Here are some of the key benefits of using call center analytics software:
One of the biggest benefits of using call center analytics software is that it can enhance your customer service by helping you collect agent performance and customer data for analysis. Having a clear view of how your call center is doing will allow you to make strategic decisions for improvements in service, resulting in overall higher customer satisfaction.
You can also cross-reference responses across your omnichannel contact center to understand customer satisfaction levels even better - do customers generally have a better experience over the phone or online? Call center analytics software can tell you!
Improving customer experience should be one of your business’s top priorities if you wish to see consistent growth and revenue increases. If your customers are satisfied, they’re likely to remain loyal and return in the future, increasing customer retention rates. What’s more, they may also tell their friends and family about your business, which equals free word-of-mouth marketing.
With call center analytics, machine learning can be used to improve predictive analysis. This contact center technology learns from previous customer behavior and uses this data to predict customer behavior in the future. This means your agents can provide customers with a solution more efficiently, improving customer experience.
For example, if you find that the analysis from your data is telling you that customers prefer to use chatbots instead of communicating on the phone - you must ask why this is. Is it because that’s simply down to the customer’s preference? Or have they tried to call your business before but were met with long call waiting times and an agent who wasn’t experienced in handling the type of issue that their call was about?
By taking the time to understand consumer preferences, behaviors, and decision making, you can put more effort into areas that need attention.
As mentioned earlier, self-service tools in a contact center analytics system are beneficial to both the business and the consumer. Businesses receive fewer phone calls as customers can find the information they need online, so you won’t have to worry about hold times and abandonment rates.
Self-service mainly includes FAQs and a knowledge base, which let customers explore topics and find answers. Chatbot self-service systems can be operated by AI, and they can be taught to assist customers through machine learning or sophisticated programming.
This can produce highly accurate responses to customer queries, and as they’re learning over time, they’re constantly improving with each customer interaction. The amount of historical data to look over also increases.
By using intelligent routing and AI (artificial intelligence) to deal with customer issues appropriately, the customer experience is improved, and there’s an opportunity for conversions to grow.
The customized experience can start as soon as the customer gets in touch with the contact center. By accessing previous call history data sources, the agent is able to quickly lookup all customer information to establish the nature of their previous calls.
This improves agent productivity because the background information from these analytics tools could help the agent with the current call. The customer may be chasing up an existing issue that’s yet to be corrected. They then know how to precisely assist the customer before the discussion has even begun.
There are two main types of speech analytics. The first is post-call analytics, and the second is real-time analytics. While both have their own merits, combining the two can improve the customer experience and business efficiency.
Post-call analytics is used to perform interaction analytics on conversations that have already occurred. This can be used to examine specific details of a previous customer call or a group of calls, searching for specific patterns and potential moments to flag. For instance, post-call analytics can be used to analyze a large call volume to listen for a specific keyword, which could help identify the exact root cause of an issue.
Real-time analytics can be used to analyze the customer interaction then and there. For example, how long is the interaction going? Is there a growing pattern of customers hanging up in the middle of calls? Monitoring real-time interactions is just as important as post-call analysis.
Call center analytics software allows you to gain actionable insights into customer behaviors throughout the customer journey. The most direct way to gain data is by asking for feedback. You can create feedback forms with specially curated questions designed to help you understand where your team’s strenghts and weaknesses are.
Customer engagement is vital if you want to see where customers may be feeling unhappy within the customer journey.
For instance, you may include questions such as “How would you rate the service you received today?” or “Would you recommend this service to a friend?”. This information can help you understand how the customer is feeling towards your business and the service level you’ve provided.
Most call center advanced analytics software will allow you to transcribe the customer conversation or, in the case of live chat, keep a copy of the written conversation. This can be used in the future with predictive analysis to see how a customer responds to certain questions.
It can also help identify customer behavior when it comes to specific topics or areas of the business.