66 datasets found
  1. u

    Social Recommendation Data

    • cseweb.ucsd.edu
    json
    Updated Sep 15, 2023
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    UCSD CSE Research Project (2023). Social Recommendation Data [Dataset]. https://cseweb.ucsd.edu/~jmcauley/datasets.html
    Explore at:
    jsonAvailable download formats
    Dataset updated
    Sep 15, 2023
    Dataset authored and provided by
    UCSD CSE Research Project
    Description

    These datasets include ratings as well as social (or trust) relationships between users. Data are from LibraryThing (a book review website) and epinions (general consumer reviews).

    Metadata includes

    • reviews

    • price paid (epinions)

    • helpfulness votes (librarything)

    • flags (librarything)

  2. k

    Article-Recommendation-system

    • kaggle.com
    Updated Sep 25, 2022
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    (2022). Article-Recommendation-system [Dataset]. https://www.kaggle.com/datasets/jainilcoder/article-recommendation-system
    Explore at:
    CroissantCroissant is a format for machine-learning datasets. Learn more about this at mlcommons.org/croissant.
    Dataset updated
    Sep 25, 2022
    License

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

    Description

    Make an article recommendation system for recommending articles

  3. Personalised eLearning Recommendation system

    • ieee-dataport.org
    Updated Feb 25, 2022
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    Pradnya Vaibhav Kulkarni (2022). Personalised eLearning Recommendation system [Dataset]. http://doi.org/10.21227/prva-qc11
    Explore at:
    Dataset updated
    Feb 25, 2022
    Dataset provided by
    Institute of Electrical and Electronics Engineershttp://www.ieee.ro/
    Authors
    Pradnya Vaibhav Kulkarni
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Description

    eLearning, or online learning, has reached every corner of the globe in this era of digitization. As a result of the COVID-19 pandemic, the value of eLearning has increased substantially. In eLearning recommendation systems, information overload, personalised suggestion, sparsity, and accuracy are all major problems. The correct eLearning Recommendation System is necessary to tailor the course recommendation according to the user's needs. To create this model, dataset of the User Profile and User Rating is needed. The User Profile dataset is created by using the Calyxpod programme to collect student profiles. User requirements are available through these profiles. The dataset obtained by gathering student comments following course completion is in the range of 1 (lowest) to 5 (highest).

  4. K

    Book Recommendation Dataset

    • 037kefu2.com
    • goat88.com
    • +13more
    zip
    Updated Feb 9, 2024
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    Möbius (2024). Book Recommendation Dataset [Dataset]. https://037kefu2.com/amazon-recommender-systems-handbook
    Explore at:
    zip(25500788 bytes)Available download formats
    Dataset updated
    Feb 9, 2024
    Authors
    Möbius
    License

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

    Description

    Context

    During the ultimate couple decades, with the rise of Youtube, Amazon, Netflix and many other that web services, recommender networks have taken more and more place are our lives. From e-commerce (suggest at buyers related that could support them) to on-line advertisement (suggest up consumers the right contents, matching their preferences), recommender systems are today mandatory inside our daily online journeys. In a very general way, recommender systems are algorithms aimed with suggesting relevant items to users (items being video to watch, text to readers, products to acquire or anything else depending off industries).

    Recommender systems are really critical in some industries in they can generate a huge amount of your when they are efficient or also be a way to stand leave significantly from competitors. While ampere proof of the importance the recommender schemes, we can mention that, a few years ago, Netflix organised a challenges (the “Netflix prize”) where the goal had to produce a recommender system that conducts enhance than its own algorithm with a prize of 1 million dollars to win.

