Commentary on Data Governance, Marketing Technology and Web Analytics.
RSS icon Email icon Home icon
  • CRM and Marketing Measurement to Drive Sales

    Posted on June 25th, 2010 goloboym No comments

    How do you drive the Sales team to follow up on all those leads you’ve provided? And how do you get your marketing team to provide qualified leads instead of rows of uninteresting data? The answer is to measure both and use the resulting reporting and analysis to find gaps in your marketing and sales processes.

    Your marketing and sales systems do what they are supposed to. They keep track of your interaction with customers (CRM) and help your Sales force plan to sell (SFA). They also keep you in touch with your customers through some combination of inbound, outbound, email, direct mail, and other marketing services your company provides. You may have even integrated your social media, web analytics, and online media, but chances are that you have not.

    So what’s next? Convergence time.

    Let’s start with a basic CRM program and build on valuable layers of information along the way. My company sends out lots of email marketing, so that’s what I talk about more than anything else. Once I’ve executed an email campaign, the first thing I want to look at is the result of any of my tests. Did recipients open emails more frequently when I did A vs. B. Next I want to know whether people clicked through the action buttons I provided them. These first two points are marketing centric, but next comes the fun part.

    Once I know who clicked through the email, I have a new segment of interested parties. This segment can be divided up into customers and prospects (based on data available in your CRM system). As a next step, what did those people do when they clicked through to your landing page or site? Did they look at one page and leave? Or follow a path toward a product that you advertised? Or follow a path to a different product? We have now added another level of advanced segmentation from your Web Analytics platform. From a marketing perspective, you can now define lead nurturing programs.

    And from a Sales perspective, we have defined richly qualified CRM and Web segments. So what happens when you add a note to your SFA system letting the rep know that a contact or a prospect account has clicked through an email and pursued a specific product? If your marketing team has built credibility with sales reps and management, you can be sure that the rep will trust this information and follow up to drive a sale. If you haven’t built credibility (or communicated this new approach), then the rep will see another bad lead and do nothing.

    Either way, you need to report on these cross functional results. When presented Marketing qualified leads rather than bulk leads, what was the action taken by each sales rep. How much revenue was generated for each lead delivered? What about for each lead worked by a rep? If you are able to, you should test delivering different segments to different sales teams to determine which teams are best able to drive results. Maybe inside sales has a better chance to make a qualified lead sale since they are available to follow up immediately when provided a triggered lead. Alternatively, the product path followed online may define the sales rep that should get the lead. Or it could come down to rules of engagement on who gets what.

    Once you are able to present segmented results showing which teams follow up on leads and drive sales and which teams let leads sit, you can have better conversations with Sales and Marketing management. This will expose issues with both your Sales and Marketing departments, but can lead to conversations that help both organizations mature. Are your marketing teams communicating well and enabling the sales with the appropriate collateral to sell to these leads? Are your sales reps following the playbook and working the leads the way management thinks they are? Show the results and let the conversation lead to change at your company.

  • CRM Marketing Strategy To Drive Sales Revenue

    Posted on September 4th, 2009 goloboym No comments

    For the purpose of this post, I’m defining Marketing Strategy to mean the analytics that complement the work done by the Database / CRM Marketing team and the influence that those analytics can have on Sales and Marketing programs. This article isn’t about Brand, Creative, or Media Purchase. It’s also not about Social Media, SEM or SEO. Just to be clear, I’m writing about using Data, Technology, & Analytics to reach out to customers and prospects, improve program results and drive revenue. Generally my recommendations are specific to Email Marketing, but may also be applied to Direct Mail or TeleMarketing.

    Marketing Strategy should be the heading under which your company defines it’s analytically based sales programs. But you don’t need a fully developed internal analytics shop to be strategic. In fact, that isn’t the first step at all. First, focus on your data. It doesn’t matter how good your analysts are, they won’t be effective or efficient if you give them low quality data to work with.

    So, let’s begin with the data. The following three areas of Marketing Strategy rely on Data Governance, so for my opinions there read up on Lightweight Data Governance.

    Opportunity Analysis

    If your data isn’t clean, you can’t get a feel for how well you are doing. For instance, duplicates in your data when analyzed in aggregate cause double-counting within buckets, double-counting across buckets, and general noise that diminishes the value of analytics and modeling. If you have the same company listed as both a customer and a prospect, and they both fall in the same industry or geography, your analytics driven programs will fail.

