How to classify SatisMeter NPS Survey Comments with generative AI

Text Classification
SatisMeter

How to classify SatisMeter NPS Survey Comments with generative AI

As a business, understanding your customers' needs, wants, and expectations is crucial to growth and success. One way to gather this information is through Net Promoter Score (NPS) surveys. However, analyzing the open-ended comments provided by customers can be a daunting task, especially for larger companies with thousands of responses. In this post, we will explain how to use generative AI to automatically classify SatisMeter NPS survey comments.

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 SatisMeter NPS survey comments include:

  • Automatically classify comments by sentiment (positive, negative, neutral)
  • Automatically classify comments by topic (customer service, product, pricing, etc.)
  • Identify and classify spam comments
  • Automatically prioritize urgent comments
  • Improve response time to customer feedback

Teams that might find these use cases helpful include: customer support, customer success, product, marketing, and sales.

Finding your input data and categories

You first need to identify the data that you want to work with. Here, we are looking at SatisMeter NPS survey comments. You can extract this data using the SatisMeter API, export it in CSV format, query a list of comments from your data warehouse or BI tool, or copy and paste with an example comment.

For more information on the SatisMeter API see here: https://docs.satismeter.com/getting-started/api/

Next, you need to find or create your list of categories for classifying the comments. This might include sentiment categories (positive, negative, neutral), topic categories (customer service, product, pricing, etc.), or urgency levels.

Once you have your data and categories, you can use generative AI to automatically classify your SatisMeter NPS survey comments. This will help you to reduce the time it takes to analyze customer feedback and ensure that comments are addressed in a timely and appropriate manner.

Conclusion

Text classification using generative AI is an essential tool for businesses that want to automate tasks and extract valuable insights from large amounts of text data. By classifying SatisMeter NPS survey comments, you can gain a better understanding of your customers' needs and improve their overall experience with your company. We hope this guide has been helpful in showing you how to get started with this process.

Using AirOps to perform Keyword Identification

With AirOps, you can easily extract relevant keywords and phrases from your text-based data using the Keyword Identifier data app. Here's how:

  1. Select "Keyword Identifier" from the Data Apps page. The input required for Keyword Identifier is the "text_field" which is the input text data.

  2. Decide where you want the analysis to be performed and stored. The Keyword Identifier data app can be easily used in the AirOps Data App page and via API, but in this example, the analysis will be performed in Snowflake through an external function called AIROPS_KEYWORD_IDENTIFIER.

    Here is an example SQL query:

    SELECT
    AIROPS_KEYWORD_IDENTIFIER(text_field) as result
    FROM
    your_table
  3. Execute the keyword extraction analysis by running the SQL query. The output will contain an array of keywords and phrases extracted from the input text data.

    Example Input:

    "Hello, I am having trouble with my account. I cannot seem to log in and I have tried resetting my password multiple times."

    Example Output:

    "keywords": ["trouble", "account", "log in", "resetting", "password", "multiple times"],"summary": "A customer is having trouble logging into their account and has tried resetting their password multiple times."

Using AirOps to perform Sentiment Analysis

With AirOps, you can easily perform sentiment analysis on any text data such as reviews, support tickets, or sales calls using Sentiment Analyzer. Here’s how:

  1. Select "Sentiment Analyzer" from the Data Apps page. The only input for Sentiment Analyzer is some text to analyze.

  2. Decide where you want the analysis to be performed and stored. The Sentiment Analyzer data app can be easily used in the AirOps Data App page and via API, but in this example, the analysis will be performed in Snowflake through an external function called AIROPS_SENTIMENT_ANALYZER.

    Here is an example SQL query:

    SELECT
    AIROPS_SENTIMENT_ANALYZER(text_field) as result
    FROM
    your_table
  3. Execute the sentiment analysis by running the SQL query. The output will contain a sentiment score and sentiment summary, as well as a list of positive and negative keywords extracted from the input text data.

    Input:

    "I'm sorry to say that I had a terrible experience with your product. The customer service was unresponsive and the product didn't work as advertised."

    Output:

    "positive_keywords": [],"negative_keywords": ["terrible experience", "customer service", "unresponsive", "product", "didn't work", "advertised"],"score": -0.8,"sentiment": "Very Negative"

Using AirOps to perform Text Classification

With AirOps, you can easily perform classification using generative AI. Here’s how:

  1. Select "Text Classifier'' from the Data Apps page. Below are the possible inputs for Text Classifier.text_field: The input text data.categories (optional): Categories can be specified as a comma-separated list. Leave empty for automatic determination.multi_category: Set to “true” if the text can belong to multiple categories, or “false” if it can only belong to one category.

  2. Decide where you want the analysis to be performed and stored. The Text Classifier data app can be easily used in the AirOps Data App page and via API, but in this example, the analysis will be performed in Snowflake through an external function called AIROPS_CLASSIFIER.

    Here is an example SQL query:

    SELECT
    AIROPS_CLASSIFIER(text_field, categories, multi_category) as result
    FROM
    your_table
  3. Execute the classification analysis by running the SQL query. The output will contain a list of keywords extracted from the input text data that are relevant to the identified categories and a list of categories that the input text data belongs to based on the provided categories or automatic determination.

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