Categories
Big Content Content Effectiveness

Connecting Organizations Through Metadata

Metadata is the foundation of a digitally-driven organization. Good data and analytics depend on solid metadata.  Executional agility depends on solid metadata. Yet few organizations manage metadata comprehensively.  They act as if they can improvise their way forward, without understanding how all the pieces fit together.  Organizational silos think about content and information in different ways, and are unable to trace the impact of content on organizational performance, or fully influence that performance through content. They need metadata that connects all their activities to achieve maximum benefit.

Babel in the Office

Let’s imagine an organization that sells a kitchen gadget.

lens of product

The copywriter is concerned with how to attract interest from key groups.  She thinks about the audience in terms of personas, and constructs messages around tasks and topics of interest to these people.

The product manager is concerned with how different customer segments might react to different combinations of features. She also tracks the features and price points of competitors.

The data analyst pours over shipment data of product stock keeping units (SKU) to see which ZIP codes buy the most, and which ones return the product most often.

Each of these people supports the sales process.  Each, however, thinks about the customer in a different way.  And each defines the product differently as well.  They lack a shared vocabulary for exchanging insights.

A System-generated Problem

The different ways of considering metadata are often embedded in the various IT systems of an organization.  Systems are supposed to support people. Sometimes they trap people instead. How an organization implements metadata too often reveals how bad systems create suboptimal outcomes.

Organizations generate content and data to support a growing range of  purposes. Data is everywhere, but understanding is stove-piped. Insights based on metadata are not easy to access.

We can broadly group the kinds of content that audiences encounter into three main areas: media, data, and service information.

External audiences encounter content and information supplied by many different systems
External audiences encounter content and information supplied by many different systems

Media includes articles, videos and graphics designed to attract and retain customers and encourage behaviors such as sharing, sign-ups, inquiries, and purchases.  Such persuasive media is typically the responsibility of marketing.

Customer-facing data and packaged information support pre- and post-sales operations. It can be diverse and will reflect the purpose of the organization.  Ecommerce firms have online product catalogs.  Membership organizations such as associations or professional groups provide events information relating to conferences, and may offer modular training materials to support accreditation.  Financial, insurance and health maintenance organizations supply data relating to a customer’s account and activities.  Product managers specify and supply this information, which it is often the core of the product.

Service-related information centers on communicating and structuring tasks, and indicating status details.  Often this dimension has a big impact on the customer experience, such as when the customer is undergoing a transition such as learning how to operate something new, or resolving a problem.  Customer service and IT staff structure how tasks are defined and delivered in automated and human support.

Navigating between these realms is the user. He or she is an individual with a unique set of preferences and needs.  This individual seeks a seamless experience, and at times, a differentiated one that reflects specific requirements.

Numerous systems and databases supply bits of content and information to the user, and track what the user does and requests.  Marketing uses content management and digital asset management systems. Product managers feed into a range of databases, such as product information systems or event management systems. Customer service staff design and maintain their own systems to support training and problem resolution, and diagnose issues. Customer Relationship Management software centralizes information about the customer to track their actions and identify cross selling and up selling opportunities.  Customer experience engines can draw on external data sources to monitor and shape online behaviors.

All these systems are potential silos.  They may “talk” to the other systems, but they don’t all talk in a language that all the human stakeholders can understand.  The stakeholders instead need to learn the language of a specific ERP or CRM application made by SAP, Oracle or Salesforce.

Metadata is Too Important for IT to Own

Data grows organically.  Business owners ask to add a field, and it gets added.  Data can be rolled up and cross tabulated, but only to an extent.  Different systems may have different definitions of items, and coordination relies on the matching of IDs between systems.

To their credit, IT staff can be masterful in pulling data from one system and pushing it into another.  Data exchange — moving data between systems — has been the solution to de-siloing.  APIs have made the task easier, as tight integration is not necessary.  But just because data are exchanged, does not mean data are unified.

The answer to inconsistent descriptions of customers and content has been data warehousing. Everything gets dumped in the warehouse, and then a team sorts through the dump to try to figure out patterns.  Data mining has its uses, but it is not a helpful solution for people trying to understand the relationships between users and items of content.  It is often selective in what it looks at, and may be at a level of aggregation that individual employees can’t use.

Employees want visibility into the content they define and create, and know how customers are using it.  They want to track how content is performing, and change content to improve performance.  Unfortunately, the perspectives of data architects and data scientists are not well aligned with those of operational staff.  An analyst at Gartner noted that businesses “struggle to govern properly the actual data (and its business metadata) in the core business systems.”

