Connect with us

Global Banking and Finance Review is an online platform offering news, analysis, and opinion on the latest trends, developments, and innovations in the banking and finance industry worldwide. The platform covers a diverse range of topics, including banking, insurance, investment, wealth management, fintech, and regulatory issues. The website publishes news, press releases, opinion and advertorials on various financial organizations, products and services which are commissioned from various Companies, Organizations, PR agencies, Bloggers etc. These commissioned articles are commercial in nature. This is not to be considered as financial advice and should be considered only for information purposes. It does not reflect the views or opinion of our website and is not to be considered an endorsement or a recommendation. We cannot guarantee the accuracy or applicability of any information provided with respect to your individual or personal circumstances. Please seek Professional advice from a qualified professional before making any financial decisions. We link to various third-party websites, affiliate sales networks, and to our advertising partners websites. When you view or click on certain links available on our articles, our partners may compensate us for displaying the content to you or make a purchase or fill a form. This will not incur any additional charges to you. To make things simpler for you to identity or distinguish advertised or sponsored articles or links, you may consider all articles or links hosted on our site as a commercial article placement. We will not be responsible for any loss you may suffer as a result of any omission or inaccuracy on the website. .

Top Stories

THREE AI QUESTIONS LENDERS MUST ANSWER IN 2018
THREE AI QUESTIONS LENDERS MUST ANSWER IN 2018

Published : , on

 Ben O’Brien, Managing Director, Jaywing 

Advances in AI and machine learning will impact organisations beyond simple technical capability. They will face new types of challenges in terms of skills gaps, different approaches to implementation and new methods for monitoring models. In this blog, Ben O’Brien, Managing Director at Jaywing, explores how lenders can prepare for AI implementation, to ensure they invest wisely in new technologies and stay ahead of their peers.

Is your data ready for AI?

The best technologies in the world can only make use of the data we provide.It’s crucial that organisations have good quality data and appropriate metadata, in a consistent format, to begin with. Even if organisations already use a data warehouse, the information still needs to be transferred to an appropriate analytics platform to deliver insights via mathematical modelling.

From data quality to data storage, the process of transforming data into insight needs best practice data management. What’s more, with new GDPR laws, these practices are more important than ever before. AI predictive models will assess whatever data is presented to them, therefore getting data management right at the beginning is essential to the compliant use of AI.

Are your people prepared for AI?

AI technology is growing in sophistication, but the level of knowledge in the industry isn’t necessarily keeping pace. In a recent Infosys research study, 53% of organisations surveyed cited developing knowledge and skills as the key to preparing for AI deployment and use. Alongside this, many organisations recognised the value of outside specialist help – whether to assist with planning (46%) or for knowledge gathering (40%).

That’s why it’s crucial that businesses ensure their people have enough knowledge of the analytics behind the AI models and technology systems. Many organisations find it useful to bring in specialist outside help to support with knowledge transfer during set-up and deployment.

How do you solve the black box problem?

The final area that is still causing hesitancy in the adoption of deep neural networks in credit scoring is the ‘black box’ problem. Without more certainty in interpreting, predicting and understanding decisions made by deep neural network models, their applicability to the world of lending was always going to be limited – especially in credit risk – where full transparency is a must for the highly regulated industry.

There are a number of known methodologies to constrain AI but in most circumstances, they are reductive such that the outcome is no better than with traditional models. The key is to ensure a methodology that avoids the earlier issue of modest gains, which is the thinking that we applied to solve the ‘black box’ issue once and for all, while also achieving attractive uplifts in performance.

The technology and expertise now exist to create intuitive deep neural networks, which ensure models behave in an intuitive and understandable way and allow businesses to impose constraints on specific fields within the model so that the output adheres to certain business rules. For example, you might expect credit risk to increase as salary levels fall, or decrease as disposable income and affordability improves, and the model needs to reflect these expectations. By guaranteeing those behaviours, the methodology ensures the models obey common-sense relationships and can be understood by the business and signed off through normal governance routes.

This development opens up the real possibility of having automatically-generated models, constantly learning and updating from new data sets, with no black boxes to worry about.  This allows for ‘always optimal’ model performance as models can be redeveloped at will, without the usual cost and effort of redevelopment.

A new era for AI

The successful use of AI presents organisations with many challenges. Yet with best practice data management processes, including compliance with GDPR, the right skills and external support and – crucially – the right technology, organisations will be well positioned to take advantage of the new era of AI.

For organisations to harness the benefits they need to act quickly – AI is currently a hot topic across most industries and plenty of organisations are starting to make moves in this direction.With no more black boxes to worry about, the business case for AI is significantly strengthened thanks to the improved techniques now available. AI now has the ability to deliver consistent, transparent and accurate results for lenders.

Uma Rajagopal has been managing the posting of content for multiple platforms since 2021, including Global Banking & Finance Review, Asset Digest, Biz Dispatch, Blockchain Tribune, Business Express, Brands Journal, Companies Digest, Economy Standard, Entrepreneur Tribune, Finance Digest, Fintech Herald, Global Islamic Finance Magazine, International Releases, Online World News, Luxury Adviser, Palmbay Herald, Startup Observer, Technology Dispatch, Trading Herald, and Wealth Tribune. Her role ensures that content is published accurately and efficiently across these diverse publications.

Global Banking & Finance Review

 

Why waste money on news and opinions when you can access them for free?

Take advantage of our newsletter subscription and stay informed on the go!


By submitting this form, you are consenting to receive marketing emails from: . You can revoke your consent to receive emails at any time by using the SafeUnsubscribe® link, found at the bottom of every email. Emails are serviced by Constant Contact

Recent Post