    #

    https://galeriemagazine.com/wp-content/uploads/2018/05/StuttgartSelect.jpg" alt="child"> Image: Stuttgarter Local Library | Stuttgart, Germany, PHOTO: DIETER WEINELT, FLICKR #

    Content

    The Book-Crossing dataset comprises 3 files. - Users Contains this users. Note is user IDs (User-ID) have been anonymized and map to integers. Vital file is provided (Location, Age) if available. Or, these fields contain NULL-values. #
    - Books Books are identified by their respective ISBN. Invalid ISBNs hold already been removed from the dataset. Moreover, some content-based news is given (Book-Title, Book-Author, Year-Of-Publication, Publisher), preserved from Amazon Web Services. Note that in case of several originators, with the first is provided. URLs connect till cover images are also predefined, appearing at three distinct flavours (Image-URL-S, Image-URL-M, Image-URL-L), i.e., small, medium, large. Dieser URLs indicate until the Virago web site. #
    - Ratings Contains the book rating information. Ratings (Book-Rating) are either explicit, voiced on a scale from 1-10 (higher values denoting higher appreciation), alternatively implicit, expressed by 0. #

    Starter Kernel(s)

    Acknowledgements

    Collected by Cai-Nicolas Ziegler at a 4-week crawl (August / September 2004) von the Book-Crossing community with kind permission from Ron Hornbaker, CTO of Humankind Scheme. Contain 278,858 average (anonymized but for demographic information) providing 1,149,780 ratings (explicit / implicit) about 271,379 books.

    ##

    #

    More Readings

  5. k

    Movie-Recommendation-System

    • kaggle.com
    Updated Jun 17, 2021
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    (2021). Movie-Recommendation-System [Dataset]. https://www.kaggle.com/datasets/parasharmanas/movie-recommendation-system
    Explore at:
    CroissantCroissant is a format for machine-learning datasets. Learn more about this at mlcommons.org/croissant.
    Dataset updated
    Jun 17, 2021
    License

    Open Database License (ODbL) v1.0https://www.opendatacommons.org/licenses/odbl/1.0/
    License information was derived automatically

    Description

    The Movie Recommendation System is a machine learning-based application that provides personalized movie recommendations to users. It utilizes collaborative filtering techniques to analyze user preferences and similarities among movies to generate accurate and relevant recommendations. The system is built using Python programming language and incorporates popular machine learning libraries such as scikit-learn and pandas.

    The project utilizes the MovieLens dataset, a widely used dataset in the field of recommender systems, containing movie ratings and metadata. The dataset is preprocessed to create a user-item matrix and to calculate item similarity using cosine similarity. This enables the system to identify movies that are similar to the ones the user has previously enjoyed and recommend them accordingly.

    The recommendation process involves taking a user's unique identifier as input and generating a list of top-rated movie recommendations specifically tailored to their preferences. The system dynamically adjusts and updates the recommendations as new data becomes available.

    The Movie Recommendation System is intended for individuals who seek personalized movie suggestions to enhance their movie-watching experience. It can be integrated into various platforms such as streaming services, movie review websites, or personal movie catalog applications.

  6. s

    Recommendation Engines Market, Size, Trends, Share, Forecast to 2030

    • straitsresearch.com
    Updated May 17, 2022
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    Straits Research (2022). Recommendation Engines Market, Size, Trends, Share, Forecast to 2030 [Dataset]. https://straitsresearch.com/report/recommendation-engines-market
    Explore at:
    Dataset updated
    May 17, 2022
    Dataset authored and provided by
    Straits Research
    License

    https://straitsresearch.com/privacy-policyhttps://straitsresearch.com/privacy-policy

    Time period covered
    2020 - 2030
    Area covered
    Global
    Description

    The global recommendation engines market size is projected to reach USD 54 billion by 2030, from USD 3 billion in 2021, and is anticipated to register a CAGR of 37% during the forecast period (2022–2030). A recommendation engine is a data filte Report Scope:

    Report MetricDetails
    Study Period2018-2030
    Historical Period2018-2020
    Forecast Period2022-2030
    Base Year2021
    Base Year Market SizeUSD 3 Billion
    Forecast Year2030
    Forecast Year Market SizeUSD 54 Billion
    Forecast Year CAGR37%
    Largest MarketAsia Pacific
    Fastest Growing MarketNorth America

  7. u

    Marketing Bias data

    • cseweb.ucsd.edu
    json
    Updated Sep 15, 2023
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    UCSD CSE Research Project (2023). Marketing Bias data [Dataset]. https://cseweb.ucsd.edu/~jmcauley/datasets.html
    Explore at:
    jsonAvailable download formats
    Dataset updated
    Sep 15, 2023
    Dataset authored and provided by
    UCSD CSE Research Project
    Description

    These datasets contain attributes about products sold on ModCloth and Amazon which may be sources of bias in recommendations (in particular, attributes about how the products are marketed). Data also includes user/item interactions for recommendation.