A Common Language to Address Common Concerns

Too much measurement today concerns vaguely defined “stuff”: page views, sessions, or short-lived campaigns.

Often people compare variants A and B without defining what precisely is different between them.  If the A and B variations differ in several different properties, one doesn’t learn which aspects made the winning variant perform better.  They learn which variant did better, but not what attributes of the content performed better.  It’s like watching the winner horse at a race where you see which one won, but not knowing why.

A lot of A/B testing is done because good metadata isn’t in place, so variations need to be consciously planned and crafted in an experiment.  If you don’t have good metadata, it is difficult to look retrospectively to see what had an impact.

In the absence of shared metadata, the impact of various elements isn’t clear.  Suppose someone wanted to know how important the color of the gadget shown in a promotional video is on sales.  Did featuring the kitchen gadget in the color red in a how-to promotional video increase sales compared to other colors?  Do content creators know which color to feature in a video, based on past viewing stats, or past sales?  Some organizations can’t answer these questions.  Others can, but have to tease out the answer.  That’s because the metadata of the media asset, the digital platform, and the ordering system aren’t coordinated.

Metadata lets you do some forensics: to explore relationships between things and actions.  It can help with root cause analysis.  Organizations are concerned with churn: customers who decide not to renew a service or membership, or stop buying a product they had purchased regularly.  While it is hard to trace all the customer interactions with an organization, one can at least link different encounters together to explore relationships.  For example, do the customers who leave tend to have certain characteristics?  Do they rely on certain content — perhaps help or instructional content?  What topics were people who leave most interested in?  Is there any relationship between usage of marketing content about a topic, and subsequent usage of self-service content on that topic?

There is a growing awareness that how things are described internally within an organization need to relate to how they are encountered outside the organization.  Online retailers are grabbling with how to synchronize the metadata in product information management systems with the metadata they must publish online for SEO.  These areas are starting to converge, but not all organizations are ready.

Metadata’s Connecting Role

Metadata provides meaningful descriptions of elements and actions.  Connecting people and content through metadata entails identifying the attributes of both the people and the content, and the relationships between them.  Diverse business functions need uniform ways to describe important attributes of people and content, using a common vocabulary to indicate values.

The end goal is having a unified description that provides both a single view of the customer, and gives the customer a single unified view of the organization.

Challenges

Different stakeholders need different levels of detail.  These differences involve both the granularity of facets covered, and whether information is collected and provided at the instance level or in aggregation.  One stakeholder wants to know about general patterns relating to a specific facet of content or type of user.  Another stakeholder wants precise metrics about a broad category of content or user.  Brands need to establish a mapping between the interests of different stakeholders to allow a common basis to trace information.

Much business metadata is item-centric.  Customers and products have IDs, which form the basis of what is tracked operationally.  Meanwhile, much content is described rather than ID’d.  These descriptions may not map directly to operational business metadata.  Operational business classifications such as product lines and sales and distribution territories don’t align with content description categories involving lifestyle-oriented product descriptions and personas.  Content metadata sometimes describes high level concepts that are absent in business metadata, which are typically focused on concrete properties.

The internal language an enterprise uses to describe things doesn’t match the external language of users.  We can see how terminology and focus differs in the diagram below.

Businesses and audiences have different ways of thinking
Businesses and audiences have different ways of thinking

Not only do the terminologies not match, the descriptors often address different realms.  Audience-centric descriptions are often associated with outside sources such as user generated content, social media interactions, and external research.  Business centric metadata, in contrast, reflects information captured on forms, or is based on internal implicit behavioral data.

Brands need a unified taxonomy that the entire business can use.  They need to become more audience-centric in how they think about and describe people and products.  Consider the style of products.  Some people might choose products based on how they look: after they buy one modern-style stainless product, they are more inclined to buy an unrelated product that also happens to have the same modern stainless style because they seem to go together in their home.  While some marketing copy and imagery might feature these items together, they aren’t associated in the business systems, since they represent different product categories.  From the perspective of sales data, any follow-on sales appear as statistical anomalies, rather than as opportune cross-selling.  The business doesn’t track products according to style in any detail, which limits its ability to curate how to feature products in marketing content.

