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6.4: Reading- Secondary Marketing Research

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    48016
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    Tapping Existing Sources of Information

    Before diving into primary research for a marketing research project, it’s always wise to investigate whether there’s an existing body of relevant information that you can work with. It’s at least a place to start, and it may show you what you’re missing. This is known as secondary research.

    Secondary research uses secondary data, or source information that has previously been collected either inside or outside the organization. Internal data and some external data are freely available or have only a nominal cost. Other secondary-data providers charge fees to marketing researchers who want to access their data sets, reports, and customer insights. Common types of secondary data are described below.

    Internal Data

    A company’s internal data, such as sales and marketing records, customer account information, product purchasing and usage data are typical secondary data sources. Previously prepared marketing research reports may also be a great source of insights as you seek to solve a new or related business problem. Marketing researchers may also compile a large amount of internal data into a shared database and conduct marketing analytics to understand patterns in customer behavior, market trends, and other insights to guide management and marketing strategy decisions.

    Government and Nongovernmental Organization (NGO) Data

    Many government agencies as well as nonprofits and other nongovernmental organizations collect and publish vast amounts of freely available data that may be useful for marketing research purposes. For example, demographic data published by the U.S. Census Bureau offers great insight into the makeup of the U.S. population by age, gender, educational attainment, and many other factors. The U.S. Bureau of Economic Analysis publishes economic indicators for the nation at large, as well as economic data associated with domestic industries, states, regions, and so forth. The World Trade Organization publishes economic data, trade statistics, and information about the regulatory environment for business for more than one hundred WTO member countries.

    A map showing the median household income in the United States by state. Map and data provided by the United States Census Bureau. Summary of data presented: Median Household income $70,000 or higher: Alaska, Hawaii, California, Washington, Utah, Colorado, Minnesota, Virgina, Maryland, New Jersey, Connecticut, Mascacutts, and New Hampshire. Median household income between $60,000 and $69,999: Oregon, Wyoming, North Dakota, Texas, Wisconsin, Illinois, Delaware, Pennsylvania, New York, Vermont, and Rhode Island. Median household income between $55,000 and $59,999: Nevada, Arizona, Idaho, Montana, South Dakota, Nebraska, Kansas, Iowa, Michigan, Indiana, Ohio, Georgia, Florida, and Maine. Median household income between $50,000 and $54,999: Oklahoma, Missouri, Kentucky, Tenesse, South Carolina, and North Carolina. Median household income of less than $50,000: New Mexico, Louisiana, Arkansa, Mississippi, Alabama, and West Virginia. U.S. median household income is $61,937.
    2018 Median Household Income in the United States. Access an interactive version of this median household income map on the U.S. Census Bureau website.

    When leading auto-repair franchise Midas developed a formula for “placing” their new franchised stores in successful locations, they turned to government research sources such as U.S. census data. The company explains that they look for “streets with high traffic counts, with 50,000 or more residents within three miles, and with speed limits no higher than 45 miles per hour. We look for areas that have several other major food, automotive, or retail brands, and we like to put new locations near car dealerships, since many customers transition their freshly out-of-warranty cars from dealer maintenance to Midas.”[1]

    These examples of governmental and NGO data just scratch the surface of the many and varied publicly available data sources that can inform smart marketing and business decisions.

    Industry Associations, Professional Journals, and Media

    Cover of 1998 Internet Industry Standard journal showing a cartoon man announcing that "The Age of E-Shopping is Near."

    A variety of industry and professional associations publish data to inform professionals and the general public about what’s happening in their profession or economic sector. Most industries also have dedicated media that focus on pertinent news, research, and developments including online or offline news outlets, magazines, newsletters and journals, as well as popular Web sites, blogs, and other online forums. Similarly, academic journals and libraries can be great secondary data sources for influential developments. Topics can range broadly, from sizing industries and product categories to discussions of key challenges faced by organizational leaders such as corporate chief information officers or college and university presidents. Marketers should be attuned to the organizations and publications that cover the industries or product categories they work within. These will likely be the most fertile sources of insightful, up-to-date secondary data.

    Commercial Marketing Research Data

    A number of commercial marketing research companies offer syndicated marketing research. Syndicated research usually covers topics that may be of interest to multiple organizations. Research companies collect data, analyze it, and resell it to organizations interested in the topics and consumers these initiatives explore. Often these projects collect vast amounts of consumer data over time, providing a useful historical view about the consumer population and how it may be evolving over time.

