How is Data Analytics used in Insurance Industry ?
The rise of Fintech, changing consumer behavior, and advanced technologies are all disrupting the financial services industry, including its most visible member, insurance. The insurance industry is poised for a digital transformation of how it conducts business, with analytics capabilities at the forefront.
The use of data analytics in
the insurance industry is growing all the time.
According to the latest report, insurance businesses are
expected to invest up to US $56.97 billion by the end of 2022. Research shows
that deployment of data leads to 30 percent improved access to insurance
services, 40-70 percent cost reductions, and 60 percent higher fraud detection
rates, all of which benefit customers as well as stakeholders. We can safely
say that analytics has transformed the insurance industry for the better. Its
ramifications have allowed insurers to better target customers and address
their insurance needs.
What are the challenges of the Insurance Industry?
The data on insurers has enabled customers to find the best
product commensurate with their requirements. The easy access to information
has raised the bar for insurance companies.
As a result, companies require to better prepare to address
the requirement of their customers along with mitigating the insurance risk as
a result of increased competitiveness in the domain.
Apart from the competition, the information asymmetry, and
alteration of documentary evidence are posing fresh challenges to insurers.
Leveraging the combination of machine learning and technology solutions can
detect such frauds considerably and has proved to be a valuable tool to
mitigate such risks. Apart from customized products and fraud detection,
data-driven insights can help drive profits and better understand customers.
Data analytics can also help in generating the risk profile
of the existing customers. It can help companies to better determine who to
upsell and cross-sell the allied products leading to raising the customer
lifetime value of the existing policyholders.
Role Of Analytics In The Insurance Industry
To target clients, the insurance sector has long relied on
data analytics. Statistics are used by a variety of insurance firms to segment
their consumers, including travel insurance companies, health and life insurance
companies, property and casualty insurance companies, and so on. Accident
statistics, policyholder personal information, and third-party sources all
assist in categorizing people into distinct risk groups, preventing fraud
losses, and reducing costs.
The move to digital platforms has opened up new sources of
data that may be utilized to decipher a customer’s complicated behavioral
patterns and precisely identify his or her risk segment. The data can thus be
used to affect insurance underwriting, rating, pricing, forms, marketing, and
claims management in the insurance industry.
1. Customer acquisition
Everyone generates a large amount of data through all their
internet activity. This unstructured data can be acquired to analyze the
customer behavior not just online but offline as well.
Insurance businesses can design tailored marketing
strategies to acquire new consumers by analyzing unstructured data. It helps
Insurance companies to devise their marketing strategies.
2. Retention of Customers
No one wants to lose customers. If a company’s client
retention rate is high, it is deemed successful. The insurance business is no
exception. As a result, insurance companies use data analytics to take extra
care of clients who might otherwise quit.
Based on user activity, AI can identify early symptoms of
customer unhappiness. Insurance companies can rapidly respond to the
information provided to enhance their services and find a solution to the
customer’s problems. Insurers might offer discounts to clients or even change
their pricing strategy.
3. Fraud Detection and Prevention
Insurance companies in the United States lose more than $80
billion each year due to fraud. Such deception results in higher premiums for
all stakeholders.
Data analytics can be used to protect insurance companies
from such fraud. By using predictive analytics, insurers can compare a person’s
data to previous fraudulent profiles and identify cases that require further
investigation.
4. Risk Evaluation
The entire concept of insurance companies revolves around
risk diversification. While assessing risks, insurers have always prioritized
the verification of customer information. Based on their data, customers are
classified into various risk classes.
Big data technology has the potential to improve the overall
efficiency of the risk assessment process. Before making a final decision, an
insurance company can use big data and predictive modeling to anticipate
potential issues based on client data and classify them accordingly.
5. Cost Saving Using Insurance Analytics
One of the many advantages of leveraging technology is cost
reduction. Machines’ increased role in the industry increases efficiency, which
eventually leads to cost savings.
Big data technology can be used to automate manual
processes, increasing their efficiency and lowering the costs associated with
handling claims and administration. This will enable the companies to offer
lower premiums to their customers and thus stand out in a competitive market.
6. Customized Policy Offerings
We all want to be treated with respect. Companies have
recognized the importance of providing a personalized experience. Unstructured
data analysis can assist businesses in providing services that are tailored to
and meet the needs of their customers.
For example, life insurance based on big data can become
more personalized by taking into account a customer’s medical history as well
as the habits detected by activity trackers. The data can also be used to
determine a pricing model within the client’s budget and profitable for the
company.
7. Insurance Underwriting Automation
Data and Advanced Analytics can help the insurance industry
save time and resources involved in insurance underwriting and automate the
process. Thanks to big data technology, insurers can work quickly on a
customer’s profile. They can review their history, select an appropriate risk
class, develop a pricing model, automate claims processing, and provide the
best services.
8. Generating More Leads
Insurance data analytics of such unstructured data gives you
a deep dive into customer behavior and market opportunities for upselling and
cross-selling.
CRM and agency management systems, for example, use data
analytics to extract valuable insights from reports that reveal the customer
journey from search to conversion. It assists them in understanding customer
behavior and allows the marketing department to target the appropriate messages
for warm-up leads.
The insurance industry’s data is growing at a rapid pace,
with a 90 percent growth in the last two years. Data analysis is used by
insurance companies to better determine the price of policies, settle claims,
study consumer behavior to facilitate benefit distributions, detect fraud, and
map dangers, among other things.
Data analytics can handle the volume, velocity, and variety
of data in ways that earlier systems can’t. Lowering processing costs, boosting
pricing, competing with major enterprises, focusing on local preferences, and
enhancing efficiency, sales, and customer loyalty are all advantages of data
analytics. Thus analytics has an impact on every area of the insurance and
fintech industries.
Virtue Analytics’
insurance data analytics solutions assist our insurance customers in capturing
and integrating all available internal and external data to create a single
source of truth, resulting in powerful competitive advantages.
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