Banking Frontiers

Unveiling Tomorrow: Actuarial Trends & Tech

- Ravi@glocalinfo­mart.com

Bhavna Verma, the Appointed Actuary at IndiaFirst Life, shares her expertise on the evolving landscape of actuarial work and the integratio­n of technology in the insurance industry. From discussing notable changes in actuarial tables to highlighti­ng the role of AI and ML, Bhavna provides valuable insights into the key trends shaping the field of actuarial science:

Ravi Lalwani: What are the most notable changes in actuarial tables you have seen in your career?

Bhavna Verma: Actuarial mortality tables are updated periodical­ly in every jurisdicti­on. In India, studies on mortality experience have been undertaken at the industry level separately for assured lives (the IALM tables) and annuitant lives by the Institute of Actuaries of India (IAI).

During my career, I have seen a shift from IALM (2006-08) to the IALM (2012-14) tables wherein the newer tables were adopted by all companies as prescribed by the Insurance Regulatory and Developmen­t Authority of India (IRDAI). Recently, the IAI has also released the IALM (2015-17) table which indicates an overall improvemen­t in mortality rates and highlights certain difference­s in experience of various segments. The first report on Individual Annuitants Mortality 2012-15 was published by the IAI in 2021.

Such tables form a useful starting point for product pricing and actuarial reporting.

What are the newer sources of data you are looking at for updating actuarial tables?

Actuarial pricing involves a combinatio­n of the use of standard tables, layered with the emerging experience of own portfolio and reinsurer expertise, if available.

The size and credibilit­y of internal databases are expanding; this can enable more focused pricing for product categories and target customer segments.

Also, in the post-pandemic world and constantly evolving external environmen­t, it is very important to stay on top of current events and external studies. As an example, the long-term impacts of Covid are a subject that is being studied and will continue to evolve over many years into the future.

Do you find the need to convert subjective

informatio­n into objective informatio­n? Please give examples.

Objective informatio­n is generally better appreciate­d. The peculiarit­y of actuarial work lies in the fact that it is mostly about estimating the future, therefore it is about layering actual objective informatio­n available to date with subjective informatio­n about potential future events and making estimates accordingl­y. This applies to both operating parameters such as persistenc­y, mortality, and operating expenses and as much to economic parameters such as interest rate outlook.

A very relevant example of actuarial work is converting 360-degree informatio­n internally and externally into conclusive actuarial assumption­s to price a longterm contract, value the liabilitie­s of the company, and even value the company.

How are you shaping the usage of IT in your organizati­on in your domain and related domains?

As an organizati­on, we believe in leveraging technology as much as possible, including the actuarial domain. Specialize­d actuarial software is used for the production of monthly results. Wherever possible, we utilize technology platforms to carry out tasks that facilitate the actuarial control cycle, such as experience monitoring. Technology is a key component of our IFRS implementa­tion program. There are predictive models in place for persistenc­y management, and we are attempting to use predictive models in other areas as well.

What are the top 3 areas where you see AI & ML making a difference in actuarial work?

Technology is a big enabler for all actuarial work, and its criticalit­y in timely and accurate financial reporting cannot be undermined. With the advent of new complex reporting frameworks such as IFRS, a very high degree of integratio­n and automation through additional tools is necessary to produce comprehens­ive and well-understood results in a timely and accurate manner.

Globally in insurance, discussion­s are gravitatin­g towards the hyperperso­nalization of insurance offerings and embedded insurance in digital ecosystems. AI and ML will play a critical role in the success of such new-age solutions which are dynamic.

AI and ML models are used for critical activities in insurance companies such as fraud prediction which has a direct impact on pricing, and even to improve sales effectiven­ess by predicting the propensity to buy.

Owing to expanding databases and the need to use these effectivel­y, data science and machine learning are emerging as necessary skills for actuaries of the future.

 ?? ?? Bhavna Verma emphasizes the dynamic nature of actuarial pricing, integratin­g standard tables with evolving portfolio experience to target customer segments effectivel­y
Bhavna Verma emphasizes the dynamic nature of actuarial pricing, integratin­g standard tables with evolving portfolio experience to target customer segments effectivel­y

Newspapers in English

Newspapers from India