How to classify Intercom CSAT Survey Comments with generative AI
As a company, you want to understand how your customers feel about your product or service. One way to do this is by sending out CSAT surveys. However, analyzing the open-ended comments can be time-consuming and subject to human error. In this post, we’ll show you how to use generative AI to automatically classify Intercom CSAT survey comments, allowing you to quickly gain insights into your customer satisfaction.
What is Text Classification?
Text classification is a natural language processing (NLP) technique that involves using machine learning algorithms to automatically assign one or more predefined categories or labels to a given piece of text. The algorithms typically learn from a training set of labeled text data and use statistical models to identify patterns and features in the text that can be used to classify new, unseen text data.
Text classification is used in a wide range of applications, from spam detection in emails to sentiment analysis in social media posts and reviews. It has become an essential tool for many industries that rely on large amounts of text data, helping to automate tasks and extract valuable insights from the data.
Example Use Cases
Use cases for classifying Intercom CSAT survey comments include:
- Automatically classify comments by sentiment (positive, neutral, negative)
- Automatically classify comments by product or service feature
- Identify and classify common customer issues or complaints
- Automatically prioritize urgent comments
- Identify trends in customer feedback
Teams that might find these use cases helpful include: customer support, customer success, product, operations, and marketing.
Finding your input data and categories
You first need to identify the data that you want to work with. Here, we are looking at Intercom CSAT survey comments. You can extract this data using the Intercom API, export it in CSV format, or query a list of comments from your data warehouse or BI tool.
For more information on the Intercom API see here: https://developers.intercom.com/intercom-api-reference/reference
Next, you need to find or create your list of categories for classifying the comments. This might include sentiment categories (positive, neutral, negative), product or service features, or common customer issues.
Common examples of sentiment categories include:
- Positive
- Neutral
- Negative
Once you have your data and categories, you can use generative AI to automatically classify your Intercom CSAT survey comments. This will help you to quickly gain insights into your customer satisfaction and identify areas for improvement.
By automating the classification process, you can save time and reduce the risk of human error. Additionally, by using a generative AI model, you can continually improve the accuracy of your classifications as the model learns from new data.
Try implementing text classification for Intercom CSAT survey comments today and see how it can help your business gain valuable insights into customer satisfaction.