    For example, the research company Nielsen captures data associated with PRIZM, an elaborate lifestyle and behavioral segmentation of the U.S. consumer market. Marketers can purchase data and analyses from Nielsen to help them better understand the PRIZM segments and how these segments map to target audiences they want to reach and penetrate. Nielsen also collects scanner data, which are detailed information about the sale of consumer goods obtained by “scanning” the bar codes for individual products at electronic points of sale in retail outlets. The data can provide information about quantities, characteristics, and prices of goods sold.[2]

    This kind of data helped a number of quick-serve pizza chains (Pizza Hut, Domino’s, and Papa John’s, e.g.) spot the growing encroachment of retail frozen-pizza sales on their market. In response, the chains launched a series of marketing campaigns, which paid off. In 2011, they used Nielsen data tracking the sales of prepackaged, UPC-coded pizza to show that the dollar sales of frozen pizza had fallen 4.5 percent in U.S. food, drug, and mass merchandiser stores (including Walmart) during the previous year.

    Student Monitor, another example of a commercial marketing research company, tracks attitudes, trends, and behaviors among American college students. Industry analysts like Forrester, Gartner, and Outsell publish research reports that estimate market size, penetration, and how competitors stack up against one another in various industries and product categories. Still other research firms offer syndicated research and insights about consumer trends and developments in various global geographies, industries, economic sectors, and product categories.

    Database marketing organizations, sometimes called customer insights services providers, collect massive amounts of information about consumers by linking financial and credit data to tracking data about online and offline purchases and other behaviors. Then they mine these data to find patterns and indicators about which data points are most useful for sales and marketing purposes. Organizations can purchase access to this information for use in marketing research analyses as well as ongoing marketing activity. They can also combine it with their own internal data to get a richer view of their customers and target segments.

    Front view of Macy's department store in New York City, decorated at Christmastime with a large white lighted sign spelling the word "Believe."
    Macy’s flagship store, New York City

    Macy’s, one of the oldest department stores in the United States, took advantage of this approach when it hired the database marketing organization Acxiom in 1999. Since then, Acxiom has managed Macy’s customer profiles and helps the company provide its customers with a much more customized shopping experience. Before that time, Macy’s customer and purchasing data were scattered across many disparate departments, and the company had no way of meeting its marketing goal of having a 360-degree view of its customers. Acxiom was tasked with integrating customer records to give the store more visibility into individual purchases and preferences, and ways of linking together other useful data such as promotional history, demographics, attitudinal data, survey responses, and online activity. The resulting integration enabled the department store to leave behind the Dark Ages of Rolodexes and typewriters and give its customers a “magical customized experience” of personalized marketing and customer service. It also helped give Macy’s a competitive advantage and foster customer loyalty and retention.

    As data about individual consumers, companies, and industries proliferate, so do the ways companies try to capitalize on them by packaging, analyzing, and selling reports, data sets, and other information products to organizations that need them. It’s a burgeoning industry in its own right. The breadth and variety of commercially available secondary data will continue to expand along with the tools marketers use to exploit the available information.

    Search Engine Results

    Whether or not you are familiar with secondary data sources pertinent to your marketing research project, it is smart to conduct an Internet search (using a reputable search engine) to see what sources surface. Search engines can be hugely helpful in locating both free and commercially available secondary data. With this information, you can compare the options and decide whether it makes sense to pay for data or rely only on free resources.

    In addition, thorough Internet searches can help confirm that you’ve tapped into whatever existing data sources might be helpful to you before you decide to invest in primary research and data collection, which is usually more expensive than secondary data.

    Analyzing Secondary Data

    With secondary research in hand, the next step is to review your source materials to pull out the insights that are most pertinent to your marketing problem. Some secondary research sources may include data you can analyze and map to your own customer segmentation or other market analyses. Other secondary research provides analysis and insights you can use to develop implications and recommendations for your organization and marketing problem.

    It is helpful to capture key findings and recommendations from the secondary research review and analysis, just as you would for a primary research project. The goal is to summarize what you have learned, making it easier for any primary research activity to build on what as already been discovered from secondary research.

    Advantages and Disadvantages of Secondary Research

    There are tremendous advantages in using data from secondary sources. First, the expense of gathering information from secondary sources is usually a fraction of the cost of collecting primary data. It also requires less time to collect secondary data, and often there are significant time pressures around getting the information needed to solve a marketing or management problem. With rapid, ongoing developments in information technology, it is becoming easier and more cost-effective to gather, merge, and reformulate numerous secondary sources of data within a single system or database. This capability has made secondary data even more attractive.

    There are two primary limitations of secondary research. First, the information may be somewhat dated, since you are using data previously collected by a third party. Second, secondary data are rarely collected for precisely the same reasons that you are conducting your marketing research project. The secondary research may be related to your current marketing problem, but it probably does not address your exact problem with your exact market and competitive dynamics.

    You can gain a lot from secondary research, but it is important to account for these limitations as you decide how to incorporate insights from secondary data. In spite of these limitations, the advantages of secondary research are so great that it’s standard practice not to proceed with primary data collection until a thorough review of secondary information has been conducted.


    1. midasfranchise.com/research-midas/how-do-i-find-a-midas-location/ ↵
    2. stats.oecd.org/glossary/detail.asp?ID=5755 ↵

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