In this article 01. PHONETICS BASED SPEECH ANALYTICS 02. Dictionary vs non-Dictionary 03. False positives 04. SPEECH-TO-TEXT / TRANSCRIPTION BASED ANALYTICS 05. Using transcription based analytics for root cause analysis 06. HYBRID SOLUTIONS 07. WHICH SPEECH ANALYTICS TECHNOLOGY DO I CHOOSE? THE INNER CIRCLE GUIDE TO CUSTOMER CONTACT ANALYTICS BLOG: 3/7 ContactBabel recently published the ‘The Inner Circle Guide to Customer Contact Analytics’ which was sponsored by Business Systems. For those with a hectic schedule, we created a short series of blogs covering some of the main points highlighting the latest insights on speech analytics covered in the guide. Please find the third in the series below. ********************************************************************************* Speech analytics can be delivered in a variety of ways. The most commonly known are the phonetics approach and the speech-to-text or transcription based approach. Increasingly we are now seeing companies offering a hybrid of the two with the ability to phonetically search against a set vocabulary or dictionary and then transcribe a percentage of the results. Nexidia for example no longer solely rely on phonetics, they also use speech-to-text and Verint uses the transcription approach with accuracy based on proximity of other phrases, so there is a cross-over into phonetics. NICE has also historically taken the hybrid approach of phonetics search and transcription approach as outlined below. PHONETICS BASED SPEECH ANALYTICS Phonetics-based applications look for defined sounds or a string of sounds and attempt to match these sounds to target words or phrases in a phonetic index file. The phonetic search process uses an acoustic model tuned to a specific language, with the search terms converted into phonemes and results returned based on relevancy. Dictionary vs non-Dictionary There are different methods of phonetic search depending on the vendor and technology. Non dictionary dependent ad-hoc search is possible to find any phrases specified. Alternatively in the dictionary approach, used by companies liked NICE the searches are based on a glossary of pre-defined phrases. The non-dictionary approach is useful where new phrases or terms are frequently being used in conversations. For example in retail where you may be launching new products all the time, a phonetics approach means the user can just type in the name and it can be searched upon. With either method of phonetic search there is still no guarantee the keyword or phrase found will be used in the correct context. False positives Phrase recognition is used to help alleviate this issue and reduces false positives, to help put words into context. By adapting the search and entering a longer phrase, the more chance you have of achieving accurate and unique results. Searching on single words will bring back more results, but risks a lot of false positives, unless you have a distinctive word, like a competitors name for example. SPEECH-TO-TEXT / TRANSCRIPTION BASED ANALYTICS Also known as Large Vocabulary Continuous Speech Recognition (LVCSR), in LVCSR a call is transcribed into text in order for the analysis and keyword spotting to take place. It is largely dependent on a language model and dictionary to identify words correctly. It does not require pre-definition of words to search for as the content of the calls is available in the index. When it comes to the actual indexing which takes the outputs from the speech engine in order to make it searchable, transcription-based processing is considerably slower, usually in the region of 4-20 x real-time versus >1000 x real time for some phonetics based systems. Using transcription based analytics for root cause analysis It is generally accepted that 60-70% accuracy in word recognition is average and transcription based analytics retains the entire content of calls not just the initial keywords and phrases specified. As a result it tends to be the better option for root cause analysis and identifying clusters of terms that occur together, providing a starting point for deeper analysis. HYBRID SOLUTIONS Where you have dual phonetic and transcription –based systems customers can benefit from phonetics’ rapid identification of key words and phrases, whilst allowing in-depth discovery and root cause analysis by use of the transcription method. A typical example would be to use this to analyse 100% of calls quickly with phonetic indexing, categorising and viewing trends, then transcribing the calls identified as being of particular interest in order to conduct root cause analysis. If you only transcribe the calls of interest you minimise the need to transcribe 100% of calls putting less strain on your servers. WHICH SPEECH ANALYTICS TECHNOLOGY DO I CHOOSE? First