{"id":38727,"date":"2022-10-05T07:28:28","date_gmt":"2022-10-05T11:28:28","guid":{"rendered":"https:\/\/centricconsulting.com\/?p=38727"},"modified":"2022-11-17T13:41:00","modified_gmt":"2022-11-17T18:41:00","slug":"customer-understanding-and-digital-analytics-integration","status":"publish","type":"post","link":"https:\/\/centricconsulting.com\/blog\/customer-understanding-and-digital-analytics-integration\/","title":{"rendered":"Customer Understanding and Digital Analytics Integration"},"content":{"rendered":"

As we wrap up our customer understanding blog series, we look at how to keep the customer in mind when using modern digital analytics.<\/h2>\n
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Digital analytics no longer pertain only to public-facing experiences like websites. Modern organizations are deploying an integrated approach to all interactions that ensure they can enrich both customer profiles as well as aggregated behavioral analysis.<\/p>\n

Almost every organization tracks and measures the performance of any public digital experience using an analytics platform like Google Analytics. However, where more mature organizations thrive is when they extend the same thinking into different realms of the overall user experience. Companies like American Airlines and Amazon, for example, are looking across different interaction models to gain a more robust understanding of what people are doing, why, when and how.<\/p>\n

This strategy does two things. First, it helps these companies understand how large numbers of customers use all the platforms and experiences to support their overall business objectives.<\/strong> This information can inform decisioning and prioritization. Second, the strategy helps modern organizations understand how to group individual users so businesses can tailor experiences based on behavioral data and attributes.<\/p>\n

Planning for Prescriptive Digital Analytics<\/h2>\n

These two ways of using digital data, while not necessarily new, are more prominent now as enterprise-wide machine learning (ML) and artificial intelligence<\/a> (AI) platform installations are outpacing the digital platform integration of these models. ML and AI provide vast opportunities for many organizations to mature with their data as they acquire it.<\/p>\n

But with the growth of ML and AI comes a change in how to prepare your analytics practice. Too many organizations focus on measures and metrics as opposed to what they want to learn. In other words, they are more descriptive than prescriptive.<\/strong> We prefer to reverse the planning process to focus on what questions you want to answer before creating a relational model based on categorizing those questions. For example, consider the following questions:<\/p>\n