Insurers are moving from static data sources to real-time,
dynamic information, but privacy concerns have emerged as an imposing obstacle.
JEFF ROBERTS MAY 2019
Key Points
·
Real-Time
World: Insurers are
moving from outdated, static data sources to dynamic, real-time information
about the risks they are covering.
·
Long
Overdue: Personal lines
insurers underwrite essentially the same way they did 25 years ago.
·
Banning
Factors?: Since January,
at least a dozen states have introduced or are considering legislation
restricting the use of certain rating factors.
A black box lies hidden from view in nearly
every car on the road, and most Americans are unaware of it.
The smartphone in their pocket holds the
necessary components to track their location and movements, spending habits and
driving behavior—and often does.
Meanwhile, scores of data brokers already
glean and analyze reams of their personal information from social media,
retailers, search engine providers and even automakers that collect it from a
variety of vehicle devices.
And the insurance industry is increasingly
interested in using those data streams and similar information in its
underwriting.
Insurers are searching for new and
unconventional forms of data, specifically dynamic, real-time information to
replace outdated, static sources. Carriers are shifting to those
next-generation data sets to assess and price risk in auto, homeowners, health,
life and small commercial.
Most of that information is readily available
to insurers, whether consumers know it or not. But sensitive privacy and
regulatory concerns accompany much of it—especially the use of consumers'
digital footprints.
“Think of it as kind of a Wild West of data
generation,” said Greg Donaldson, Aite Group senior P/C insurance analyst.
“Nothing is completely locked down right now.
“Many of the new cars already have these
data-generation devices built in. [Insurers] just need to move quickly to figure
out how to get that and how to turn it into an actionable rate. They're
scrambling with new forms of data to keep up with each other.”
They are exploring it as regulators continue
to push the industry to evaluate risk based on behavior and conditions—especially
in auto—rather than by who the applicant is. Evolving oversight and societal
views on the use of gender, education level and even credit scores as rating
factors are pressuring carriers to find additional insight into risk.
No matter the space, insurers are
experimenting with emerging streams of big data to improve underwriting
accuracy, reduce fraud, gain a competitive advantage in crowded markets and
replace that growing list of lost rating factors.
The sources of new data include third-party brokers,
public filings, social media and internet of things devices. And a host of
insurtechs are using algorithms and analytic tools to translate information
into scores, metrics and predictive models.
“You're moving from demographic-based data to
actual-use data,” Donaldson said. “You're switching from static data points
collected at the time of the application to dynamic data that changes all the
time.
“That opens the door to much more accurate
rating. It also provides an opportunity for insurance companies to move away
from some of the more controversial data sources that they've used in the
past.”
Many in the industry think the use of dynamic
big data in underwriting is long overdue, even if it is heightening concerns
among privacy advocates.
Technological innovation has reshaped society
over the past two decades, but it hasn't been integrated into insurance models
at nearly the same speed. Personal lines insurers underwrite essentially the
same way they did 25 years ago, with the notable exception of credit scores.
“Assessing risk at a single point in time is
an antiquated concept. But today that's how the entire insurance world works,”
said Max Drucker, CEO of insurtech Carpe Data, which provides data and
predictive scoring products for insurers. “They'll pull credit. They'll pull
[motor vehicle records]. Then they'll issue the policy. And maybe—maybe—they'll
do it again at renewal.
“Being able to continuously evaluate and
monitor risk is the future of the industry.”
Real-time data offers the opportunity to
precisely assess risk and even reduce it—think offering tips and rewards for
safer driving. It also presents the chance to engage with consumers in a way
that carriers have traditionally failed to do.
The practice is finally taking hold with
usage-based insurance in auto, smart devices in homeowners, wearables in health
and life and insurtechs offering “living” streams of data across the industry.
In fact, some analysts say the tipping point
is fast approaching when active, real-time data will fully replace conventional
information to inform underwriting and pricing.
“It would not surprise me at all if over the
next five years they start moving from some of these older, static, data points
and shift to a dynamic model,” Donaldson said. “It's always better to rate
someone based on what's actually going on versus who they were at the time of
the application.
“Some companies might do it even faster.
There's enough playing with it now that all it's going to take is one
successful run.”
But few use it now in their underwriting,
possibly because insurers have to delicately navigate an evolving patchwork of
regulatory oversight and shifting public opinion.
“In the U.S., it is sort of the Wild West
right now,” said Mike Vogt, executive director of data, analytics and machine
learning for technology consulting firm SPR. “It will be up to voters and
legislators to determine what level of privacy they're willing to trade for
convenience and efficiency.”
