Learn AI Text Analysis in Minutes

Walk-through a real life text analysis example using AI.

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See why people love Displayr

Understand your text data in seconds, not hours

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Smart AI that understands your text

Displayr uses advanced Artificial Intelligence (AI) and Natural Language Processing (NLP) to grasp the meaning behind your text data. Get accurate and consistent results that are better than manual analysis. The AI looks at the context and meaning—not just keywords—categorizing verbatims into reliable themes and insights every time.

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Use prompts for any type of text analysis

Squeeze more meaning from your text analysis by asking highly detailed questions and using prompts to perform any type of text analysis including sentiment analysis, entity extraction, intention detection, categorization, and overlapping categorizations, topic modeling, and emotion detection.

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Easy to use—no coding needed

Displayr’s text tool is designed with a simple, user-friendly interface that anyone can use without technical skills. Start exploring and analyzing your text data without any hassle, saving you time and effort.

Finally text analytics software that finds themes and classifies data better than I can.
Andrew K
Andrew K

Insights Professional

The complete tool

for text analytics

Automatic theme detection

AI automatically identifies and categorizes themes within your text data, providing deeper insights.

Emotion detection

Understand and analyze complex emotions like frustration and sadness, helping you understand customer motives.

Entity extraction

Extract key entities like names, places, and organizations to enrich your analysis.

Customizable categories

Fine-tune and adjust categories to match your specific needs and preferences.

Text visualization

Create stunning word clouds, charts, and dashboards that help tell the story behind your text.

Global language support ​

Analyze text data in any language, with true native language support to a global audience.

Sentiment analysis

Analyze large volumes of text to gauge positive, negative, or neutral sentiments.

Natural Language Processing

Extract insights with unrivalled accuracy, utilizing NLP to reduce manual effort and free up time.

Case Study - Vennli​

US Market Research Agency

Displayr helps Vennli complete projects 5x faster​

Challenges

  • Too many hours spent manually updating reports and verbatims
  • High risk of error

Solutions

  • AI-powered text categorization
  • All-in-one software

Results

  • Text analytics 5X faster
  • Reports done 76% faster

“I would recommend Displayr in a heartbeat” 
Erik Larsen
Erik Larsen
Director, Vennli

Text analysis FAQs

What’s an example of text analysis?

A common example of text analysis is sentiment analysis, which uses machine learning and natural language processing to interpret large volumes of text data (emails, social media comments, reviews, etc.) and determine whether the text is negative, positive, or neutral. Learn more about how you can improve your sentiment analysis.

As well as sentiment analysis, some other examples of text analysis techniques include;

  • Entity extraction: the process of identifying and extracting key terms such as people, places, dates, companies, products, jobs and more
  • Intention detection: utilizing AI to determine the ‘why’ behind specific text, whether it’s diving deeper into what has led to a customer’s complaint or using context to understand ambiguous product reviews​
  • Categorization: involves organizing text into predefined groups. While this was once a relatively general process, with AI, categorization is now highly specific, grouping answers together based on complex factors ​
  • Overlapping categorization: following the same theory as categorization, only taking a more flexible approach where the same answers can fit into multiple categories

Text mining is another term for text analysis and refers to the process of analyzing textual data to glean insights. While ‘text analysis’ has been performed by humans for hundreds of years in fields like literature and social sciences, ‘text mining’ is a newer term that emerged from data mining and the inception of machine learning algorithms that automate text analysis. Explore the similarities and differences between text mining, text analysis, and text analytics.

Thematic coding is the process of finding common themes in text by analyzing, coding and identifying patterns in textual data. It goes beyond simply counting the most frequent words and phrases, but actually breaks down the data to highlight the relationships between different segments. This is how Displayr’s text analytics goes beyond surface-level keywords to understand the true meaning of the text. Learn more about how thematic coding powers text analysis.

Although similar, text analytics and natural language processing (NLP) are not the same. Text analytics provides actionable insights through statistical and machine learning techniques, while NLP is about processing, understanding, and generating human language (think Siri or Alexa). Displayr utilizes NLP to improve the quality of text analytics, allowing you to use prompts to ask highly detailed questions of your data. 

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