    Metadata includes

    • ratings

    • product images

    • user identities

    • item sizes, user genders

  8. u

    Clothing Fit Data

    • cseweb.ucsd.edu
    • mgty919.app
    • +1more
    json
    Updated Sep 15, 2023
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    UCSD CSE Research Project (2023). Clothing Fit Data [Dataset]. https://cseweb.ucsd.edu/~jmcauley/datasets.html
    Explore at:
    jsonAvailable download formats
    Dataset updated
    Sep 15, 2023
    Dataset authored and provided by
    UCSD CSE Research Project
    Description

    These datasets contain measurements of clothing fit from ModCloth and RentTheRunway.

    Metadata includes

    • ratings and reviews

    • fit feedback (small/fit/large etc.)

    • user/item measurements

    • category information

  9. u

    Goodreads Book Reviews

    • cseweb.ucsd.edu
    json
    Updated Sep 15, 2023
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    UCSD CSE Research Project (2023). Goodreads Book Reviews [Dataset]. https://cseweb.ucsd.edu/~jmcauley/datasets.html
    Explore at:
    jsonAvailable download formats
    Dataset updated
    Sep 15, 2023
    Dataset authored and provided by
    UCSD CSE Research Project
    Description

    These datasets contain reviews from the Goodreads book review website, and a variety of attributes describing the items. Critically, these datasets have multiple levels of user interaction, raging from adding to a shelf, rating, and reading.

    Metadata includes

    • reviews

    • add-to-shelf, read, review actions

    • book attributes: title, isbn

    • graph of similar books

    Basic Statistics:

    • Items: 1,561,465

    • Users: 808,749

    • Interactions: 225,394,930

  10. K

    MIND: Microsoft News Recommendation Dataset

    • fantasyfootballnetwork.net
    • 777-vulkan-deluxe.com
    • +1more
    zip
    Updated Aug 28, 2021
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    Möbius (2021). MIND: Microsoft News Recommendation Dataset [Dataset]. https://fantasyfootballnetwork.net/news-recommendation-engine-dataset
    Explore at:
    zip(64661533 bytes)Available download formats
    Dataset updated
    Aug 28, 2021
    Authors
    Möbius
    License

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

    Description

    Context

    News recommendation is an important technique for custom news serving. Compared with product and flick referrals which have been comprehensively intentional, the research on news recommendation is much additional limited, mainly owing to the lack of adenine high-quality brand dataset.

    What's Novel (June 21, 2021) We have a new approve Recommenders 0.6.0!

    Recommenders is immediately on PyPI and could be installed through piped! In addition thither are lots of bug fixes and utilities improvements.

    Here you can find the PyPi page: https://pypi.org/project/recommenders/

    Here you can find the package functional: https://microsoft-recommenders.readthedocs.io/en/latest/

    Content

    The MIND dataset for news recommendation was collected by anonymized behavior protocols of Microsoft News website. The data randomly sampled 1 million users who had at least 5 news raps during 6 days from October 12 to November 22, 2019. To protect user privacy, each user your de-linked from the products system while securely hashed into an anonymized ID. Also collected the news click behaviors about that users include this frequency, which are formatted into impression root. This impression logs have been used in aforementioned last week for test, and and logs in the fifth week for training. On samples inbound training set, used the to behaviors inbound the first four weeks to construct the news click view for user modeling. Among the training data, the samples inside the last day of the fifth week used more validation set. Like dataset is a small version of MIND (MIND-small), by randomized sampling 50,000 users and their behavior logs. Only training and validation sets are contained in the MIND-small dataset.

