Balancing hyper-personalization and privacy in FinServ
Posted: September 20, 2024
There’s always been a paradox between privacy and personalization. People not only want but expect hyper-personalized experiences, but at what cost? If they were told how much of their personal and, in the case of financial services, highly sensitive data was being shared, would they give this up?
A Salesforce survey found that 51% of consumers expect that businesses will anticipate their needs and make relevant suggestions before they even make contact.
Helpful or creepy? The jury is still out.
But one thing is certain: organizations must prioritize building trust to gain compliant access to consumer data, with recorded and auditable consent trails.
What’s the difference between personalization and hyper-personalization
Personalization is nothing new. But as technology evolves, so does the advancement in the depth of personalization we can now achieve.
Whilst standard personalization might offer product recommendations based on broad segments of customer data, hyper-personalization goes one step further to investigate individual customer behavior and life events to deliver context-specific solutions.
Hyper-personalization comes from utilizing artificial intelligence and machine learning alongside real-time data to generate advanced insights.
By leveraging this type of data, banks can address the immediate needs of customers and provide more useful support.
For example, your banking app can suggest a tailored savings plan based on actual spending habits or financial goals… You seem to be spending a lot on takeout coffee… if you put this money aside into a savings pot, you could purchase your holiday 6 months quicker!
Another example, offering investment advice based on real-time market conditions balanced with the customer’s specific risk tolerance.
Deloitte considers hyper-personalization an imperative, not an option, for banks to stand out in a saturated market.
However, the success of hyper-personalization hinges on the ability of banks to manage vast amounts of personal data responsibly.
When does hyper-personalization cross the line?
Despite its benefits, hyper-personalization can become counterproductive if not handled carefully. Customers may feel uncomfortable or even violated if they perceive that their personal information is being used excessively or inappropriately.
Do you want your bank telling you not to spend your money on takeout food? What happens if they recommend shares in a stock that plummets?
There’s high risk, but with high risk comes high reward?
Here are some scenarios where personalization can cross the line:
Overly intrusive messaging: Constantly bombarding customers with personalized offers and messages can lead to annoyance and disengagement. It’s crucial for banks to find the right frequency and context for their communications. Chase Bank has made significant moves in this space, creating its own media network. The jury’s still out on whether consumers want this sort of personalized advertising based on spending habits.
Misuse of sensitive data: Using sensitive information, such as transaction history or personal preferences, without explicit consent can erode trust. Customers need to feel confident that their data is being used responsibly and ethically.
Lack of transparency: If customers are unaware of how their data is being used, they may become suspicious and less likely to engage with personalized services. Transparency about data usage policies is essential to maintain trust.
As always, financial institutions need to demonstrate that they truly know their customer and that they’re genuinely trying to help them financially.
Overcoming the privacy vs. personalization paradox
Transparent practices
Transparency is key to building and maintaining customer trust. Banks should be open about their data practices, clearly communicating what data is being collected, how it will be used, and the benefits customers will receive in return. Providing customers with control over their data through easy-to-understand consent mechanisms is essential. This includes allowing customers to opt-in or opt-out of data collection and usage, and regularly updating them on any changes to data policies.
Advanced technology
Leveraging advanced technologies can also help banks balance hyper-personalization with privacy concerns. For example, differential privacy techniques can be used to analyze data trends without exposing individual customer information. Additionally, blockchain technology can provide a secure and transparent way to manage customer consent, ensuring that all data transactions are recorded and verifiable.
Ethical use of AI and ML
Artificial intelligence (AI) and machine learning (ML) are central to hyper-personalization, but they must be used responsibly. Banks should ensure that their AI and ML algorithms are transparent and explainable, allowing customers to understand how their data is being used to generate personalized recommendations. There should be clear consent management tools in place at a granular level to encourage opt-ins. Implementing ethical guidelines for AI usage can help prevent biases and ensure that data is used in ways that genuinely benefit customers.
Building trust through ethical practices
Ultimately, balancing hyper-personalization with privacy concerns comes down to building trust. Banks must demonstrate their commitment to ethical data practices by prioritizing customer interests and using data to provide real value. By doing so, they can foster long-term customer loyalty and create a competitive advantage in the market.
Guide: Prioritizing privacy in the digital banking revolution
With the bank experience becoming more and more online, discover how you can prioritize privacy while balancing user experience with sensitive data privacy. Find out more about:
- Global approaches to Open Banking frameworks and legislation
- Navigating the shift towards Open Finance
- Steps to prioritize privacy as digital banking continues to evolve
- Case study in Open Banking