The gap between the businesses’ definition of the customer, and the audience’s self-definition can be even wider.  Firms have solid data about what a customer has done, but may not manage information relating to people’s preferences.  Admittedly it is difficult to know precisely the preferences of individuals in detail, but there are opportunities to infer them.  By considering content as an expression of individual preferences and values, one can infer some preferences of individuals based on the content they look at.  For example, for people who look at information on the environmental impact of the product, how likely are they to buy the product compared with people who don’t view this content?

Steps toward a Common Language

Weaving together different descriptions is not a simple task. I will suggest four approaches that can help to connect metadata across different business functions.

Approaches to building  unified metadata
Approaches to building unified metadata

First, the entire business should use the same descriptive vocabulary wherever possible.  Mutual understanding increases the less jargon is used.  If business units need to use precise, technical terminology that isn’t audience friendly, then a synonym list can provide a one-to-one mapping of terms.  Avoid having different parties talk in different ways about things that are related and similar, but not identical.   Saying something is “kind of close” to something else doesn’t help people connect different domains of content easily.

Second, one should cross-map different levels of detail of concern to various business units.  Copywriters would be overwhelmed having to think about 30 customer segments, though that number might be right for various marketing analysis purposes.  One should map the 30 segments to the six personas the copywriter relies on.    Figure out how to roll up items into larger conceptual categories, or break down things into subcategories according to different metadata properties.

Third, identify crosscutting metadata topics that aren’t the primary attributes of products and people, but can play a role in the interaction between them.  These might be secondary attributes such as the finish of a product, or more intangible attributes such as environmental friendliness.  Think about themes that connect unrelated products, or values that people have that products might embody.  Too few businesses think about the possibility that unrelated things might share common properties that connect them.

Fourth, brands should try to capture and reflect the audience-centric perspective as much as possible in their metadata.   One probably doesn’t have explicit data on whether someone enjoys preparing elaborate meals in the kitchen, but there could be scattered indications relating to this.  People might view pages about fancy or quick recipes — the metadata about the content combined with viewing behavior provides a signal of audience interest.  Visitors might post questions about a product suggesting concern about the complexity of a device — which indicate perceptions audiences have about things discussed in content, and suggest additional content and metadata to offer.  Behavioral data can combine with metadata to provide another layer of metadata.  These kinds of approaches are used in recommender systems for users, but could be adapted to provide recommendations to brands about how to change content.

An Ambitious Possibility

Metadata is a connective tissue in an organization, describing items of content, as well as products and people in contexts not related to content.  As important as metadata is for content, it will not realize its full potential until content metadata is connected to and consistent with metadata used elsewhere in the organization.  Achieving such harmonization represents a huge challenge, but it will become more compelling as organizations seek to understand how content impacts their overall performance.

—Michael Andrews

Categories
Content Effectiveness

What is the Value of Keywords Today?

The power of search engine keywords is waning. Since the introduction of semantic search with Google’s hummingbird search rewrite, they no longer have a decisive influence in search ranking. At best, they are simply one of dozens of factors involved with semantic search results. Perceptions about keywords have been slow to change for authors and marketers who don’t specialize in SEO, and even for some SEO consultants. Google  throttled the flow of keyword information to content producers, but many people still consider search keywords important or even essential.  Search keywords have become a crutch on which brands and authors rely to try to communicate with audiences.

It’s a challenge to reverse a decade or more of group-think relating to keywords.  For a keyword loyalist, giving up old habits can be hard, even habits that no longer make sense — especially when there are no obvious replacement tactics.  Keywords are more often used unthinkingly than used constructively.  The good news is that although keywords offer limited value to improve SEO, they can improve content quality in selective cases. It’s important to know the difference between the fetish use of keywords in content, and the creative application of keyword insights to improve the quality of content offered to audiences.  The difference between keyword hacks and keyword understanding is methodology.

Search Keywords Shouldn’t Describe Page Titles

The SEO industry has responded to Google’s introduction of semantic search with confusing advice. Although Google doesn’t match exact keywords on a page with keywords used in search queries, numerous SEO consultants still maintain search engine keywords are vital to how Google understands content.  Sure, Google can reinterpret search queries; but they argue if you write natively using the most popular keywords used in search queries, it’s simpler and more effective.  These people suggest that things have changed less than they seem. They note that Google still indexes keywords in search, and still has a keyword planner writers can use.

