Peter has over 15 years of experience in customer service, contact centers, technology and operations spanning startup, growth stage and enterprise organizations globally.
Today, more than 60% of customers say that they expect higher levels of customer service than they did before. Call center sentiment analysis can help businesses grasp their customers’ evolving needs, concerns, and sentiments accurately.
However, conducting call center sentiment analysis presents some challenges, including the breadth of data analysis it requires and being able to pull actionable insights from this data. To help you overcome the stumbling blocks, this article reviews the importance of call center sentiment analysis, how it works, and how to conduct proper analysis using the best call center software.
Call center sentiment analysis is a valuable technique used within customer service and experience management to gauge and understand the emotional tone and attitude of interactions that occur between customers and call center representatives. It involves using natural language processing (NLP) and machine learning algorithms to analyze the content of conversations, whether they're conducted over phone calls, live chats, emails, customer reviews, or other interactions.
The primary goal of call center sentiment analysis is to determine whether customers' sentiments are positive, negative, or neutral during their interactions. This information can provide organizations with actionable insights to enhance customer satisfaction, identify training needs for agents, and uncover areas for process improvement.
The process of sentiment analysis involves several key steps:
Here are some example sentences to illustrate the concept of sentiment analysis in a call center:
Positive sentiment:
Neutral sentiment:
Negative sentiment:
Identifying and tracking these sentiments offer businesses valuable insights to tailor their approaches to meet customer needs, thereby building a stronger relationship with their audience.
Sentiment analysis uses text and speech analysis to offer powerful capabilities for understanding customers. Some benefits of sentiment analysis in contact centers include:
Customer pain points can broadly be defined as the areas where customer needs have not been met. They are specific problems along the various stages of the customer journey that cause negative sentiments.
Sentiment analysis makes it easier to decipher the undertones in customer interactions and determine when they express positive, negative, or neutral sentiments. This provides contact centers with a nuanced understanding of where customer experiences might be falling short.
With a great sentiment analysis tool like Operative Intelligence, this insight is further refined. Operative Intelligence is a customer service analytics software that allows organizations to not only gauge sentiment but also to pinpoint the specific types of inquiries that generate the lowest sentiment scores at scale.
By analyzing 100% of inbound interactions, the platform can provide additional context into what customers say, directly in their own words. This proves more scalable than using surveys or only the Net Promoter Score because it captures the sentiments of all your customers— instead of recording a few responses that may not accurately reflect the needs of the majority.
Sentiment analysis acts as an early warning sign for negative customer experiences. When conducted in real-time, it empowers agents to promptly address low customer sentiment during, and not after interactions.
This immediate feedback loop enables agents to quickly learn and adapt their approach to provide a more frictionless customer experience.
A call center's success depends on the performance of its agents. Sentiment analysis provides a comprehensive lens through which agent interactions can be evaluated. It sheds light on the effectiveness of agent responses, empowering managers to identify top-performing agents and implement call center coaching programs for low-performing agents.
In call center operations, sentiment analysis can help provide valuable insights into the emotional nuances of customer interactions. However, this approach is not without its fair share of challenges.
Let’s take a look at some of them:
Call center sentiment analysis presents a challenge due to the need for a large volume of diverse data for accurate insights. Gathering data from various communication channels like calls, chats, and emails is complex and time-consuming. Cleaning, labeling, and preparing the data for analysis require large infrastructure and manual efforts.
Also, variations in language and tone, especially across different demographics, further complicate the accurate interpretation of sentiment. The total amount of resources involved in this process makes it especially difficult for businesses with smaller budgets to scale.
While focusing separately on each word may be convenient, call center sentiment analysis often fails to capture the full context and nuances of customer interactions. Language use and semantics are intricately tied to the overall flow of conversation, making it important to consider the entire dialogue.
For instance, a customer might use a negative word in a neutral or positive context, resulting in an inaccurate sentiment classification. This oversimplification can lead to misjudgments and provide a skewed understanding of the customer's true emotional state.
A basic sentiment analysis tool is only able to identify keywords but cannot categorize interactions based on the type of inquiry or agent performance level. For example:
Prioritizing sentiments with the largest volume helps contact centers make the most significant impact in improving customer satisfaction. However, it would require years of investment and analysis to do this manually. Understanding sentiments within these contexts requires sophisticated tools that can automate the entire process without compromising service quality.
Sentiment analysis sheds light on whether a customer interaction was positive, negative, or neutral. However, it does not directly reveal the underlying cause of customer dissatisfaction. The lack of insights into the root cause hinders the ability to implement targeted solutions through sentiment analysis.
Finding these root causes involves examining how products, messaging, or the organization itself contributes to customer friction. To effectively address these concerns, contact centers have to collaborate with other departments in the company. This enables the entire organization to eliminate the occurrence of these issues rather than just managing them.
Solutions may include:
Fortunately, Operative Intelligence takes care of all these limitations with:
Call center sentiment analysis is a great approach for understanding customer interactions and shaping the customer experience positively. However, it can be infinitely improved with the Operative Intelligence platform.
Operative Intelligence’s automated software provides actionable insights into the root cause of customer contacts, and then organizes them by volume, cost, and sentiment. This powerful data enables service leaders to build a compelling case for fundamental change across the organization.