2 datasets found
  1. o

    Instagram Threads User Feedback Dataset

    • opendatabay.com
    .undefined
    Updated Jul 4, 2025
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    Datasimple (2025). Instagram Threads User Feedback Dataset [Dataset]. https://www.opendatabay.com/data/ai-ml/202e79f2-8046-449b-baee-1e6f29960cfc
    Explore at:
    .undefinedAvailable download formats
    Dataset updated
    Jul 4, 2025
    Dataset authored and provided by
    Datasimple
    Area covered
    Reviews & Ratings
    Description

    This dataset provides a collection of user reviews for the Threads mobile application from both the Google Play Store and the Apple App Store. It is designed to offer insights into user satisfaction, app performance, and to help identify emerging user patterns and sentiments. The data was gathered by scraping reviews from the respective app marketplaces.

    Columns

    • source: Indicates the origin of the review, such as 'Google Play' or 'App Store'.
    • review_description: Contains the actual text of the review provided by the user.
    • rating: Represents the numerical rating given by the user.
    • review_date: Specifies the date when the review was submitted.

    Distribution

    The dataset is typically provided in a CSV file format. Specific row or record counts are not available for the entire dataset, but review counts are detailed for various rating ranges and daily periods. For instance, 15,559 reviews are rated between 4.80 and 5.00, while 11,338 reviews were recorded between 5th and 6th July 2023.

    Usage

    This dataset is ideal for: * Sentiment analysis to understand overall user sentiment towards the Threads app. * Investigating factors that lead to 1-star and 5-star ratings, offering insights into user satisfaction and dissatisfaction. * Evaluating the application's performance and identifying recurring themes in user feedback.

    Coverage

    The dataset's geographic scope is global, collecting reviews from users worldwide. The time range for the reviews spans from 6th July 2023 to 25th July 2023. The dataset was last updated on 26th July 2023. It captures feedback from users across two major mobile platforms, Google Play (92% of reviews) and Apple App Store (8% of reviews).

    License

    CC-BY-NC

    Who Can Use It

    • Data analysts and researchers interested in mobile app performance and user sentiment.
    • App developers and product managers aiming to understand user feedback for app improvements.
    • Organisations conducting market research on social media applications.

    Dataset Name Suggestions

    • Threads Mobile App Reviews 2023
    • Instagram Threads User Feedback Dataset
    • Threads App Store & Google Play Reviews
    • Threads User Ratings and Sentiment Data

    Attributes

    Original Data Source: Threads, an Instagram app Reviews

  2. o

    New Thread App Feedback

    • opendatabay.com
    .undefined
    Updated Jul 5, 2025
    Share
    FacebookFacebook
    TwitterTwitter
    Email
    Click to copy link
    Link copied
    Close
    Cite
    Datasimple (2025). New Thread App Feedback [Dataset]. https://www.opendatabay.com/data/ai-ml/a87f7d39-328a-4086-b2e8-a36c3fd1ebb3
    Explore at:
    .undefinedAvailable download formats
    Dataset updated
    Jul 5, 2025
    Dataset authored and provided by
    Datasimple
    License

    CC0 1.0 Universal Public Domain Dedicationhttps://creativecommons.org/publicdomain/zero/1.0/
    License information was derived automatically

    Area covered
    Data Science and Analytics
    Description

    This dataset presents a collection of over 37,000 reviews for the popular New Thread mobile application, sourced from both the Google Play Store and Apple App Store. It is a meticulously curated resource designed for researchers, data scientists, and machine learning enthusiasts. The dataset facilitates in-depth analysis of user sentiments and opinions, enabling exploration of natural language processing, sentiment analysis, and app performance assessment. It provides insight into user satisfaction, usability, feature preferences, and potential areas for app improvement. Each review includes star ratings and sentiment labels, such as positive, negative, or neutral, along with essential metadata like review date and app version.

    Columns

    • index: A sequential identifier for each record.
    • source: Indicates the platform from which the review was collected (e.g., Google Play Store, App Store).
    • source (play store or app store): Specifies the broad category of the source platform.
    • review_id: A unique identifier generated for each user review.
    • user_name: The name of the user who submitted the review.
    • review_title: A brief title provided for the review.
    • review_description: The main text content of the user's review.
    • rating: The star rating assigned by the user (typically from 1 to 5).
    • thumbs_up: A count of validations or 'likes' provided by other users for the review.
    • review_date: The date when the review was submitted.
    • meta-data_1: Additional metadata related to the review, corresponding to review_date.
    • developer_response: Any response provided by the app developer to the user's review.
    • meta-data_2: Additional metadata related to the review, corresponding to developer_response.