    The solution is to develop a source system down approach to gathering data for your Marketing Strategy work. If you collect the data with reporting and analysis in mind, downstream processes will benefit. So work with your Sales, Service and Finance teams. It will take them an extra few seconds to correct the problem. Every customer facing employee should spend a few seconds each time they speak with a customer to ask, “Is our contact information for you still correct?” That change, which may require a culture shift that starts with the executive team, will dramatically improve program results.

    Targeting and Personalization

    Do you use Marketing Strategy and leverage data to drive campaign results? Test and Learn is a sneaky term for Marketing Strategy. It sounds less expensive, so use it.

    Your content should be specific to your target’s business problem. It should be tailored to their purchase history, or lack thereof, and include next (or first) best product or cross-sell specific messaging. You should personalize the email to the targets name, title, company name, and other fields in your CRM system. If you have analyzed the lift generated by personalized vs. non-personalized messaging, you understand the need to target your emails. 

    When you segment targets and personalize the subject line and body content of your emails, your open and click-through rates will increase significantly. Also, your opt-out rates will go down. The quality of these key fields must be monitored and improved to take advantage of that lift.

    Compliance and Customer Interaction

    If you are not familiar with CAN-SPAM, read my take on your responsibilities as an email marketer. You are required by law to do a great job at managing email opt-outs and confirming that your business is transparently represented in your email marketing. Even forgetting about email compliance, you should still consider the customer impact of bad marketing. “Mark Goloboy or Current Resident” = Trash Can. Trash Can = Poor return on direct mail spend. Read: Not enough revenue to justify your program.

    So how do you mature your processes quickly to take advantage of the potential sales impact of Marketing Strategy? You must develop quality processes that remove bounced emails from your lists and opt-out all instances of an email address when requested. You also need to be sure your sales reps are honoring your opt-outs. Lastly, you must review your data for patterns of Sales or Service rep entered garbage. What’s the most frequently occurring word in the First Name field of your contact records? I bet it’s not “John.”

    Data Acquisition

    Whether you are in B2C or B2B Marketing, there is value in purchasing reference data for your existing customers, and lead data for prospecting. How much value is there? You need to test purchases from different vendors to determine that. There’s no other way. Buy a small list. Or better, ask a list vendor for a free list to test. They aren’t selling a lot now. Take advantage! Then predict ROI by scaling the results and associated spend across your whole universe of customer and prospect data.

    You can also measure the impact of cleaning, de-duplicating and referencing your data to a standard set by testing those processes against a statistically significant sample of your customer data. Again, you may be able to get some of these services for free by getting into a competitive sales situation. Your prospects ask you for this, right? Mastering this customer data requires assistance and cooperation from Sales, Marketing, Customer Service and Technology, which means Data Governance.

  • Demographic vs. Firmagraphic Appends

    Posted on July 9th, 2009 goloboym 2 comments

    Note: This is a continuation of the B2B vs. B2C series. I will also be presenting some related material at the MIT Information Quality Symposium next week (MITIQS 7/15-7/17 2009). If you are attending, please introduce yourself.

    Data Acquisition is an important part of any data driven Sales and Marketing program. I associate the append process with Marketing since that’s where these programs are generally funded, but the clear beneficiary of the work is the Sales organization. And of course, it takes a partnership between Technology, Sales and Marketing to make data acquisition programs successful. A data file on a shared drive or standalone table in a database has little or no value. The data has to be integrated with customer and prospect lists and loaded into the CRM and SFA systems and / or presented through your BI/DW tools to show ROI. Sorry… I got on a roll with the acronyms. They’re defined at the bottom. I’m in a Data Governance role now. Acronyms and definitions are my life (in a scary, scary way).

    This raises the topics of Data Cleansing, Address Standardization, Merging & Matching, Deduplication, Archiving, etc. I’ll save those topics for future posts, but would encourage questions in the comments section. It’s fair to say that without a Data Quality focus you won’t achieve the optimal results for either Demographic or Firmagraphic Data Acquisition program.