    Both one training and validation data belong a zip-compressed folder, which contains four several files: - behaviors.tsv: The click histories press impression logs of users - news.tsv: The data of news articles - entity_embedding.vec: The embeddings of entities in news extracted from knowledge graph - relation_embedding.vec: The embeddings away relations between entities pulled from knowledge graph

    behaviors.tsv

    The behaviors.tsv file contains the impression logs also users' news click histories. It has 5 columns divided by the tab symbol:

    • Impression ID. Which ID the an impression.
    • End YOUR. The anonymous ID of one user.
    • Start. The impression time with font "MM/DD/YYYY HH:MM:SS AM/PM".
    • History. The news click history (ID register from clicked news) is this user before this impression. To clicked news articles represent booked over time.
    • Impressions. Item of news view in this impression and user's click behaviors on them (1 available click and 0 since non-click). The orders of word in adenine impressions have been shuffled.

    news.tsv

    The docs.tsv contents the detailed information of news article involved in the behaviors.tsv file. It has 7 columns, which are divided by aforementioned flap symbol:

    • News ID
    • Category
    • SubCategory
    • Title
    • Abstract
    • URL
    • Name Entities (entities contained in the title of this news)
    • Abstract Entries (entites contained included the short of on news)

    entity_embedding.vec & relation_embedding.vec

    The entity_embedding.vec or relation_embedding.vec files close the 100-dimensional embeddings of the entities and relations learnt from the subgraph (from WikiData knowledge graph) until TransE method. In both files, the first column exists the IDENTIFICATION the entity/relation, furthermore the others columns live the embedding vector values. Wealth hope that datas ca facilitate the research of knowledge-aware news recommendation. An example is exhibited as follows:

    Acknowledgements

    Inspiration

    Implementation and practice of multiple existing news recommendations methods, with autochthonous own methods.

    How to start?

  11. RuleRecommendation

    • huggingface.co
    Updated Jul 29, 2023
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    Wyze Labs (2023). RuleRecommendation [Dataset]. https://huggingface.co/datasets/wyzelabs/RuleRecommendation
    Explore at:
    Dataset updated
    Jul 29, 2023
    Dataset authored and provided by
    Wyze Labshttps://www.wyze.com/
    License

    Attribution-NonCommercial-NoDerivs 4.0 (CC BY-NC-ND 4.0)https://creativecommons.org/licenses/by-nc-nd/4.0/
    License information was derived automatically

    Description

    Wyze Rule Recommendation Dataset

      Dataset Summary
    

    The Wyze Rule dataset is a new large-scale dataset designed specifically for smart home rule recommendation research. It contains over 1 million rules generated by 300,000 users from Wyze Labs, offering an extensive collection of real-world automation rules tailored to users' unique smart home setups. The goal of the Wyze Rule dataset is to advance research and development of personalized rule recommendation… See the full description on the dataset page: https://huggingface.co/datasets/wyzelabs/RuleRecommendation.

  12. Recommendation Engine Market Report by Type (Collaborative Filtering,...

    • imarcgroup.com
    Updated Nov 19, 2021
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    Imarc Group (2021). Recommendation Engine Market Report by Type (Collaborative Filtering, Content-based Filtering, Hybrid Recommendation Systems, and Others), Technology (Context Aware, Geospatial Aware), Deployment Mode (On-premises, Cloud-based), Application (Strategy and Operations Planning, Product Planning and Proactive Asset Management, Personalized Campaigns and Customer Discovery), End User (IT and Telecommunication, BFSI, Retail, Media and Entertainment, Healthcare, and Others), and Region 2024-2032 [Dataset]. https://www.imarcgroup.com/recommendation-engine-market
    Explore at:
    Dataset updated
    Nov 19, 2021
    Dataset authored and provided by
    Imarc Group
    License

    https://www.imarcgroup.com/privacy-policyhttps://www.imarcgroup.com/privacy-policy

    Time period covered
    2024 - 2032
    Area covered
    Global
    Description

    The recommendation engine market size reached US$ 4.8 Billion in 2023 to reach US$ 59.1 Billion by 2032 at a CAGR of 31.2% during 2024-2032.

