CallMiner Product Innovation Series: Q4 2024
CallMiner's, Bruce McMahon, shares key product updates from Q4 2024. New AI capabilities, including CallMiner AI Assist, add to the long list of AI ad...
The Team at CallMiner
February 28, 2024
Updated February 28, 2024
Voice analytics is a valuable tool enabling businesses to gain valuable insights from conversations and interactions with customers. As artificial intelligence (AI) capabilities have rapidly advanced, and technologies such as machine learning and natural language processing (NLP) have become commonplace in everyday life, AI-driven voice analytics solutions are increasingly powerful for extracting actionable insights from what was once unstructured, difficult-to-analyze data.
This blog offers insights into what voice analytics is, as well as tips and challenges associated with this technology, including:
Voice analytics refers to the use of a voice recognition tool to record and analyze a spoken conversation, such as those that happen in the contact or customer service center. Not only does voice analytics software translate speech to text, but it can also identify the speaker’s emotion and intent by analyzing audio patterns.
This software was first leveraged for commercial purposes in the enterprise in the early 2000s. Since then, it has grown in importance, with more and more companies investing in voice analytics technology.
In fact, according to Allied Market Research, the global speech analytics market is expected to grow from $1.7 billion in 2021 to $4.9 billion in 2031, growing at a compound annual growth rate (CAGR) of 11.2%.
The first solutions in this space concentrated on converting speech to text, which certainly had its uses. For one, it was quick to produce a transcript or a report on an agent’s call. However, data analysis was still a manual and time-consuming task left to team members. Leading voice analytics solutions today go further and leverage conversation intelligence technology, which applies large language models (LLMs), sentiment analysis, and other artificial intelligence techniques and machine learning algorithms to automatically convert unstructured information from customer interactions into structured data, which can then be searched and analyzed.
The terms voice analytics, speech analytics, and text analytics are often used in the same context, and speech analytics and voice analytics are often used interchangeably. However, each term refers to a specific function:
Comprehensive analysis of customer interactions requires all three technologies, which collectively are referred to as conversation analytics.
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Voice analytics software brings with it enormous benefits. Companies across f various industries, such as insurance, technology, financial services, and healthcare, are leveraging this technology to generate insights into customer needs and drive business performance improvement.
Business areas such as customer service and customer experience can particularly benefit from voice analytics. By using voice analytics solutions to analyze huge volumes of customer conversation data, your company can identify vital and previously overlooked information that allows you to better meet your customers’ needs, predict future behavior, and create highly targeted messaging that resonates with your customers.
Voice analytics can boost customer service and call center performance levels in the following ways:
There are two different approaches to voice analytics – phonetics and transcription. They both begin the same way by identifying the sounds and audio and converting them to phonemes – the basic units of communication.
However, a phonetics-based conversation is limited hereafter. These solutions scan an extensive list of phonemes and identify phonetic patterns for words and phrases. This technique is inefficient, can be slow, and – because there is an average of 4 phonemes per word – there is a high chance of errors.
Transcription or speech-to-text technology goes one step further than phonetics and applies a language model of hundreds of thousands of words to the phonetic index, enabling the analytics software to automatically piece together accurate conversations using the same logic and context found in the human brain.
As you weigh up which voice analytics solution is most suitable to your business needs, you should prioritize transcription-based technology.
There are a number of best practices you should bear in mind as you figure out the solution most suited to your company.
Voice analytics is an exciting and rapidly growing area in business today. It offers enormous benefits to your organization by improving agent performance and boosting customer satisfaction.
If your business wants to tap into the power of voice analytics, invest in an advanced voice analytics solution that leverages multiple AI techniques for deeper, actionable insights from customer conversations. The CallMiner platform combines voice and text analytics to analyze all customer interactions at scale across multiple channels such as phone, email, chat, and more, providing more comprehensive conversation intelligence insights and connecting those insights with actions that drive business improvement.
Voice analytics works by capturing and analyzing audio data from voice interactions such as phone calls, voice assistants, and other voice-enabled technologies. Advanced algorithms and artificial intelligence (AI) are used to transcribe the audio into text, identify speech patterns, emotions, and various vocal qualities, and extract meaningful insights from the conversation.
These insights can be used for various purposes like enhancing customer service, improving products, and making informed business decisions.
Voice data can be used for a multitude of purposes such as:
Speech analytics focuses primarily on the words spoken during a voice interaction. It involves transcribing audio, analyzing the choice of words, phrases, and the structure of conversations to extract meaningful information and insights. It is used mainly to understand the content of the conversation.
Voice analytics, on the other hand, goes beyond the words to analyze the speaker's tone, pitch, speed, and emotional state during the interaction. It gives context to the spoken words and offers insights into the speaker's sentiments and emotional state. Voice analytics is used to glean deeper insights from voice interactions.
One example of sentiment analysis is analyzing online product reviews. A customer might leave a review saying, "The product is good, but the customer service was terrible!"
Sentiment analysis software would process this text, identifying the positive sentiment towards the product ("The product is good") and the negative sentiment towards customer service ("customer service was terrible"). This allows the company to understand and categorize customer sentiments, helping them improve specific aspects of their business.