As Google has altered its behavior over time, SEO has deformed into an incoherent set of tactics.  Many ordinary content producers have lost the ability to understand what these tactics really deliver. They consult Google’s AdWords keyword planner to guide the creation of content, often at the urging of SEO consultants who encourage the practice. The AdWords keyword tool may present forecasts of impressions associated with a search keyword.  But ad impressions are not the same as search impressions (an impression being the existence of an item on a page accessed by a user, not necessarily an indication that the person noticed the item).  The algorithm Google uses to prioritize the display of paid advertising based entirely around keywords is different from the algorithm it uses to prioritize organic search results based on search terms and contextual information. It’s a mistake to use Google’s keyword planner for advertising and assume it will deliver a better search ranking or more qualified audience. But content producers make this assumption all the time, because it is convenient and they lack a conceptually sound process for developing and writing about content.

Significantly, Google’s AdWords encourage the decoupling of search keyword terms from the specific terms used in the content displayed in an ad.  Ad content can be related to the keyword bought without using the actual phrase.  The mandate  that you are supposed to use the exact term in your writing doesn’t even apply to advertising, the one area where Google encourages keyword research. Search engine keywords aren’t magic: they are simply a pricing mechanism for ads.

Search Engine Keywords Mask User Intent

Another common use of search engine keywords is to research popular topics.  SEO consultants and writers believe that search keywords provide them with data-rich market research that will tell them what content they should produce.  But search keywords have never been very solid as data to understand audiences. No matter what tool one uses, the tool won’t illuminate who is seeking information or necessarily why.  Making bold assumptions about people, their motivations, and their likely behavior based on a few search engine keywords is a risky thing to do.

Consider the case of people searching for the phrase “dead Wi-Fi.” This example is fairly typical of search terms: short, inelegant — and ambiguous. Who are the people typing this phrase and what is their intent?  Is the phrase “dead Wi-Fi” more likely to be entered by a 20 year old or a 60 year old? What might the phrase suggest about their level of understanding of wireless routers?  And most importantly, what can we infer about the intentions of the numerous people entering this phrase?  Are they all the same, or do different people have different goals when using the exact same phrase?  Why, when presenting search results matching the exact same search phrase, will different people make different choices about which article titles to click on? Rather than providing answers, the search keyword raises questions.

How search engine keyword can result in different audience behavior

Google prioritizes results to show the most popular pages that seem to match what Google interprets the search to be about. To illustrate, let’s suppose the first search result presents an article about Wi-Fi dead zones in your house.  Google presents a specific popular article on reception problems by interpreting dead to mean “dead zones.”  The eighth search result might provide an article on resolving general Wi-Fi problems, perhaps discussing when the Wi-Fi antenna on a phone or computer isn’t functioning. Here Google presents a popular page on fixing malfunctioning Wi-Fi equipment by interpreting the term dead to mean “not working.” The 15th search result might be entitled “Freedom from Dead Wi-Fi.”  This article title exactly matches the search term, but its purpose is not clear.  It is actually a page promoting the sale of new Wi-Fi equipment rather than a help article to fix existing equipment.   It features images and copy describing a futuristic looking box with many antennas that might appeal to the gamer crowd.

The search ranking for the article “Freedom from Dead Wi-Fi” was determined by two factors: people who entered a different phrase but decided to click on the title, and those who entered the exact phrase. Those who entered a different search query may have been attracted to the aspirational, if vague, promise of having a hassle-free experience.  The term “dead” might resonate with gamers in particular, who don’t want to be on the dead side of anything.  Those who entered “dead Wi-Fi” as a search phrase probably clicked on the title because of confirmation bias: it exactly matched what they thought they were looking for.  Confirmation bias is the tendency to identify with things that confirm our preexisting impressions or concepts.  So if you have content that has intrinsic popularity— it ranks highly anyway because it gets many page views — including a popular search keyword in the title may spur some additional page views due to the confirmation bias factor.  On the other hand, a title that merely sounds like it is helpful can run the risk of disappointing the viewer.  Some people viewing the “Freedom From Dead Wi-Fi” page wanted help on their current Wi-Fi problems. Pages viewed are not the same as audience interest in the content.

Without actually looking through numerous results, it’s not possible to infer much from the search keywords.   Viewing the content within the pages, one can find that the search keywords don’t represent a coherent set of user intentions.

Rethinking Keywords from an Audience Perspective

The purpose of any keyword research should be to understand the language of your audience, not to guess what will rank high on search engines.  And it is important to know what specific audience segments matter most to your organization.

