ITC DIA Europe

The barriers to adopt machine learning are in our heads

Written by Roger Peverelli and Reggy de Feniks - Founders The DIA Community on Mar 23, 2016

By Amir Tabakovic The seven take-aways of this post:

  • Thanks to modern machine learning technology, insurance industry has never before been closer to being able to manage risk holistically.
  • Today’s barriers for adoption of state-of-the-art machine learning are no longer in technology but in our heads.
  • The lack of productivity in data analytics cannot be solved by hiring more people.
  • New cloud-born machine learning platforms are moving predictive analytics to the next level. Machine learning is moving from the self-standing product to an integral service – Machine Learning as a Service.
  • The entire machine learning workflow is getting automated little by little.
  • Companies’ domain experts and IT developers are starting to use new consumable and interpretable machine learning platforms in their daily work.
  • Insurance companies will soon transform into efficient predictive model factories.

The insurance industry as we know it today wouldn’t exist without smart people able to find patterns in past events in order to predict the future. Today, in our digitized society it is again time for the insurance industry to stick to its tradition and embrace modern ways of advanced analytics. A key part of this charge is ‘Machine Learning’, which isn’t entirely new to the insurance industry due to experience with some predictive analytics techniques. Increasing computational power is bringing problems humans are helpless to solve within reach as they can explore relationships between thousands of variables and find the right relationships between them. Machine learning is great at identifying patterns in sparse data and zeroing on variables that strongly influence the outcome of events of interest to the insurers like: Will the policy be profitable? How likely is it that the claim is fraudulent? Or how severe a claim will it turn out to be given circumstances? This ‘super-power’ is of enormous value. Each newly discovered pattern can have direct impact on mitigating exposure in future claims thus resulting in huge cost savings for the industry. As it is often the case with technological advances the never ending march of bigger data, bigger computing capacity and better tools have finally broken the barriers of feasibility in managing risk holistically.

Democratised productivity
Today’s barriers for adoption of state-of-the-art machine learning technology are no longer in technology but in our heads. ”We’ve always done it this way,” arises quickly even in machine learning projects. Most of the industries have recently hired people from academia and with them also inherited the technology in use in academia without questioning whether the same tools can also solve the problems with different requirements than the ones in scientific research. The belief that lack of productivity in data analytics can be solved by hiring more smart people instead of upgrading to a standards based end-to-end framework stands opposite to all other developments in the digital world. Yet these barriers remain omnipresent in corporate settings when it comes down to taking analytics from merely interesting insights into real business processes that touch the end-customer. But the shift is inevitable. New cloud-born machine learning platforms (like BigML) are moving predictive analytics from the far corners of support functions to the daylight of everyday business decisions, making it consumable, interpretable and opening it to companies’ domain experts and IT developers. Machine learning is moving from the self-standing product to an integral service; Machine Learning as a Service. This shift allows many more use cases to be solved programmatically thanks to easy cloning of good ideas across the organization and beyond toward the whole supply chain. This movement is bound to result large productivity gains due to smarter applications with real-time insights at the point of action — all this without having to hire 10s of PhDs and asking them to play nice in their sandboxes.

Focus on creativity
The entire machine learning workflow is getting automated little by little. Level of human interaction in repetitive tasks like extracting the right variables and choosing the right predictive model to solve relevant problems for insurers is gradually but surely marching down to zero. Thanks to these productivity gains in house analytics experts can afford to focus their attention to more creative aspects of their jobs that translate into true innovation.

Old conventions
To facilitate this key transition, the focus of the next generation machine learning platforms extends beyond the objective of pure statistical programming to questions like: How can we easily deploy the predictive models into existing infrastructure and serve the prediction at the right moment to the right recipient? How can we build end-to-end predictive applications with dynamic models in half of the time that it took us before? How can we analyse new real-time data sources produced by dozens of sensors in vehicles collecting driving data? Although a number of available platforms already can offer a big part of this vision today, the industry is still caught in old automatisms and false beliefs. “Predictive analytics is extremely difficult.” “In order to increase the productivity of our data science departments we need to double the number of data scientists.” “It will take us years until we change the hard-wired business rules with smart and adaptive business rules based on predictive models.” “Our hopes lay in improving our model’s accuracy with deep learning.” It runs the gamut from not questioning status-quo to pseudo-scientific talks about techniques that are promising but not yet fully vetted in most business domains.

Return to the forefront
It is high time that insurance industry rediscovers its old tradition of being at the forefront of innovation with advanced analytics. This time it is not only about the latest developments in mathematics and statistics but also about technology and business processes built on the top of it so it runs through the entire organization. Question the status quo, make a concerted effort to adopt next generation machine learning platforms, revisit existing processes and get ready for industrialized machine learning before it takes you by surprise. The time of machine learning workshops and “Big Data” strategy slideware is coming to the end. It’s your job to break down the walls and empower the people participating in those workshops and project with the right scope of responsibilities, real-life use cases and the cutting edge tools. Insurance companies will soon transform into efficient predictive model factories that continually manage magnitudes higher number of models optimized for every product, every risk, and every customer. Are you ready for the upcoming change?

Amsterdam 12-13 June


00 Days
00 Hours
00 Minutes
00 Seconds
Have a look!
ITC DIA Europe - Amsterdam 2024 - Register here! Purchase now!