Demonstrating the Impact of Showrooming on Tenants' Online Performance with Footprints AI
Showrooming, the phenomenon where customers visit physical stores to examine products before purchasing them online, has become a significant challenge for retail property operators.
Footprints AI, one of the most advanced AI-powered Retail Media platforms worldwide, offers a data-driven approach to demonstrate the impact of showrooming on a tenant's website traffic and sales performance. This presentation below explores how Footprints AI tackles this issue by leveraging customer behavior data, predictive modeling, and connected infrastructure inside malls & stores.
OUR UNIQUE AI TECHNOLOGY FOR PHYSICAL RETAIL & RETAIL PROPERTIES
The platform leverages in-store customer intention data to predict and influence physical retail sales more effectively. Using a combination of indoor positioning, predictive models, and omnichannel targeting, Footprints AI captures the complete path to purchase for customers in the physical retail environment. This enables brands to target media audiences based on predicted shopping behavior and different stages of the purchasing journey.
Footprints AI's cutting-edge software employs a sophisticated AI model to understand and predict shopping behavior, acquiring data from Wi-Fi, smart sensors, and other connected infrastructure. This proprietary technology combines offline and online customer data to create a comprehensive view of customer behavior, enabling retailers to generate new revenue streams, improve efficiency, and gain a competitive advantage in the Retail Media Network market.
THE BENEFITS OF MEASURING THE IMPACT OF SHOWROOMING
The showrooming effect is a phenomenon where customers visit physical stores to check out products firsthand, only to purchase them online, often from websites with better prices. This behavior can hurt sales for physical retailers, especially if they lack a strong online presence. On the other hand, this behavior can undermine the pricing model of a retail property operator in relation to their tenants, as tenants can have an impact on their sales indirectly that the retail property won’t be aware of and they wouldn’t be able to count it into their leasing model.
It's essential for retail property owners to understand the showrooming effect for the following reasons:
In summary, retail property owners need to comprehend the showrooming effect to ensure the long-term success and viability of their shopping centers. This understanding allows them to better support their tenants, measure their properties' impact on online traffic and sales, and adjust their business models in response to the evolving retail landscape.
THE METHODOLOGY BEHIND MEASURING THE IMPACT OF SHOWROOMING – HOMOMORPHISM
Footprints AI employs a combination of data acquisition, AI-driven analysis, and predictive modeling to establish the correlation between in-store customer behavior and the uplift in a tenant's website traffic and sales performance:
HOMOMORPHISM – THE AI TECHNOLOGIES THAT CAN POWER THE MEASURING OF THE IMPACT OF SHOWROOMING
While there isn't a specific mathematical model or machine learning technique dedicated solely to tracking and attributing the showrooming effect, there are various technologies available within Footprints AI’s unique set of pre-trained data models to match the physical retail environments that can be applied to understand the correlation between in-store traffic and online sales uplift. These methodologies can be adapted to develop models or algorithms that suit your specific use case.
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THE LOGICAL EXPLANATION OF HOMOMORPHISM
In the context of showrooming, Footprints AI can use a mathematical approach to identify patterns and relationships between online users and offline visitors of shopping centers. This helps us understand how certain offline behaviors influence online behaviors.
For example, we might associate a large group of online shoppers browsing a specific website with a smaller group of visitor segments within a shopping mall. If we can establish a strong connection between the two groups, it would indicate that certain online behaviors are significant in determining how shoppers behave in the physical store. And viceversa.
By finding these connections, we can transfer the knowledge of behaviors and preferences identified in the offline space to the online domain. This helps shopping malls better leverage the showrooming effect.
HAVING ACCESS TO TENANTS’ ONLINE PERFORMANCE DATA
Tracking and understanding the uplift on a tenant's website without direct access and SDK codes can be challenging. However, there are some alternative methods and proxy measures that can be employed to estimate the impact of in-store traffic on a tenant's website.
Some of these methods may involve the collection and processing of personal data. We will ensure compliance with relevant data protection regulations, such as the General Data Protection Regulation (GDPR) and obtain necessary consents from users before collecting such data.
HOW VALIDATION, SAMPLING & CONTINUOUS IMPROVEMENT CAN BE DONE WITH CREATIVE APPROACHES
In order to improve the quality of the probabilistic method in attributing showrooming to a tenant’s uplift in online traffic and sales, there are some creative approaches that the mall can have in order to collect more quality data and also have the validation of the attribution model that the AI technologies generate.
Retail property operators can create a reward program to incentivize shoppers who purchase from their tenants' online shops. For example, customers could receive vouchers or discounts for in-store purchases if they present a receipt from a recent online purchase made on a tenant's website. This encourages customers to visit the physical store and make additional purchases, while allowing the retail property to track and confirm the uplift in online traffic and sales.
Another creative method is to offer a one-stop-shop return service for products purchased online from the e-shops of tenants within the mall. This service allows customers to return items in one place, making the process more convenient for them. By centralizing returns, retail property operators can gather data on the volume and value of online purchases made from their tenants' e-shops. This information can then be used to confirm the uplift in online traffic and sales.
Retail property operators can collaborate with their tenants to organize exclusive in-mall events and promotions for customers who have made online purchases. For instance, customers could be invited to a special event, such as a product launch or a workshop, and receive exclusive offers or free samples upon presenting their online purchase receipt. This approach not only encourages customers to visit the physical store but also allows retail property operators to track the correlation between online sales and in-store traffic.
Retail properties can partner with other retailers or service providers within the mall to offer cross-promotions for customers who have made online purchases from their tenants. For example, customers who present a receipt from an online purchase could receive a discount or a free service from a partnering retailer, such as a complimentary coffee, discounted meal, or free parking. This encourages customers to spend more time at the mall, and it enables retail property operators to gather data on online sales uplift and customer behavior.
Retail property operators can work with tenants to create collaborative loyalty programs that reward customers for both online and in-store purchases. Customers could earn points for every purchase made on a tenant's e-shop and redeem those points for discounts or rewards in-store. This strategy not only drives traffic to physical stores but also allows retail property operators to collect data on the connection between online sales and in-store visits.
By implementing these creative methods, retail property operators can actively engage with shoppers, incentivize them to visit physical stores, and gather valuable data to confirm the uplift in their tenants' online traffic and sales.
CONCLUSION
Footprints AI offers a data-driven solution to demonstrate the impact of showrooming on a tenant's website traffic and sales performance. By leveraging data acquisition, AI-driven customer behavior analysis, and predictive modeling, Footprints AI effectively establishes the correlation between in-store traffic and online performance. This valuable insight empowers retail property operators and tenants to adapt their strategies, maximizing the benefits of both physical and digital channels and turning the showrooming effect into an opportunity for growth.
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Founder of Lazeez Tapas Mayfair /Co Founder Tahina -Autonomous. AI. Frictionless stores /Entrepreneur
1 年Nice