Think of it as kind of a Wild West of data
generation. Nothing is completely locked down right now.
Greg Donaldson Aite Group
Changing Times, Rating
Factors
But the drivers behind the rise of
unconventional data are clear.
Regulation and competition.
In some cases, emerging data points are
supplementing traditional information that offers limited insight.
The commoditization of auto insurance, for
instance, has forced companies “to figure out how to keep costs under control
and charge a better rate,” Donaldson said. “Therefore credit modeling comes up,
and now you're starting to see all this new data.”
In other cases, emerging data is a substitute
for factors such as gender or education level that some regulators have banned.
“With unconventional data sources, you're just
using different methods to suss out more clearly the profile of that risk that
traditional applications might not be able to determine or they can't use,”
said Lucian McMahon, a senior research specialist with the Insurance Information
Institute. “There's always other ways to price risk when if you can't use a
certain factor.”
But the list of banned factors is growing
rapidly.
This year, California became the latest state
to ban the use of gender as an auto rating factor, joining Hawaii,
Massachusetts, Montana, Pennsylvania, North Carolina and parts of Michigan.
Other states have outlawed marital status and
level of education.
The industry has warned that losing many of
the tools it uses to assess and price risk will lead to reduced accuracy in
underwriting and higher premiums.
But since January, at least a dozen states
have introduced or are considering further legislation restricting the use of
rating factors, the American Property Casualty Insurance Association said.
Connecticut, New Mexico, Texas and Virginia
have considered banning gender in auto. Maryland and New Jersey are considering
eliminating education and occupation as factors. Maryland is also considering
banning marital status. And California announced plans to host a public meeting
to consider the use of occupation and education in setting auto rates.
Meanwhile, the use of consumer credit
information has moved to the front lines in the battle between insurers and
consumer advocates.
The industry has found credit information—an
insurance score that includes credit elements—to be a reliable predictor of
personal responsibility and the likelihood a claim will be filed, analysts
said. Now ubiquitous, it became a prevalent factor in auto about 20 years ago
and remains a trusted consideration in homeowners, life and other segments.
However, California, Massachusetts and Hawaii
prohibit the use of credit in auto insurance. And Connecticut, Indiana,
Maryland, New Jersey, Oregon, Rhode Island and West Virginia have introduced
bills that would ban it.
Maryland and Hawaii do not allow it as a
consideration in homeowners.
In a strongly-worded statement in March, NAMIC
defended the use of credit information, saying eliminating it would make
“underwriting less accurate and could lead to an increase in premiums,” said
Jimi Grande, senior vice president of government affairs.
“Credit is something that is being wrestled
with a lot in the regulatory and political arena,” said John Lucker, a
principal with Deloitte Risk &Financial Advisory and global advanced
analytics market leader. “Credit is widely used. It's been proven in numerous
studies, including studies that have been done by regulatory bodies and
independent researchers, that it's an excellent predictor of many things from
an insurance perspective.”
Credit is something that is being wrestled
with a lot in the regulatory and political arena. Credit is widely used ...
it’s an excellent predictor of many things from an insurance perspective.
John Lucker Deloitte
'Reasonable Concern'
However, the potential replacements pose their
own concerns.
Studies have found third-party data can be
inaccurate, outdated and difficult to correct, Lucker said. Sometimes it can
even be misleading.
And that is a significant issue when culling
data from consumers' digital footprints.
The trail of information people leave after
surfing the internet includes the websites they view, the emails they send,
their social media posts and any information they submit online for services.
“There's reasonable concern from the insureds'
perspective around privacy with these alternative data streams and social
media,” McMahon said. “I would be shocked if [internet history] data would be
permissible to use just given the privacy angle.”
However, consumers' digital footprints,
lifestyle choices and even the magazines they read provide insight into risk.
Many carriers already use social media in
their claims operations to combat fraud. They monitor the accounts of drivers
after auto accidents or those filing disability or workers' compensation claims.
Some have even experimented with social media
as a supplement to rating factors. But just the mere mention of it creates a
storm of media headlines.
Given those concerns, insurers continue
pursuing more customer-friendly techniques to obtain data—often dangling
rewards and discounts in exchange.
In health, wearables such as Apple Watches and
Fitbits monitor everything from activity and diet to sleep patterns, data that
can help augment underwriting and encourage healthy lifestyles. Life insurers
such as John Hancock are collecting that data and rewarding healthy living with
retail gift cards and premium discounts.
Telematics support usage-based insurance in
auto. The devices, plugged into cars or downloaded as mobile apps, track
location, speed, driving conditions, miles driven and braking and accelerating
habits.
