5 Ways to Use Data to Fuel Customer Loyalty

Customer-Data-Profile

“The customer is always right.” This phrase has been a staple of business for decades, and in this era of customer-focused marketing, it takes on both new shape and importance. 

We are living in the age of the smart consumer; they know what they want, and they also know that if one business doesn’t provide it for them, there are likely many others just a mouse click away that will. The crowded marketplace means that customers are less likely to remain loyal to one brand. The advent of social media has also empowered consumers to share both positive and negative brand experiences online. E-commerce has provided customers with a plethora of opportunities and choices sitting right on their smartphones. This can be a positive for businesses that pay attention to their customers’ needs and a drawback for those who aren’t using customer data to empower their marketing strategy. 

If you’re not collecting and utilizing customer data in your efforts or are unsure of how to use analytics to boost your customer lifetime value (CLV), read on for some ideas. 

Using Data: Smarter, Not Harder 

Marketers have been told for some time now that the key to creating more relevant, “sticky” campaigns is to use data to inform your content. However, the utility of data analytics goes beyond the campaign level. Today’s laser focus on customer experience and journey means that data should be the backbone of your entire business strategy. 

While many businesses may realize the star role that CX needs to play in their efforts, few truly know how to use data analytics to improve experience and garner true customer loyalty. According to a recent study published by McKinsey, businesses’ use of analytics to create a competitive edge in customer experience is only at 32%. This demonstrates the issues that many businesses are having in trying to apply data in a universal, transactional way across their entire organization. 

Great customer experiences lead to higher retention rates, increased brand loyalty, and bigger customer lifetime value (CLV). Improving customer experiences can seem like a straightforward task, but unless you base new tactics and strategies on tools like zero-party data, you might be putting in effort and resources in the wrong places. 

So, what are some RIGHT ways to use data analytics to improve customer loyalty? Here are 5 ideas to help you get started building that data-driven competitive edge. 

1. Use Behavioral Analytics Data 

Today’s ultra-connected world means that both your current and new customers will interact with your brand through many different channels. Eventually, they will develop a preferred way in which they obtain the goods and services they need from you. These preferences provide valuable insights about themselves, their behaviors, their lifestyles, and even their future purchases and areas of need. 

By using a CDP like AiinteleKt’s Insight Marketing Platform (IMP), you can segment users based on these various touchpoint behaviors on autopilot. 

If you have an e-commerce store, a true IMP will allow you to segment your patrons based on their transaction history, number of previous purchases, and even their product search history. This can provide you with insight that informs a potential path for each customer. For example, consider the potential implications of someone who “purchased X product” 12 months ago, but then also looked at the upgraded version of the product and downloaded the whitepaper on the upgrade using an email link sent to them. You can use these touchpoints to know exactly what branded campaigns to send them, and through which channel (email) to which they’re most likely to respond. You can also infer their areas of interest and what other product and service knowledge will be beneficial for them to see. This type of data segmentation not only leads to increased sales but also makes the customer feel as if you’re paying attention to their needs and serving as a helpmate to them in their search for the right product. 

2. Use Data to Fix Pain Points 

Once you begin using data to inform on a customer’s interests, pain points, and preferences, consider sharing non-promotional content that’s meant to nurture them through the know-like-trust cycle. The more relevant the content, the more likely they are to remain on your outreach list and to convert into customers. 

Consider this example: You’re a marketing agency that provides SEO services to companies looking to increase their standing on SERPs. Some of your clients want to just improve their site’s overall SEO, while others are looking to go deeper and boost the backlinks to their sites. 

By collecting the right data, you can ensure you’re providing the right expert advice to each group. The overall SEO segment would get informative blog posts or video walkthroughs about various SEO-boosting website tactics they can use to maximize their website’s potential, and the backlinks segment would receive tips on prospecting sites for pitching ideas or articles on how to submit their products and services to influencers. By not always pitching but providing value-add content, your organization is seen as an asset that is invested in your customers, and this builds trust and loyalty. 

3. Use Data to Provide Recommendations 

One of the best aspects of data analytics is how it can help you predict the future. By curating and analyzing data on your customer’s past purchases, wish lists, and even search information, you can provide personalized recommendations that make them feel you’re truly vested in their brand experience. 

Just how important are personalized recommendations to the modern consumer? Look at Amazon’s audiobook powerhouse, Audible for proof. For several years, Audible provided recommended audiobook selections to their premium members based on their prior purchases, favorite authors, preferred story tropes, and even their ratings on narrators on the customized home page a member saw first on login. Audible decided to remove this “instant gratification” feature from members’ home pages for a time to promote their new “Audible Originals” content. Within days, they amassed a record number of complaints about the removal of this feature and a record number of patrons canceled their premium memberships. Luckily, Audible realized their mistake and quickly pivoted to providing the personalized recommendations feature on their Audible app. However, those customers who canceled their memberships in the interim will take lots of effort – and marketing dollars – to regain. 

Using data to gain insight into customer preferences and suggest products and services that make their lives better demonstrates a brand that gets EXACTLY what customer experience is all about. This builds a bridge of loyalty that keeps customers coming back for more. 

4. Use Data to Propel AI Efforts 

With AI learning, businesses can provide personalized search results to leads and customers faster and easier. Because everything is done in the background and your AI results get smarter with more exposure, you eliminate the need for manual data mining and analysis, saving a lot of time and effort. 

For example, many real estate companies use AI learning to personalize search results and recommendations. Many website search pages deliver instant search results for returning users based on wish-listed homes and experiences, previously booked tours, and even recent search history and preferences to keep these results highly relevant. 

The personalized search results have already been influenced by the price points, specific amenities, and desired locations these users searched for in the past—so users never get recommendations that are too far out of their budget, needs, and preferences. 

Nothing is more frustrating in the age of instant gratification than having to re-enter all the information for which you’re searching repeatedly. This is a smart way of using AI to demonstrate that you know your customer’s time is precious, that you respect that, and that mutual respect is a cornerstone of trust in any relationship. 

5. Use Data to Engage in Real-Time 

If you can streamline your sales processes and meet customers at the moment, you can significantly speed up your sales cycles and pitch your wares to customers while they are actively thinking about a purchase. 

For example, after an online shopper adds products from your store to their wishlist, a smart IMP can send them a reminder notification within a few hours, reminding them of that dress they liked so much but this time, attaching a coupon for the dress, making it an offer they are much less likely to refuse. 

Online businesses can do the same after learning that a user has opted into a valuable lead magnet. For example, if a lead registers for a webinar on your website, offering to send them notifications on Facebook Messenger to remind them about the event provides you both with a “win-win” scenario: they are getting personalized reminders and calendar notices, and you are getting access to market to them on another channel. After the seminar, you can follow up with them on Messenger to see how they liked the seminar, answer any questions, or send them more relevant content to boost their chances of converting to a sale. This not only provides you with more marketing touchpoints, but it also shows customers that your organization follows up with its patrons and cares about their feedback. When you demonstrate that your customers’ voices and opinions matter, they’re much more likely to make you their brand of choice. 

Are you interested in diving deeper into your retail marketing challenges? Schedule a 30-minute chat with one of our specialists. We can review your unique situation and suggest approaches that can set you on the path to success 

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