  13. y

    Social Recommendation Data

    • yoginadi.se
    json
    + more versions
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    UCSD CSE Research Task, Social Recommendation Data [Dataset]. https://yoginadi.se/beer-recommendation-system-python-based-on-multiple-reviews
    Explore at:
    jsonAvailable download formats
    Dataset authored and provided by
    UCSD CSE Research Task
    Description

    These datasets include featured as well as community (or trust) relationships between users. Information are from LibraryThing (a book rating website) and epinions (general consumer reviews).

    Metadata includes

    • reviews

    • price paid (epinions)

    • helpfulness votes (librarything)

    • flags (librarything)

  14. K

    Game Recommendations on Steam

    • jobs-mcbridecareergroup.com
    • c4f9nh947g.shop
    • +3more
    zip
    Updated Dec 13, 2023
    + more versions
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    Anton Kozyriev (2023). Game Recommendations on Steam [Dataset]. https://jobs-mcbridecareergroup.com/recommender-systems-in-video-games
    Explore at:
    zip(692315526 bytes)Available download formats
    Dataset updated
    Dec 13, 2023
    Authors
    Anton Kozyriev
    License

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

    Description

    Context

    The dataset contains over 41 million cleaned or preprocessed user awards (reviews) from adenine Steam Store - a leading internet platform for purchasing plus downloading video games, DLC, and other gaming-related content. Additional, it contains detailed information about games and add-ons.

    Content

    The dataset bestehen of trio main entities: - games.csv - ampere table of game (or add-ons) product on ratings, pricing are US dollars $, release date, etc. A piece of extra non-tabular details go choose, such as descriptions plus tags, is in a metadata file; - users.csv - a table of user profiles' public information: the numbers away purchased products and reviews published; - recommendations.csv - a table of user bewertungen: whether an user recommends a product. The chart represents one many-many relation between a game entity both a user entity.

    The dataset does not hold any personal informational around users about a Steam Platform. A preprocessing pipeline anonymized choose user IDs. All collected product lives accessible to a member for the broad public.

    Acknowledgements

    The dataset was cumulative after Steam Official Store. All rights off the dataset abbreviated image belong to the Valve Corporation.

    Inspiration

    Use which dataset to practice building a game recommendation system either performance an Exploratory Data Review set products from an Steam Store.

  15. g

    Google Local Data (2021)

    • gurisindustry.org
    • pura.nyc
    • +37more
    json
    + more versions
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    UCSD CSE Research Project, Google Local Data (2021) [Dataset]. https://gurisindustry.org/creating-a-beer-recommendation-system-in-python-based-on-reviews
    Explore at:
    jsonAvailable download formats
    Dataset authored and provided by
    UCSD CSE Research Project
    Description

    This Dataset contains review information off Google map (ratings, text, images, etc.), business metadata (address, geographical news, descriptions, category information, price, open hours, real MISC info), and links (relative businesses) in the Integrated Conditions. The dataset includes 666.3 million reviews, 113.6 million users and 4.9 billion businesses util Sep 2021.

  16. Recommendation Engine Market by End-user and Geography - Forecast and...

    • technavio.com
    Updated Dec 15, 2019
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    Technavio (2019). Recommendation Engine Market by End-user and Geography - Forecast and Analysis 2020-2024 [Dataset]. https://www.technavio.com/report/recommendation-engine-market-industry-analysis
    Explore at:
    Dataset updated
    Dec 15, 2019
    Dataset provided by
    TechNavio
    Authors
    Technavio
    License

    https://www.technavio.com/content/privacy-noticehttps://www.technavio.com/content/privacy-notice

    Time period covered
    2021 - 2025
    Area covered
    Global
    Description

    The global recommendation engine market size has the potential to grow by USD 3.57 billion during 2020-2024, and the market’s growth momentum will accelerate during the forecast period.

    This report provides a detailed analysis of the market by geography (APAC, Europe, MEA, North America, and South America) and end-user (media and entertainment, retail, travel and tourism, and others). Also, the report analyzes the market’s competitive landscape and offers information on several market vendors, including Adobe Inc., Amazon Web Services Inc., Dynamic Yield Inc., Evergage Inc., Google LLC, International Business Machines Corp., Kibo Software Inc., Qubit Digital Ltd., Salesforce.com Inc., and SAP SE.

