorities to ensure that they are deliverable and accurate. Step 3: Remove Duplicate Records In the de-duplication process, duplicate records are merged, leaving only one copy of the record to be stored, along with references to the unique copy of data. Duplicates occur when there is no structured or controlled process for monitoring records entered into your database. Records are commonly entered through multiple distribution channels or through sales channels. Without proper controls on the front end, eventually merging records into one source is necessary. Records merged into a centralized master file provide a singular view of the data, allowing you to better understand, segment and communicate with your customers. When embarking on a de-duplication project, consider the following options. Decide what elements to match on Matching elements determine where duplicates can be found. Think about the level of matching you would like to accomplish, as well as the tolerance level for what is considered a duplicate record in your organization. Use a tool with fuzzy or flex matching. Fuzzy matching refers to matches that may be less than 100% perfect when identifying correspondences between segments of a text and entries in a database. This allows for a greater match rate and helps to locate duplicate records that may not have been identified with a rigid or exact matching process. Some examples of de-duplication are shown below: Match Type Address/Household Phonetic Acronym Character Occurrence Table-based Element Matching Custom Field Example Physical + Name or Email Dougherty = Dorty National Broadcasting Company = NBC Wilson = Wislon William = Bill = Will = Billy Mr. J. Smith = John Smith = Smith John Shoe Size, SSN, Customer Number Figure 2 Examples of fuzzy matching Step 4: Enhance and Update Data Data enhancements quite simply complement the information that your organization has already been able to gather. Enhanced data allows you to segment your database, stand out from spammers and provide targeted messaging. The first way that organizations can enhance data is to perform NCOALink (National Change of Address) processing. The USPS maintains nearly four years of Change of Address (COA) information. According to the USPS, over 43 million permanent COA orders are processed each year. This correlates to approximately 15% of Americans and 19% of businesses moving annually. Internal studies conducted at Experian QAS indicate that moving customers are most likely not reaching out to change address information, so it is important to perform NCOALink processing regularly. Moreover, NCOALink processing is a requirement if the mailer is looking to qualify for postal discounts. Data can also be enhanced by appending contact information with geo-demographic information, like latitude and longitude coordinates, since street-level geocoding in the United States became available in

the early 1990 s. This method provides specific sociodemographic information and a view of who your customers are and where they are located. By segmenting your database, you can increase your ability to target relevant customers. Step 5: Verify Data during Capture Processes You can improve the overall quality of your database by verifying each record as it is entered at every capture point, rather than randomly cleansing the entire database. An important part of this process is to understand the types of records that are being entered and where they are being collected. Whether it s originating through a pointof-sale system, a web portal, a call center or paper forms, all data should be verified on the front end. Set expectations by having a standardized process in place so that all information is being captured in the same way. Sometimes this can be accomplished by using system rules. For example, at Experian QAS, when an address is entered into the database, it is verified in real time using the company s front-end address verification tool. It may also be useful to implement a training program to help your staff understand the value of verifying data correctly at all capture points, and tie performance metrics to the level of accuracy of the data captured. The illustrations below demonstrate the effects of verifying data at various capture points. Figure 3 Illustration of data in/out of a database with no frontend verification The figure above shows the impact of records entered into a database from a call center, a data entry operator and through a website. Note that there is no verification prior to entry and no verification from within the database. The resulting data used by marketing, billing and shipping is of poor quality. Figure 4 Illustration of data in/out of a database with some front-end verification Figure 4 shows the impact of records entered into a database from a call center, a data entry operator and through a website. In this diagram, the records entered by a data entry operator are verified prior to entry into the database and also within the database. The resulting data used by marketing, billing and shipping has increased in quality. Figure 5 Illustration of data in/out of a database with front-end verification at all points of entry The figure above shows that the records entered by a data entry operator, call center and website are verified prior to entry into the database and also within the database. The resulting data used by marketing, billing and shipping is cleansed and much more efficient. Step 6: Continue to Enhance and Clean Once there are processes in place to enhance and cleanse data, your focus can be shifted to regular checkups and occasional snapshots with more focus on maintenance, enhancement, and appending and/or refreshing older data. More of your time will be spent gaining knowledge and making business decisions based on your data. It is important to consider the use of performance metrics to monitor the health of your database on a regular basis. Sharing internal data quality reports that grade the accuracy of recently entered records will raise awareness among stakeholders, driving overall accountability of your data initiatives. Continuous database maintenance allows for a better assessment of the quality of data after each strategy is implemented, and also ensures that older data is refreshed and continues to perform well in future initiatives. Summary Most organizations do not have a complete data quality process in place to create and maintain a clean database. To ensure that the database is in fact useful, an organization should familiarize all stakeholders with data capture best practices and take the necessary steps to ensure data accuracy before entering any new information. It is important to proactively check new elements in a database, as well as to continuously review and enhance existing data with updates and appends. Organizations in industries such as higher education, retail, insurance, financial services and government all

leverage contact data for various purposes. Ultimately, all organizations that collect customer data with the intention of driving business value will benefit from a systematic and well-thought-out strategy of database cleansing and maintenance. Experian QAS Products and Services Experian QAS provides software and services to capture, validate, cleanse, standardize and enrich customer contact information. We are dedicated to helping our 11,000 customers worldwide improve the quality of their databases. For more information visit our website at www. qas.com or call us at 1-888-322-6201. Experian QAS 125 Summer St Ste 1910 Boston, MA 02110-1615 T: 1 888 322 6201 info@qas.com www.qas.com 2011 QAS Limited. QAS Limited. Registered in England. No. 2582055. Talbot House,Talbot Street, Nottingham NG801TH. The words Experian and QAS are registered trade marks in the EU and other countries and are owned by Experian Limited and/or its associated companies. All rights reserved. Experian QAS is QAS Ltd and exists in our own right.