UBI is an upgrade over traditional factors,
which include age, gender, ZIP code, credit information, daily commuting
distance and car make and model.
“It's a static set of data. So insurance
companies would love to figure out a better predictor of how this person is
going to perform over time,” Aite's Donaldson said. “Your history may not be a
good indicator of your future risk. That scares insurance companies.” Carriers
such as Progressive and Nationwide and insurtechs like Metromile and Root
capture the behavior of the driver and price accordingly.
But some consumers have expressed concern that
UBI allows carriers to track their movements. Some companies monitor location
and stops through an app during the trial period to determine premiums, even
when drivers are not operating a car. A few even continue to record data after
the rating period.
Forty-five percent of Americans view trading
their driving and location information to an auto insurer for a discount as
unacceptable, according to a 2016 Pew Research Center study. Thirty-seven
percent found it acceptable, while 16% said it would depend on the
circumstances.
Meanwhile, discounts for using UBI amount to
only 3% on average.
That combination could explain why only “5% or
7%” of noncommercial U.S. drivers have adopted usage-based insurance, said Tom
Scales, head of life and health insurance at Celent.
But it still may become the standard model for
auto insurance, with some carriers raising conventional policy premiums to
offset UBI rewards and discounts.
The information to do it largely exists even
without telematics devices. Nearly every car contains a black box—more formally
known as an event data recorder—installed by the auto manufacturer that
captures speed, braking and steering angles among other information.
They became commonly included more than a
decade ago and record data for small snippets of time in the event of an
accident. Seventeen states have passed laws limiting the use of information
EDRs capture.
But other vehicle devices such as built-in
navigation systems, diagnostic platforms and radar sensors can record data.
Some newer cars can even capture a driver's eye movements, the weight of the
front seat passengers and whether the driver's hands are on the wheel.
Smartphones, both those connected and not
connected to the car, can track other information.
“The industry has the ability now to monitor
your driving in real time. And they can give you feedback in real time to
improve your driving profile,” Donaldson said. “That kind of data would be
invaluable in the rating process.”
In homeowners, internet of things devices such
as smart detectors monitoring smoke and carbon monoxide levels, smart sensors
detecting plumbing leaks, smart appliances, thermostat detectors and smart home
security sensors provide emerging data.
“IoT is going to play a big role,” Donaldson
said. “All of those things make the home a little bit safer from risk.”
Caution Ahead
But insurers have good reason to be cautious.
They have to maneuver through a web of
oversight, including the federal Fair Credit Reporting Act, the EU General Data
Protection Regulation (GDPR) and the network of state regulators.
The GDPR requires companies to develop
processes to catalog any identifiable data collected about individuals. And
California recently passed the Consumer Privacy Act, which will require
businesses to disclose the personal information collected, its sources and who
it has shared it with, upon request, starting in 2020. Consumers can also
request that data be deleted or not shared.
Then there is the shadowy world of data
brokers to consider.
Much of the emerging data they supply is not
compliant with the FCRA, according to Deloitte's Lucker. That could expose
insurers to the discrimination and regulatory issues.
“Who knows how accurate or inaccurate this
data is,” Lucker said. “The data ecosystem is not necessarily sourced by the
company they talk to. Data Broker X might specialize in generating some segment
of data, and the other data they present to the marketplace comes from licenses
they have with other brokers.
“Sometimes even the data broker can't control
the origin of the data they sell. So if there's an error in it, it's very
difficult to fix, if not impossible.”
The sources of that information might surprise
many consumers.
Nearly every company that asks customers to
sign up for services and prompts them to accept its terms and conditions is
sharing their data.
Internet search engines. Social media
networks. Even your local grocery store through its rewards program.
“Your cell phone company. Your credit card,”
Lucker said. “Every single website you go to has some type of terms of service.
And no one ever reads it and decides they're not going to shop there or use
that search engine.”
But the accuracy and reliability of external
data can vary widely.
Social media data is “often unstructured and
full of gaps, false statements and hyperbole,” according to a 2015 Verisk
report.
The 2018 Experian Global Data
Management Benchmark Report found that 33% of U.S. organizations
believe their customer and prospect data is inaccurate.
Deloitte conducted its own limited sample
survey in 2017 to test the accuracy of commercial data-broker data among 107 of
its own employees. Two-thirds of respondents said their information was only
zero to 50% accurate as a whole. One-third said it was zero to 25% accurate.
And the context of that data—why a consumer
bought something or how they use it—is removed, potentially eliminating the
applicability of the information.
Can an algorithm determine that an Apple Watch
was purchased as a gift and not a commitment to fitness? Can it decipher that a
social media photo of someone smoking was taken eight years ago?