    Demographic Appends

    Demographic data is generally used by Marketers and Analysts to determine the best way to target a consumer base. Starting with a universe of customers or prospects, a company can buy information on:

    • Credit History
    • Purchasing Patterns
    • Housing Location and Situation, e.g. owner, renter
    • Salary
    • Lifestyle / Family

    You can also buy data that segments customers based on the provider’s best information. Some is based on geographic of financial information. Others are based in buying patterns. Sometimes they even have cool segment titles like “Boomer Barons,” “True Blues,” and “Jumbo Families.” (All of those are from the Acxiom Personicx family of pre-defined segments). The goal of a demographic append is really bulk segmentation. How do I get enough information about my consumers to segment them for marketing and analysis. In most cases, the purchaser doesn’t care about any single individual or household, other than to get them into the correct program. The marketers are looking at sets of consumers, and then targeting from there.

    In very high end consumer sales, e.g., luxury items, high net worth banking etc, you may find cases where sales people will use the appended data at the individual level. But generally it’s used for grouping customers into buckets, finding buying patterns and trends across like customers, and performing analyses such as next best product, lifetime value, and similar. Consumer sales is so transactional, that there isn’t time to research before any one conversation.

    Firmagraphic Appends

    B2B data, which I prefer to call “Firmagraphic” but have also seen called Firmographic or Firma-graphic, can provide value for not only segmentation, but also for pre-call research. B2B Sales is moving toward a more consultative approach where the sales rep becomes more of a partner with the purchaser. The best sales reps do this across all businesses. Rather than try to sell one product or service (transactional), the sales rep tries to understand the company’s need and deliver a suite of prodcuts & services and sometimes even the workers to use them (in an outsourcing arrangement). I’m sure if you’re reading this you’ve seen the varying styles of transactional and consultative sales reps.

    To arm those consultative sales reps with the appropriate information, companies often purchase firmagraphic data and load it into their CRM systems. This data may be grouped into:

    • Parent Child Relationships
    • Locations of Related Companies
    • Contact Information for Executives
    • Industry Codes
    • Number of Employees
    • Revenue

    This allows the rep to quickly look at the companie’s situation, and taylor their initial pitch accordingly. “I see you’re in a fast moving industry, with over 100 employees, and that you’re company has decentralized offices across the country. Have you heard of Product A that might meet your needs?” That conversation can only happen to a perspective customer if a firmagraphic append has happened previously. Which reminds me that another form of firmagraphic purchase is the ubiquitous, “Get 200 leads in your target industry,” but that’s not what I’m talking about here.

    Segmentation of B2B customers is also sometimes based on Firmagraphic appends,  but as mentioned in the original B2B vs. B2C post, householding in B2B is focused on creating parent child relationships among your customers and prospects. You should also use all of your existing customer information including location, purchasing and servicing history, and past communication response to segment your customers. Once you have those relationships built, you can begin to analyze your coverage of headquarters and branches based on firmagraphic data.

    Analytics then focuses on similar models for next best product, lifetime value, likelihood to purchase, likelihood to respond to certain campaigns and others. The tools to d

    Acronym Glossary

    CRM: Customer Relationship Management. Generally refers to the systems used by Sales and Marketing teams to store and organize customer contact information, purchasing, and servicing history. CRM systems also pump out lots of data used for operational reporting and as inputs to customer analysis and segmentation.

    SFA: Sales Force Automation. Tools used by Sales Reps to manage their actitivities. This would include follow ups/reminders, appointments, leads, renewals, etc.  SFA systemsalso includes the operational reporting of those activities in some cases.

    BI: Business Intelligence. The analytics and reporting tools built on top of the Data Warehouse. Business Intelligence can also be used to describe the practice of analyzing data to determine important insights and drive strategy. These tools look across CRM, SFA, manufacturing and financial systems.

    B2B: Business to Business. Marketing and Sales activities along with associated products and services targeted at business customers.

    B2C: Business to Consumer. Marketing and Sales activities along with associated products and services targeted at individuals or households of consumers.

    ROI: Return on Investment. A simple calcualtion that takes the difference between the cost of a program and the returned value from it, and divides it by the cost of the program. So if I spend $100 and make $150, my ROI would be the $50 of benefit over the $100 of cost: .5 ROI. People often forget to subtract the cost from the numerator and inflate their ROIs.

  • Lightweight Data Governance: A Starting Point

    Posted on June 22nd, 2009 goloboym 4 comments

    This expands on the previous article, Lightweight Data Governance. I’ll continue to add to the theory in upcoming posts. If there are any areas you would like me to focus on, please add a comment, or email me directly.

