5 ways organizations can benefit from machine learning
Compliance and legal teams are struggling to keep pace with
an ever-evolving regulatory and legal landscape.
Responsibilities range from constantly tracking employment
and office safety standards to understanding complex rules governing ethical
employee conduct to dealing with the monumental regulatory, legal, privacy and
cost challenges created by new technologies such as the cloud, social media and
the Internet of Things (IoT). Knowing the rules of the road can be every bit as
difficult as ensuring employees follow them, which in turn can create critical
gaps in both rule tracking and employee monitoring that lead to waste, fraud,
abuse and other practices that put a company at risk.
The difficulty of this struggle is exemplified by the state
of compliance with the European Union’s General Data Protection Regulation
(GDPR). Despite more than two years of high-profile educational efforts from
the EU, legal publications and solution vendors, a recent survey from Deloitte
found that only 35 percent of respondents felt they could demonstrate a
“defensible position” on GDPR compliance. Even more surprising, a DemandBase
survey found that only 32 percent of respondents were fully GDPR compliant and
20 percent were completely unaware of the regulation.
As the implementation challenges around the new California
Consumer Privacy Act suggest, complying with privacy regulations will only get
more complicated. The particularly bad news for compliance and legal teams is
that privacy is just one of many regulatory initiatives they face.
However, there is good news as well. Machine learning (ML),
a technology to support improved business insight and customer experience
initiatives, offers huge potential to help compliance and legal teams
accomplish many of their most important rule tracking, employee monitoring and
documentation activities faster and more accurately at lower cost.
For example, many legal teams are already using ML to power
technology assisted review (TAR) for e-discovery document reviews. With TAR, a
machine learning-powered database sits under the document review platform and
is trained to do the review by analyzing and “learning from” how a team of
human reviewers tags a small percentage of the documents. A certain amount of
iteration is required, but once the system is properly trained, it can be
significantly faster, more accurate and overall less expensive than human
review.
ML can also serve as the foundation for applications that
support all aspects of governance and compliance, slashing the time required
for key operational processes and leaving time for more strategic tasks. For
example, ML-powered applications could:
Track changing global regulatory obligations, expectations
and control requirements across the business, supporting the most complex
compliance efforts with unprecedented speed and accuracy.
Monitor specific compliance requirements related to
surveillance, the Foreign Corrupt Practices Act (FCPA), anti-money laundering
(AML) and know your customer (KYC). Global companies can quickly identify
potentially corrupt employees or partners and reduce the potential for fines by
mitigating the issue or self-reporting.
Identify contracts affected by large rule changes. For
example, many organizations have used ML applications to identify which vendor
agreements are impacted by GDPR.
Automate data classification to determine whether data
should be retained or disposed, thereby reducing costs and risks associated
with legal and business retention and also enabling organizations to implement
defensible disposal to reduce infrastructure costs.
Facilitate faster and more accurate legal research. For
example, by using ML in a class action product liability suit, a company was
able to determine its potential exposure and settle the case early in the
process. The savings in litigation costs and minimal reputational damage
resulted in no perceptible impact on the company’s stock price.
Getting smart about ML
Machine learning is complex technology, and the potential
impact on an organization may not always be easy to understand. To ensure your
organization will derive the maximum benefit from the various ML initiatives
and better understand how it can support your governance processes, consider
the following recommendations.
Act now. Getting up to speed with ML and understanding how
to approach it will take time. Delaying getting started may lead to missed opportunities
across your organization.
Develop your own ML expertise. Start by looking for existing
expertise in your company. Which teams are already using ML (most likely
marketing and sales)? Consider a new hire or a consultant to bring in the
expertise you don’t have internally. Published articles and vendor-produced
case studies are also helpful. Map out the critical issues you need to
understand for new ML initiatives and how ML can improve your governance
practices.
Closely track the progress of ML use cases across your
organization. It’s critical to assess whether these projects are compliant with
evolving data regulations. You also need a clear understanding of your
company’s goals. As you go through this process, you may also be able to see
what other departments or processes may benefit from ML and your input.
Make the business case for how ML can support governance
processes. Pull all your information together to propose using ML to support
specific governance processes. Start with small projects that will show a clear
ROI, then expand from there. For example, you may want to start with TAR, which
has a proven track record.
Ultimately, the value of ML depends on the quality,
connection and volume of the data within your enterprise, so the full impact
can’t be gauged until you begin experimenting with your data, revealing
noteworthy patterns and running proofs of concept.[Source]-https://www.ibmbigdatahub.com/blog/5-ways-organizations-can-benefit-machine-learning
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