Many people have a naive belief that aggregated, unsegmented Google keyword data provides a perfect mirror of their audience. SEO consultants and writers may believe they are promoting audience interests by using search engine keywords, but they are being data-focused rather than audience-centric.  They aggregate activity to create figures to justify content decisions, rather than start with the more granular needs of individuals and then identify common patterns. They put blind faith in often dubious numbers.

The Myth of the Undifferentiated Audience

People in different roles, from marketing to technical writing, want to believe their audience is undifferentiated. They want to believe that “everyone wants the same thing.” It’s simpler to do so. This mentality is common in marketing in particular: some marketing managers believe they need to talk to everyone and that everyone will want to listen to the brand.

There are a few brands that only care about page views, and care less about who the audience is. Advertising-supported publishers don’t care who visits their page: the ad shown will programmatically change according to who the person is.  Businesses that are purely transactional, such as hotel booking sites, similarly don’t care so much about audience segmentation: they want as wide an audience as possible to generate transaction fees.  But most businesses seek to capture value based on targeting specific kinds of customers, and providing products tailored to their needs.  If some of your customers a more profitable than others — because they buy more, pay more, or are cheaper to serve — simply pursuing page views will skew your brand value.

When brands act as if everyone is equally important, it generally signals a problem in business strategy, or poor operational oversight.  They don’t know, or at least don’t communicate internally, who are their most valuable customers and the need to focus on them.   As a consequence, we have situations where SEO consultants dictate editorial choices, or copywriters rely on keywords to write generic copy because they don’t understand precisely who the audience is, and how they think about the topic.

Shifting the Role of Keywords from Discovery to Understanding

Popular keywords that aren’t specific to the audience segment a brand wants to attract, only provide the illusion of data.  To provide value, keywords need indicate information to authors that is better than what they can get relying on available subject expertise.

Brands too often expect keywords to tell them what to say.  They focus on target keywords instead of target audiences.  They get fixated on the circular logic of “discovery”: they hope to discover the right keyword so audiences can discover the right content (theirs).  If keywords exist to promote discovery, they can’t at the same time be the object of discovery.  When this happens, the keyword becomes the end, instead of a means to an end.  The keyword defines the audience, instead of the audience being the party defining appropriate keywords.

If instead we shift the role of keyword away from “discovery” toward understanding, we get a more realistic goal. Brands need to understand which audience keywords will promote understanding of their content.  Here we assume the brand already knows what they want to say, they just need to know exactly how to phrase it.  The target is a message; the keywords are simply guidelines for presenting the message. The keywords relate to terms used by a specific audience, rather than a magic box of gold at the end of a rainbow.

Understanding Audience Segments Through Language

Audience keywords — the specific terminology used by an audience segment — is not something available from Google search data.  But audience keywords can be derived from various sources, and brands can find it worthwhile to understand linguistic differences.

One outcome of the vast quantities of text data that are now available is a growing understanding of language differences among groups of people.  Social media scholars, for example, notice words and even neologisms being used frequently by people associated with one another, while these same terms aren’t used widely in the general population.  Our language usage seems to be drifting back into distinct linguistic dialects, a consequence of both our online social connectivity and our selectively accessing content (the filter bubble).  Now that the age of mass media is over, we no longer expect everyone to talk about things the same way.

Some writers may object to being concerned with linguistic differences.  For example, advocates of plain language argue that all content should be written in a way that anyone can understand it.  While such a goal is surely admirable for some sectors — government in particular — it is not true that all parties are equally satisfied with plain language descriptions.  I’ve seen scientists frustrated by the quality of writing using plain language to describe a topic that required more specialized words, which were not allowed.  They complain that a discussion is oversimplified or key details are missing.  Similarly, writers may insist they are writing about a topic of narrow interest, so that anyone interested in the topic is likely to talk about it in the same way.  But even for niche topics, there can be novices and experts.  I am not suggesting that the vocabulary of all topics need to be segmented by audience; I am simply noting that it can be presumptuous to act as if no differences in audience needs exist.

Audience keywords involve a different set of tools and data than search engine keywords.  Audience keyword analysis basically involves comparing the frequency of words in a target texts (corpus) of an audience, with the frequency of words used in another set of texts, often representing the general population.   This comparison allows a writer to understand what vocabulary is most unique to the audience, and how they use this vocabulary.  There are commercial SaaS products that provide these capabilities, such as Sketch Engine.  There are also desktop software programs that one can use.  I’ve used the popular Antconc program, for example.  For those wanting to process large sets of data, text analysis libraries in Python and in the R statistical software can be used.