    Distribution

    The dataset comprises over 37,000 entities or reviews, with approximately 35,000 data points originating from the Google Play Store and about 2,000 from the Apple App Store. This distribution means around 95% of the data is from Google Play and 5% from the App Store. The data file is typically provided in a CSV format. Ratings within the dataset range from 1 to 5 stars, with a significant proportion of reviews being 5-star ratings (around 17,000 reviews). The majority of reviews have a low 'thumbs_up' count.

    Usage

    This dataset is ideally suited for: * Conducting natural language processing (NLP) tasks. * Performing sentiment analysis to understand user opinions. * Assessing and monitoring app performance. * Benchmarking various sentiment analysis models. * Training machine learning algorithms for text classification or sentiment prediction. * Exploratory data analysis to uncover patterns and trends in user feedback. * Identifying areas for improving user experience and app features. * Gaining valuable insights into the New Thread app's reception and evolution.

    Coverage

    The dataset's coverage is global, encompassing user reviews from around the world. The time range for the reviews spans from early July 2023 to early August 2023, specifically from 5th July 2023 to 7th August 2023. While it includes metadata such as reviewer demographics where available, detailed demographic breakdowns are not explicitly provided within the source material.

    License

    CC0

    Who Can Use It

    • Researchers: For academic studies on mobile app user feedback, NLP, and sentiment analysis methodologies.
    • Data Scientists: To build and evaluate machine learning models for sentiment detection and predictive analytics on app reviews.
    • Machine Learning Enthusiasts: For hands-on practice with real-world text data, model training, and feature engineering.
    • App Developers and Product Managers: To understand user perceptions, identify bugs, gather feature requests, and guide app development based on direct user feedback.
    • Marketing Analysts: To gauge public sentiment towards the app and inform marketing strategies.

    Dataset Name Suggestions

    • Thread App Reviews Dataset
    • Mobile App User Sentiment Data
    • New Thread App Feedback
    • App Store Review Analysis Data
    • User Opinion Threads

    Attributes

    Original Data Source: Thread app dataset: 37000 entities

  3. Not seeing a result you expected?
    Learn how you can add new datasets to our index.

Share
FacebookFacebook
TwitterTwitter
Email
Click to copy link
Link copied
Close
Cite
Datasimple (2025). Instagram Threads User Feedback Dataset [Dataset]. https://www.opendatabay.com/data/ai-ml/202e79f2-8046-449b-baee-1e6f29960cfc

Instagram Threads User Feedback Dataset

Explore at:
2 scholarly articles cite this dataset (View in Google Scholar)
.undefinedAvailable download formats
Dataset updated
Jul 4, 2025
Dataset authored and provided by
Datasimple
Area covered
Reviews & Ratings
Description

This dataset provides a collection of user reviews for the Threads mobile application from both the Google Play Store and the Apple App Store. It is designed to offer insights into user satisfaction, app performance, and to help identify emerging user patterns and sentiments. The data was gathered by scraping reviews from the respective app marketplaces.

Columns

  • source: Indicates the origin of the review, such as 'Google Play' or 'App Store'.
  • review_description: Contains the actual text of the review provided by the user.
  • rating: Represents the numerical rating given by the user.
  • review_date: Specifies the date when the review was submitted.

Distribution

The dataset is typically provided in a CSV file format. Specific row or record counts are not available for the entire dataset, but review counts are detailed for various rating ranges and daily periods. For instance, 15,559 reviews are rated between 4.80 and 5.00, while 11,338 reviews were recorded between 5th and 6th July 2023.

Usage

This dataset is ideal for: * Sentiment analysis to understand overall user sentiment towards the Threads app. * Investigating factors that lead to 1-star and 5-star ratings, offering insights into user satisfaction and dissatisfaction. * Evaluating the application's performance and identifying recurring themes in user feedback.

Coverage

The dataset's geographic scope is global, collecting reviews from users worldwide. The time range for the reviews spans from 6th July 2023 to 25th July 2023. The dataset was last updated on 26th July 2023. It captures feedback from users across two major mobile platforms, Google Play (92% of reviews) and Apple App Store (8% of reviews).

License

CC-BY-NC

Who Can Use It

  • Data analysts and researchers interested in mobile app performance and user sentiment.
  • App developers and product managers aiming to understand user feedback for app improvements.
  • Organisations conducting market research on social media applications.

Dataset Name Suggestions

  • Threads Mobile App Reviews 2023
  • Instagram Threads User Feedback Dataset
  • Threads App Store & Google Play Reviews
  • Threads User Ratings and Sentiment Data

Attributes

Original Data Source: Threads, an Instagram app Reviews

Search
Clear search
Close search
Google apps
Main menu