Banks are starting to explore AI and machine learning solutions development by deploying natural language processing
(NLP) to make use of enterprise and customer data in text mining applications
ranging from gauging customer sentiments to enterprise search.
Historically, banks have collected large volumes of data
about customers and their own internal operations. A significant portion of
these documents is textual information recorded mostly for compliance reasons.
This data might be siloed for different business functions
inside a bank, and effective information search and discovery is challenging in
its traditional form. AI systems could help navigate through the vast data
stores to gain valuable business insights.
The banking industry was one of the early adopters of text
mining technology with traditional systems like the Automatic Processing of
Money Transfer Messages (ATRANS).
This was possible because the information that these early
systems had to “read” and “understand” was relatively simple and highly
structured. With NLP, the scope of what information can be made searchable has
grown to include both semi-structured and unstructured free form text.
In our AI in Banking Vendor Scorecard and Capability Map
2019 report, we categorized 77 banking AI vendor products across AI
capabilities, including data collection and analysis of text data.
Data Collection and Analysis (Text Data) accounted for
13.48% of all the AI vendor product offering functions we categorized in our
report and 11.49% of the total funding raised by AI vendors in banking.
Text and customer data analysis was the most common among
all the AI product offering functions we categorized, accounting for nearly 27%
of all vendor product offering capabilities.
In this article, we delve deeper into text mining use-cases
in banking by covering the following topics:
- Leveraging Enterprise Text Data
- Leveraging Customer Text Data
- Adoption Best Practices For AI in Text Analysis
We begin our brief overview with how text mining
applications can allow a bank better access to its enterprise data.
Text Mining in Banking – Enterprise Data
As an example, banks could use NLP-based software to search
for specific information from internal legal documents. With an AI solution,
users across the bank could search for only finance-related or fraud-related
excerpts from these documents.
Integrating such contextual search systems could reduce the
cost and time associated with information search inside the enterprise.
Banks could deploy an NLP solution wherein they first need
to upload existing enterprise documents to the AI system. The algorithms are
then tweaked to recognize attributes in these documents that are marked as
being relevant for extraction, summarization, or abstraction.
The subject matter experts, in this case, legal and
compliance teams at banks, would need to train the algorithms to recognize
these patterns by manually tagging each document first.
Once the system is tested and deployed, employees at the
bank could contextually search for information on a dashboard. The NLP
algorithms can identify if the search queries are relevant based on the
previously tagged datasets (usually called meta-data).
The search application might then potentially output a more
informed search result for users at the bank.
Text Mining in Banking – Customer Data
AI vendors offer NLP based software that can help analyze
incoming customer feedback from surveys, feedback forms, and social media to
identify customer sentiments.
For example, if a bank has several million responses from
customers to their open-ended text-based feedback form, NLP might help in
cutting down the time taken to review these messages and unearth new insights
about what customers really want.
Banks would need to upload existing customer messages to an
NLP software to first categorize this data. In the case of sentiment analysis,
the software’s algorithms are designed to parse out sentences, phrases, and
other significant parts of each customer’s message and automatically tag these
categories as positive, negative, or neutral sentiment.
With this information, the software can then be designed to
output insights for several different objectives.
For instance, the software can be designed to identify top
customer issues and complaints or what products customers are talking about and
how.
For example, using NLP software to read through customer
feedback on social media, banks might identify that customer posts from one
particular geographical region are unusually high. NLP software might help
identify that top customer issue is password and login issues. The bank can
then alert the IT team in that region to take action to resolve the issue.
Vendor Spotlight – Expert System
Expert System offers its AI-based Cogito software to banks
and other financial industries and markets it with numerous capabilities. One
such capability is enterprise search, which the company calls Cogito Discover.
The product also has a lesser focus on external search for
investment research. Cogito Discover can purportedly help compliance officers
search for relevant customer information or contracts that they can use to
prove compliance in various business areas.
Expert System specifies that Cogito Discover is capable of
running through text data in a variety of sources, including enterprise
documents, email communications, and web pages.
In addition, the company highlights Cogito’s ability to
purportedly classify text data and documents, as well as enrich that text data
and its meta-data. For example, a user could upload a new document into the
system, and Cogito Discover seems able to organize that document so that it’s
searchable with the Cogito Discover search function. It’s unclear how the
product does this, but it isn’t outside the range of capabilities for a machine
learning-based software.
Adoption Considerations for Text Mining Applications
Nishant Chandra, PhD, Sr. Director of Data Products at Visa
believes the best way to approach such an AI project is to first look at what
academic use-cases exist for NLP and which of those can be repurposed for
banking applications. He says:
What we want to do is take academic use cases and make it
significantly useful in the production of AI in industry. For example, in
natural language processing document summarization, the user can find the
keywords and summarize it. The hierarchical approach to this is to take that
document and create context. This can be applied to banking documents to allow
search and retrieval of contextual information from within documents.
Bankers need to understand that NLP systems require a lot of
maintenance and servicing before they can be accurate.
In enterprise applications, such software might need to
understand banking jargon. In customer-facing applications, the software might
need to be tweaked to identify sentiments on ambiguous customer messages.
Training software to overcome these hurdles requires data
feedback loops and ongoing iteration of algorithms with input from both data
scientists and subject-matter experts.
Banks might find that even when a solution is deployed,
alterations to the software might be inevitable. For instance, customer
preferences might change or a new abbreviation or symbol might be used by
customers on social media that needs to be given context for the software to
“understand” it.
Banks might also acquire a new communication channel, such
as a chatbot, or restructure their organizations and their internal data flows.
All of these would require further upgrades and tweaks to the NLP algorithms.
NLP solutions are fairly well-established in banking. NLP
products accounted for the largest share in our report in terms of vendor
product offering functions. AI-based information search and discovery, text
mining, and natural language generation (NLG) are applications of this
technology which are now possible due to AI and machine
learning techniques.
Article source: https://emerj.com/ai-sector-overviews/text-mining-in-banking/
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