In the dynamic landscape of the insurance industry, one might wonder why insurers seem to be engaged in a guessing game. As risk factors evolve, customer expectations shift, and global uncertainties persist, insurers find themselves grappling with challenges that require them to make informed decisions. Too many insurers claim to deploy modern, cutting-edge technology solutions yet their systems are built to process actions without using the valuable insights that can improve the user experience.

One of the key factors contributing to the perceived guessing game is the complexity of risk assessment. Insurers operate in an environment where risks are multifaceted and continually changing. From natural disasters and economic fluctuations to emerging technologies and evolving customer behaviours, insurers must navigate a myriad of variables to accurately assess and underwrite risks.

The guesswork is left to the staff using the system, who often make their own subjective decisions as the system provides no insight, despite the volumes of data available to it.  

 

The question that needs to be asked at the start of a system design is whether those setting up the processes are equipped with the skills needed to ensure that the system “learns” from the current customer journey and is capable of learning from the process afterwards.  In most cases, they are not! As a result, the process is not as efficient and effective as it should be.

 

It is not always obvious to those setting up these systems that a clear differentiation needs to be made between the “actions” part of the machine and the “brains”. There is a difference between just “doing” and “processing, learning improving”.  

 

The challenge faced by decision-makers tasked with implementing machine learning in their processes is identifying developers who can do two things –build a process and enable it to evolve. Many smart developers are great at creating task and goal-orientated processes, but developers who create systems to analyse, observe and optimise have a completely different skill set – this requires a fusion of data science and technology.

 

For optimum productivity, data will be fed into a decision engine, models will be developed, and algorithms will run, whilst simultaneously feeding back fresh insight into the system, suggesting real-time changes to the use experience such as new product offerings, personalised incentives, useful marketing messages and improved claims handling.

 

If systems lack inbuilt data science capabilities, insurers will need to bring in external resources to analyse the data, often using (delayed) offline processes and with higher human costs and biases.

 

This can compromise the customer journey and reduce efficiency. Sales will be lost due to inappropriate focus, claims will be mismanaged due to routing delays and lapse rates increase due to inefficient retention strategies. The actual cost to the insurer ends up being much higher.

 

Decision makers who recognise the need to design systems to learn will shorten the insight loop by appreciating the value that real-time business intelligence can add. They benefit from thinking systems as opposed to processing systems. Furthermore, insurers are increasingly integrating data analytics and machine learning into their operations to enhance risk assessment. While these technologies hold great promise, their deployment is not without its challenges.

 

In the ever-evolving landscape of the insurance industry, the perception that insurers are playing a guessing game is rooted in the inherent complexities they face. To be competitive, insurers should be asking how smart their systems are, and whether their processes learn and improve over time. If the answer is “not really”, the guessing game will continue.

 

Filter by
Reset
Thank you! Your submission has been received!
Oops! Something went wrong while submitting the form.
Insurance
Create a claims triage system using Excel logic

Create a claims triage system using Excel logic

With claims, departments need to be able to filter out valid claims and pay them quickly amongst other tasks. See how Excel helps make a claims triage system.

Insurance

Boost sales with an insight sales model

Generating sales will often cost time and money, particularly in the insurance sector. Learn how smart tools can help manage costs using Optalitix Models here.

Use Case
Create a claims forecasting system

Create a claims forecasting system

Calculating claims is vital for insurers as it can take months or even years for the claim payments after an insurance event to emerge. Learn more now.

Insurance
Create a pricing application from a spreadsheet pricing model

Create a pricing application from a spreadsheet pricing model

When setting a price for a new product, the starting point is almost always Excel. Find out how to create a pricing application from a spreadsheet pricing model here.

Use Case

Optalitix Models Use Cases

Insurance often involves using pricing models in spreadsheets. Use Optalitix Models to simplify processes by transforming these spreadsheets into a system.

Insurance
Is the future of Lloyd’s algorithmic? - Part 2

Is the future of Lloyd’s algorithmic? - Part 2

Smart Follow underwriting and the algorithmic technology will bring a revolution of improved pricing and lower costs to insuring large and complex risks.

Insurance
Is the future of Lloyd’s algorithmic? - Part 1

Is the future of Lloyd’s algorithmic? - Part 1

Take a look at a report that considers the impact of algorithmic underwriting on Lloyd’s and the London Market where complex risks are often underwritten..

News
Optalitix and Almagro Capital announce a new partnership that provides Almagro Capital with a rapid online quoting tool for its forthcoming expansion

Optalitix and Almagro Capital announce a new partnership that provides Almagro Capital with a rapid online quoting tool for its forthcoming expansion

Optalitix and Almagro Capital have agreed to partner to create improved pricing tools for Almagro and its brokers. Read more about their partnership in here.

Insurance
The emergence of digital exchanges in the London Insurance Market

The emergence of digital exchanges in the London Insurance Market

The Optalitix team were invited to contribute to a discussion where the digitisation on the underwriting process for the London Market. Read our insights here.

News
Iotatech and Optalitix announce the successful integration of their products providing significant added value to Iotatech’s clients

Iotatech and Optalitix announce the successful integration of their products providing significant added value to Iotatech’s clients

Iotatech and Optalitix are pleased to announce the successful integration of their platforms aimed at creating added value for clients of the Iotatech Platform.

Insurance

Case Study: Catastrophe Reporting - Lloyd's of London

Learn how the London market could benefit from greater levels of digitisation and automation by converting data into cloud-based systems using low code software

News
Verto syndicate 2689 and Optalitix announce partnership - Press Release

Verto syndicate 2689 and Optalitix announce partnership - Press Release

Verto syndicate 2689 (Verto), a follow-only Lloyd’s syndicate, and Optalitix, an award-winning Insurtech company providing SaaS software to leading UK insurers.

Insurance
FCA disrupts the insurance market

FCA disrupts the insurance market

The FCA has changed the game for more established players in the insurance sector with its significant gear change in pricing for insurance business. Read more.

Underwriting
Insurance
Optalitix Quote, the innovative new product for underwriters

Optalitix Quote, the innovative new product for underwriters

Optalitix Quote is a new cloud product that enables underwriters using spreadsheets to improve their pricing processes. Learn more about it in this handy guide.

Insurance
Insurance innovation – what will 2022 bring?

Insurance innovation – what will 2022 bring?

What might we expect for insurance in 2022? From digital insurance marketplaces to wellness products and profitability, read our predictions and more.