The next task is identifying what content exists that can reveal the vocabulary your audience uses to discuss a topic.  A range of sources offer a rich corpus of content to identify the vocabulary used by your customers:

  1. For audiences who belong to topic focused communities of interest, the texts of publications they read regularly, such as hobby magazines (for understanding keywords of enthusiasts), or specialized trade publications (for understanding the  keywords of a B2B vertical segment)
  2. Transcripts of focus groups of a target audience segment
  3. User comments from audiences in social media, or community forum discussions
  4. Terms used in internal search.

By analyzing such source content, writers identify words with special significance that are used more frequently by an audience segment than by the population as a whole.  They can understand their audience’s preferred terminology, and nuances in how they describe things, especially adjectives.  These can uncover value propositions.

Tribal publications — publications dedicated to distinct tribes such as specific professions or groups of avid fans of an activity — are different from general publications that don’t have such a tight audience focus.  They are more likely to use lingo or jargon, and reflect the internalized language of the audience who read these publications.  They are also likely to be read more loyally, and therefore promote the usage of words in a particular way.

A special comment about using internal search terms (also known as vertical search).  Why are internal search terms are okay, but external search engine terms not?  People using site search are more likely to be your target audience.  They have seen your site, got of sense of who you are, and feel motivated to explore further.  Vertical search was once considered an indication of UX or information architecture failures. Now vertical search is it a key differentiator for brands to guide their customers to find their products.  Search logs from internal searches can provide information about the terminology that people coming to your brand use.

Keywords are Clues, not Facts

Keywords can reveal interesting clues about audiences. Clues suggest something, but they should not dictate it.  A hint in a crossword puzzle is different from the answer.  Internal search keywords, for example, can provide hints about dimensions of topics, and ways to discuss topics, but are not themselves the answer to what you should be writing. Not being clear about this distinction results in the clueless, fatalistic question: “What does the data say we should do?”  Being data driven may be virtuous, but running on autopilot isn’t. Clues aren’t facts.

Keywords Aren’t Market Data

Keywords may provide clues to audience interests, but don’t provide direct data.  One can’t infer directly from keywords who is using them.  You need other forms of data to tie the reader to the keyword.  So if you find an odd kind of search query showing up on your internal search logs, it does not automatically indicate that you should be producing content using that keyword.  Search keywords are reliable indications of interest only when the search keywords match the keywords of the audience that you want to attract. Perhaps a number of people who aren’t your target audience mistakenly came to your content and are trying to find something you don’t offer, or care to offer. Your own internal analytics data will probably provide a better indication of what content you should produce than relying on internal search logs. There can be a role for  search terms to gauge potential interest on topics about which you have not written previously, but your internal content usage analytics will in most cases be a better indication of what resonates with the audiences you attract.

Relying On Keywords Can Distort Meaning

Algorithmic assessments should never be a substitute for judgment in writing.  Two terms that seem similar, but have different frequencies, are not necessarily identical in meaning.  Related and similar-sounding words can have subtly different meanings, or different connotations.  One shouldn’t use the most popular term simply because it’s the most popular.  Make sure the term chosen is exactly equivalent to the term not chosen.

Sometimes more formal (and less popular) terms carry more precise meanings.  The best way to connect a term that’s popular with your audience with a more precise term that you need to use in your content, is through cross referencing.

Keywords Can Help Brands Develop a Preferred Terminology for Topics and Audiences

If you routinely write about a certain topic, it may be worth your effort to analyze audience discussion relating to the topic.  Text analysis programs can help brands determine the audience-preferred terminology relating to a particular domain.  While this is obviously entails cost and effort, it may pay dividends.

Ideally all writers will have sufficient subject domain expertise internalized to know the preferred vocabulary for an audience segment.  But writers often need to write about varied topics, and writing is often outsourced to others. Having a list of audience-preferred terminology with associated definitions can enable any author to write appropriately on a given topic.  Text analysis can even support development of a style guide.  For fields such as health and wellness, where words have precise meaning, a preferred domain terminology is helpful if some writers are not deep subject experts.

In the not too distant future, I can imagine commercial firms will offer tailored keyword products.  Brands will be able to get a list of “keywords of 18 – 24 year old skateboarders” or “vacation-related keywords of upper income 50 – 60 year olds.”  For now, content strategists will need to do the legwork themselves.

— Michael Andrews