The 5 Best Practices of Retail Marketing Personalization

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Marketing personalization has become a key strategy for retailers looking to increase customer engagement and drive sales. By tailoring marketing messages and offers to individual customers, retailers can create more relevant and compelling experiences that will help them stand out in a crowded marketplace. Here are a few use cases for how retailers can use marketing personalization to improve their bottom line.EditorMarketing personalization has become a key strategy for retailers looking to increase customer engagement and drive sales. By tailoring marketing messages and offers to individual customers, retailers can create more relevant and compelling experiences that will help them stand out in a crowded marketplace. Here are a few use cases for how retailers can use marketing personalization to improve their bottom line.

The Five Best Practices of Retail Marketing Personalization

1 Personalized product recommendations

One of the most effective ways retailers can use marketing personalization is by providing customers with personalized product recommendations. Retailers can use customer data such as purchase history, browsing behavior, and demographic information to identify patterns and preferences. This data can be analyzed to create customer segments, which can be targeted with tailored product recommendations. For example, if a customer frequently purchases running shoes, they may be interested in purchasing new running gear like running socks or a running watch. Retailers can also recommend complementary products such as a water bottle or a gym bag. Additionally, with machine learning models, retailers can analyze a customer’s browsing history and other data points to recommend similar products they may like, even if they haven’t purchased them before.

Let’s say an online retailer specializes in selling athletic gear. A customer named John has been browsing the website for running shoes and has purchased a few pairs in the past. The retailer can use this information to provide John with personalized product recommendations when he visits the site. For example, the retailer can recommend running socks, a running watch, or a gym bag, as these are all complementary products that someone who frequently purchases running shoes might be interested in. Additionally, the retailer can also use machine learning models to recommend similar products, such as trail shoes or training shoes, even if John hasn’t purchased them before.

2 Personalized promotions and discounts

Another way retailers can use marketing personalization is by providing customers with personalized promotions and discounts. This can be done by analyzing customer purchase history and browsing behavior to identify the products and categories that are most likely to drive sales. Retailers can then use this information to create targeted promotions and discounts that will encourage customers to make a purchase.

Continuing with the same example, the retailer can also use John’s purchase history and browsing behavior to provide him with personalized promotions and discounts. For example, if the retailer is launching a new line of running shoes, they can send John an email with a promotion on the new line, or offer him a discount on his next purchase of running shoes. Additionally, the retailer can also use data on when John is most likely to be in the market for running shoes to send him the promotion at the right time to increase the chances of conversion. Additionally, based on John’s browsing history, the retailer might find out he has been looking for Crossfit shoes as well, it could offer him a bundle deal for Crossfit shoes and some Crossfit-specific gear. By using these personalized strategies, the retailer can create a more engaging and relevant experience for John, which can help increase his engagement, drive sales, and ultimately improve their bottom line.

3 Personalized email campaigns

Another way retailers can use marketing personalization is by providing customers with personalized promotions and discounts. Retailers can use data on customer purchase history and browsing behavior to identify the products and categories that are most likely to drive sales. For example, if a customer frequently purchases running shoes, retailers can offer them a promotion on a new line of running shoes or related gear, or a discount on their next purchase. Retailers can also use customer data to create targeted offers for specific product categories or for customers who have not shopped in a while to encourage them to come back. Additionally, using Machine learning models retailers can analyze customer data and predict what would be the best time for them to receive offers to increase the chances of conversion.

4 Personalized in-store experiences

Retailers can also use marketing personalization to create personalized in-store experiences. For example, retailers can use customer data to provide personalized product recommendations and offers when customers walk into the store. Retailers can also use technology such as beacons and mobile apps to provide customers with customized offers and promotions while they shop.

5 Personalized loyalty programs

A personalized loyalty program can be a powerful tool for retailers to keep customers engaged and drive repeat business. Retailers can use customer data such as purchase history and browsing behavior to create targeted loyalty programs that will appeal to different customer segments. For example, retailers could offer exclusive discounts or early access to new products for frequent shoppers, or special deals for customers who purchase high-value items.

By using marketing personalization, retailers can create more engaging and relevant experiences for their customers. This will help retailers increase customer engagement, drive sales and ultimately improve their bottom line.

Areeya Lila
Areeya Lila has a passion for customer experience and over 20 years in technology. She's an entrepreneur who loves building products; currently, VIEWN enables eCommerce stores to provide the best possible shopping experience through artificial intelligence (AI) powered data analytics and customer personas.

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