Topic analysis is undertaken using Natural Language Processing (NLP) techniques and Latent Dirichlet allocation (LDA) models to analyze the phrases spoken by customers across many calls and then group similar or related phrases into separate topics.
Put simply, to uncover the “Voice of the Customer” we:
Take the customer side of a conversation that has been generated using our SpeechAI service
Identify key phrases within these conversations
Automatically group these phrases into clusters or topics
By way of example, calls into a call center may cover multiple topics such as:
Technical support
Sales
Complaints
Cancellation
You would expect Technical Support calls to contain more technical support phrases than would a sales call. So, a Technical Support call is likely to contains phrases such as:
cannot log in
router not working
no internet
computer doesn’t turn on
You would not expect to see these phrases in a sales call or, if you did, they would occur less frequently than phrases relating to sales, such as “like to purchase”, “interested in”, “credit card”, etc. Hence, by mapping the frequency at which phrases occur in a call and comparing this across all calls, we can group together similar calls into clusters or topics.
Even where a call may cover multiple topics (eg Complaints and Technical Support), we examine how frequent Complaint phrases occur (such as “I like to speak to the manager”, “I wish to complain”, “I’m not happy”, and “this is ridiculous”) and compare this to Technical Support phrases to determine if the call was mainly a Complaint or Technical Support call. In some instances, calls may be included in multiple topics.
This is Big Data at work. We analyze thousands of your calls to discover hidden topics of which you may have been previously unaware.
Across your voice data, we:
Identify 10 key topics
The top ten phrases within those topics
Weight each phrase so that you understand how important or relevant that phrase was in determining the topic
List the calls that are included in the topic
A separate report lists the phrases that have been used to generate the topics so that you can examine which phrases have been most prevalent in generating the 10 topics.