AI ethics in financial services: Balancing automation with fairness and transparency
From combating fraud to one-on-one financial counselling, AI has been life-changing, allowing financial institutions to make informed decisions.


Imagine a gig worker in India applies for a loan from a bank through a digital lending app powered by an AI-based credit assessment system. Despite having a regular stream of income, his application is unexpectedly rejected. This is done simply based on the algorithm used by the AI tool powering the digital lending platform. This seems unreasonable, but plausible because the AI model has been trained on a biased data set and since the person has no credit history, his profile is seen as ‘risky’.
This could be a common scenario soon, as banks and financial institutions increasingly deploy AI-based solutions for improving their processes, decision-making, customer service and boosting their offerings. From credit scoring and fraud detection to algorithmic trading and customer service, AI is embedded in nearly every facet of modern finance.
Over the past decade, the financial services industry has leveraged AI to increase efficiency and minimise risk. From combating fraud to one-on-one financial counselling, AI has been life-changing, allowing financial institutions to make informed decisions. Yet, with great power comes great responsibility and while the adoption of AI is pertinent today, assurance of establishing ethical principles during AI utilisation is the real test.
Importance of ethics in financial services
Using AI ethically in financial services is crucial because the decisions made by AI systems can have a significant impact on people’s financial well-being. When ethical measures are not applied in the use of AI for providing financial services, the effects can be disastrous for both the customers and the bank.
Biased algorithms might unfairly target or exclude specific groups. Additionally, unethical AI practices could result in a huge loss of customer confidence since clients always expect transparency from financial institutions.
It can also cause damage to the reputation and impact on brand value and client relationships. Apart from this, regulatory issues can arise if organizations are found to infringe against data compliance and protection rules.
Setting up ethical frameworks for FSIs
To ensure AI is being used to enable ethical decision-making for banks and financial services institutions, a few considerations must be kept in mind:
Start with an AI governance strategy
Creating ethical AI governance models is crucial for facilitating accountability and transparency. It is crucial to put in place accountability mechanisms that establish well-defined roles and responsibilities of those who are in charge of AI systems.
Some AI models can act as ‘black boxes’ that make interpretation of data difficult, so using transparency in data collection and interpretation is a crucial step in managing data ethically. Setting up ethics committees and governance boards ensures that AI systems are being deployed in the right manner and regulations are being followed.
Focus on data privacy and security
AI systems rely heavily on consumer data to develop solutions. This makes privacy and security critical concerns for organizations. AI-driven malware can make systems more vulnerable to unauthorized access, data breaches, or misuse of personal information.
This can erode consumer trust and lead to legal consequences. So, it is critical to implement privacy-preserving techniques, ensure compliance with data protection regulations and put together a secure AI infrastructure against cyber threats.
Ensure fairness and bias mitigation
AI-based algorithms can sometimes result in driving business decisions that are biased and unfair because of the inadvertent discrimination that can be present in the training data. This bias sometimes shows up against minorities and marginalised groups. So, banks must actively audit and adjust their models to ensure equitable outcomes.
They should deploy diverse and representational data to training models and apply fair and transparent ML techniques. The crucial step thereafter is to conduct regular bias assessment and their impact on customer satisfaction.
As AI continues to transform the financial services sector, balancing innovation with ethical accountability is more important than ever. Investment in AI is expected to see an impressive growth, with India’s AI spending set to hit $6 billion by 2027. Deploying a strong ethical governance system is critical to making sure AI benefits all communities equitably and responsibly.
Mohan Subrahmanya, Country Leader at Insight Enterprises
(Disclaimer: The views and opinions expressed in this article are those of the author and do not necessarily reflect the views of YourStory.)