    A few weeks back I met with Steve Sarsfield to discuss the upcoming MIT Information Quality Symposium (MITIQS). It will be my first time presenting to a Data Quality focused group, so I was excited when Steve offered to provide some background. My main concern was, “How can someone in the commercial space keep the interest of a combined business, government and research focused community?” We discussed my approach, and I think I’m on the right track. I’m going to describe how we initiated Data Governance at my company, kept it simple, and found early success.

    So where did we start? Data Governance grew from an expressed need by the executive team for better data quality. Sounds simple right? Fix the data. It’s like the Kenan Thompson SNL character talking about the economy: Fix It. The company decided that Data Governance was needed, and that they would let me define the path to getting there. I set the scope to include any project where I have an opportunity to build credibility in data or reporting. I’ve formalized processes where necessary, but kept it “lightweight” in most areas. With the current state of the economy, I see no other way to get there.

    I previously led the Marketing Analytics department, and we had responsibility for B2B and B2C Analytics. Most of our efforts were focused on the B2B side, since that’s where the most perceived opportunity existed. When I moved into the Director of Global Data Governance role, I built from my strength and worked on B2B issues first. I attacked the low-effort, high-value projects. I looked to expand on the local efforts that were working well. If teams or projects came up with creative solutions, I looked to expand their work globally. My thought was that it’s really hard to come up with the underlying process definition, but that an existing process was easy to expand. It doesn’t work for every existing process, but some are natural fits that resolve longstanding internal issues.

    That became the basis for Lightweight Data Governance. Find the projects or efforts that are successful on a small scale, and expand them globally. That way you start with a base of knowledge, documentation, and executive support that’s very hard to build from scratch.

    Grow Data Governance efforts organically

    Start with existing processes. Find out which can be expanded, centralized or automated.

    Focus on project level ROI

    Don’t try to sell your management on a huge program to start. Build the business case at the project level. It’s easier for management to support small positive ROI projects.

    Partner to be unobtrusive to ongoing work

    Find projects that are already in flight. Would Data Governance add to their impact? If so, partner with their leadership to help craft the deliverables to create mutual benefit.

    Build momentum from early successes

    Get testimonials! If the project went well and the community benefited, you should be able to get the project sponsor to say so.

    Measure initiatives on DQ impact

    This step is further along the Data Governance continuum. Begin to show the impact on the organization when projects focus on data quality. This cultural shift will underscore the importance of future Data Governance work.

    Follow with Formal Data Governance

    Does it make sense for the enterprise? Does executive support exist? If not how do you build it? This is where the more traditional theory in most Data Governance efforts becomes relevant.

  • Upcoming Blog Posts

    Posted on June 18th, 2009 goloboym 2 comments

    June has been a light month for blog posts. I’ve settled on upcoming topics, and even drafted my next couple of posts out. Why the slow month? I took a detour into Lean BI research that proved uninteresting to write about. I’ll scrap that. Gone also is my brief foray into Cloud Computing for BI. I’m just not an expert there. Good to learn about, but nothing I want to associate my name with yet. I also had to knock out a conference presentation for this Summer.

    I’ve settled on the following upcoming topics. Bear with me while I get them out there. Enjoy the previous posts in the Data Governance folder. Also, please comment if there are any areas you’d like me to explore.

    1) Lightweight Data Governance: A Starting Point

    A continuation of the previous post. I’ve finished my MIT Information Quality Symposium presentation for this Summer, and think it would be helpful to write some background on the theory I’m developing. In a recent conversation with a Data Governance colleague, they referred to the work as “different from what everyone else is doing.” I hope that’s a good thing. Either way, it confirmed that the presentation will be provocative for that group. So I’ve got that going for me.

    2) Data Quality and Data Governance Blogs I’d Recommend

    I’ve been keeping a list of those bloggers I think are really good. I look for people who put their opinions out there, and keep the topic light. I’m also a fan of those who are tool agnostic. Too many in our field are married to their vendors. It’s a bad position to take.

    3) Demographic and Firmagraphic Appends

    A continuation of my B2C vs. B2B series. In this post I’ll explore where the value is, how to incorporate and whether you should even bother. Have you maximized your own data first? Are there other ways to get access to this data for free? Some podcaster’s I follow think so. More to come in the blog post.