and foremost you need to think about the likely use of the technology and how you are going to apply it. If you’re likely to be searching for information many times a day as part of a business intelligence or process improvement project, then transcription may be preferred as searching is quicker. If the organisation is likely to process large amounts of audio but searching it infrequently for example in case of evidence production or proof of compliance, then phonetics may be a more appropriate choice. Ultimately when considering which solution to implement, customers need to think about how they are going to use the technology, how important accuracy is and working with a supplier who can help fully embed the technology into the organisation in a way that adds value. Keep an eye out for the next in our speech analytics blog series – where we’ll provide top tips for implementing speech analytics – not one to be missed! Download the full ‘Inner Circle Guide to Contact Centre Analytics’ here > Written by: Business Systems UK
Blog 28 August, 2025 What is Conversational AI? A Beginner’s Guide to Smarter CX In today’s fast-paced digital landscape, businesses are under increasing pressure to deliver seamless and efficient customer experiences (CX). Customers expect quick responses, personalised interactions, and 24/7 availability. This is where Conversational AI comes in. By leveraging artificial intelligence (AI) and natural language processing (NLP), Conversational AI enhances customer service, automates interactions, and significantly improves operational
Blog 23 July, 2025 Mike Wardell Appointed Executive Chairman We are pleased to announce that Mike Wardell, former CEO of Business Systems Ltd, has transitioned to the role of Executive Chairman of both Business Systems and Wordwatch. This strategic move marks a significant milestone for both brands as they continue to strengthen their market-leading positions in customer contact solutions and communications governance and archiving.
Blog 16 July, 2025 Unlocking the Power of Conversation: How Interaction Analytics Is Reshaping Contact Centre Workforce Planning Contact centres are no longer just cost centres – they’re goldmines of actionable insight. And in 2025, forward-thinking customer contact leaders are discovering that the most untapped resource in their operations isn’t in headcount or tech—it’s the conversations they’re already having. Welcome to the era of interaction analytics. With the power to transform how you
Blog 8 July, 2025 From Hype to Impact: AI Strategies for Maximum ROI AI is revolutionising customer contact – but for many contact centres, the results aren’t matching the promise. Despite a surge in experimentation, too many organisations find themselves in “pilot paralysis”: high on potential, low on return. Contact centres need to adopt AI, but many are hitting the same wall: inconsistent ROI. Why? Because not all
Blog 3 June, 2025 Why Workforce Engagement is Key to Retaining Contact Centre Agents Call of Duty: Why Engaged Agents Stay in Contact Centres One repeat challenge our consultants see when we partner with new organisations is Agent retention. With increasing customer expectations, hybrid working models, and AI-driven efficiencies reshaping the contact centre industry, there is always an ongoing pressure for organisations to keep agents engaged and motivated in
Blog 15 May, 2025 How OpenAI’s o3 and o4 Mini Models are a major step forward in Conversational AI for Contact Centres The release of OpenAI’s latest large language models – o3 and o4 mini – represents a major step forward in the evolution of enterprise-grade AI for customer service. These new models are purpose-built to handle complexity, improve reasoning, and scale automation without compromising control or compliance. For contact centres looking to enhance customer experiences and
Blog 1 April, 2025 AI Agents in Contact Centres: Are You Ready for the Future? The Future of Customer Service is Here The contact centre industry is undergoing a significant transformation. Rising customer expectations, increasing operational costs, and workforce shortages are putting immense pressure on businesses to deliver seamless customer experiences while maintaining profitability. The companies that embrace AI agents today are the industry leaders of tomorrow – those that
Blog 10 February, 2025 What is Agentic AI and Why Does It Matter to You? Agentic AI is transforming contact centres by enabling systems to act autonomously, adapt to new situations, and proactively achieve goals – much like a human agent. But how does it differ from traditional automation, and why should contact centre leaders take notice? What is Agentic AI? Unlike rule-based automation, Agentic AI makes independent decisions, learns