Lucker shared a personal example. He ran an
old-style baseball league and maintained its playing field. When it rained, he
bought dozens of bags of cat litter to absorb the standing water.
“So I started getting coupons at the grocery
store for cat supplies,” he said. “They must have thought I had 100 cats in the
house.”
The store incorrectly concluded he was a cat
owner and marketed products to him based on that assumption. Innocent as the
mistake may be, consider that everything consumers buy and every service they
use can be shared with data brokers and analyzed. How many conclusions and
predictions from that data would be just as misleading or flatly inaccurate?
But then again everything—even sensitive
personal information—has its price.
Insurers continue to devise value propositions
to encourage consumers to share their valuable data for discounts or
convenience, analysts say.
After all, Americans willingly share their
location, movement and routines every day in exchange for free mapping
technology.
“We call it Google Maps,” McMahon said. “We
give Google and other mapping apps extremely sensitive information because we
love the convenience of avoiding traffic.
“That sell needs to be made. But insurance is
probably one of those areas where it's a hard sell, because there tends to be
more of a skeptical attitude toward it.”
New Data Delivers Commercial Solutions
The clues might seem small and rather
unrelated.
Yelp customer reviews. Online employee
satisfaction ratings. Risk characteristics such as deep fryers or tanning
booths.
But to Max Drucker, CEO of insurtech data
broker Carpe Data, they are insightful—and publicly available—indicators of the
risk small businesses present that an insurer might not see at first glance.
“We're using new ways to solve existing
problems and questions,” he said.
The industry is hunting for new and
nontraditional forms of data to inform its underwriting and pricing. And
insurtechs are finding it in traditional places such as public filings, from
data brokers and from alternative sources such as Yelp and the businesses' own
websites.
Carpe Data, based in Santa Barbara,
California, is just one insurtech vendor leveraging emerging data and analytics
in the small commercial and claims spaces.
Other vendors are applying aerial photography
and mapping analysis—via drones or low flying aircraft and artificial
intelligence—to help insurers price the risk of homeowners cover.
They are determining the proximity of houses
to water sources, overhanging trees and historic wildfire paths. They also are
studying elevations and property and neighborhood drainage under various
conditions.
That information can augment traditional
rating factors such as the age of the home, the age of its roof, its location
and the neighborhood.
Only “a very small percentage” of insurers are
using such technology and data, said Greg Donaldson, Aite Group senior P/C
insurance analyst. But that will soon change. He's aware of two image analysis
vendors who have large insurers as clients.
“It's technology that really just started to
come into its own in the last 12 to 18 months,” Donaldson said. “With the data
they're generating, it's going to create the opportunity for more accurate
ratings, and it will be easy to get regulators on board with it.”
With businesses constantly evolving, carriers
need new data streams to accurately assess and rate their risk, Drucker
contends.
“The biggest challenge is changing the mindset
and processes and helping insurers understand how they can use this new information
today and outside just the policy renewal cycle,” he said.
“The objective is to use new ways like AI,
computer vision and alternative data sets to solve problems and also identify
the rating factors of the future. What are the things that they are not looking
at today that have predictive value?”
Carpe Data collects data on its own from
publicly available sources and from direct data providers.
The publicly available streams include Yelp
customer reviews and company profiles; businesses' websites, Twitter accounts
and Facebook pages; and online employee satisfaction ratings.
Carpe Data then uses data analytics tools to
assist carriers in making eligibility decisions, ratings and eliminating manual
underwriting to facilitate automation, Drucker said.
It also teamed with Allstate in 2017 to apply
predictive online data to reduce fraud in the insurer's claims processing.
And the firm works with disability and
workers' compensation carriers to identify claimants who may not be as disabled
or injured as they say. Sometimes it's a workers' comp case where the
employee's 5K race time was published or his batting average from his
recreation softball league was posted.
“A carrier can't be sitting there Googling
people, looking stuff up,” Drucker said. “It doesn't make sense at that scale.
But we're able to monitor that claimant activity over the life of that claim.”
Carpe Data also offers products that compile
hundreds of small-business risk characteristics across a spectrum of industries
to supplement current underwriting factors.
Does the restaurant have a deep fryer? Does
the nail salon offer waxing? Tanning? Does the landscaper trim trees?
“Places that are well-run are more likely to
have high visibility, to have a good reputation, to have good customer reviews,”
Drucker said. “It can be a good indicator to how well that business is run, and
in turn, how likely they are to have a loss.”
Jeff Roberts is a senior associate editor. He can be
reached at jeff.roberts@ambest.com.
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