    Market Overview

    Market Competitive Analysis

    The market is fragmented, and the degree of fragmentation will remain the same during the forecast period. The key players in the market are focusing on various growth strategies, including M&A and strategic partnerships, to expand the geographical reach and gain significant market shares and revenue. Qubit Digital Ltd., Salesforce.com Inc., and SAP SE. are some of the major market participants. Although the accelerating growth momentum will offer immense growth opportunities, issues related to accuracy in data prediction will challenge the growth of the market participants. To make the most of the possibilities, market vendors should focus more on the growth prospects in the fast-growing segments, while maintaining their positions in the slow-growing segments.

    To help clients improve their market position, this recommendation engine market forecast report provides a detailed analysis of the market leaders and offers information on the competencies and capacities of these companies. The report also covers details on the market’s competitive landscape and provides information on the products offered by various companies. Moreover, this report also includes information on the upcoming, recommendation engine market trends and challenges that will influence market growth. This will help companies create strategies to make the most of future growth opportunities.

    This recommendation engine market analysis report provides information on the production, sustainability, and prospects of several leading recommendation engine companies, including:

    Adobe Inc.
    Amazon Web Services, Inc.
    Dynamic Yield, Inc.
    Evergage Inc.
    Google LLC
    International Business Machines Corp.
    Kibo Software Inc.
    Qubit Digital Ltd.
    Salesforce.com Inc.
    SAP SE
    

    Recommendation Engine Market: Segmentation by Region

    North America was the largest recommendation engine market in 2019, and the region will continue to offer the maximum growth opportunities to market vendors during the forecast period. The increasing adoption of OTT services, including both video-on-demand and audio-on-demand and the presence of significant e-commerce websites in the region, will significantly influence the growth of recommendation engine market size.

    Over 38% of the market’s growth will originate from North America during the forecast period. The US and Canada are the key markets for recommendation engines in North America. Market growth in this region will be slower than the growth of the market in APAC and South America.

    Recommendation Engine Market: Segmentation by End-user

    Recommendation engines are highly preferred in the media and entertainment segment as they provide accurate and relevant recommendations about music and video to users. Moreover, several companies are also integrating advanced technologies, such as AI and ML, to enhance the capabilities of recommendation engines.

    Market growth in this segment will be slower than the growth of the market in the retail segment. This report provides an accurate prediction of the contribution of all the segments to the growth of the recommendation engine market size.

    Recommendation Engine Market: Key Drivers and Trends

    Recommendation filtering systems are used by companies to enhance the user experience, and customer base and are also classified into collaborative, content-based, and hybrid filtering. Moreover, as hybrid filtering incorporates both recommendation systems, it increases the chances of providing accurate recommendations. Furthermore, it helps users create a set of recommendations using technologies, such as AI and ML. Netflix and Amazon are among the significant companies utilizing the hybrid recommendation system to provide an enhanced user experience. Netflix uses these systems to provide recommendations related to movies and TV shows, as well as similar high rated content to its subscribers. The rising use of hybrid recommendation systems will significantly influence the global recommendation engine market growth.

    The recommendation engine is an essential tool among end-users, online retailers and online content providers.
    Major vendors are integrating technologies,
    
  17. P

    ReDial Dataset

    • paperswithcode.com
    • opendatalab.com
    Updated Nov 1, 2023
    + more versions
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    Raymond Li; Samira Kahou; Hannes Schulz; Vincent Michalski; Laurent Charlin; Chris Pal (2023). ReDial Dataset [Dataset]. https://paperswithcode.com/dataset/redial
    Explore at:
    Dataset updated
    Nov 1, 2023
    Authors
    Raymond Li; Samira Kahou; Hannes Schulz; Vincent Michalski; Laurent Charlin; Chris Pal
    Description

    ReDial (Recommendation Dialogues) is an annotated dataset of dialogues, where users recommend movies to each other. The dataset consists of over 10,000 conversations centered around the theme of providing movie recommendations.

  18. h

    myket-android-application-recommendation-dataset

    • huggingface.co
    Updated Aug 18, 2023
    + more versions
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    Erfan Loghmani (2023). myket-android-application-recommendation-dataset [Dataset]. https://huggingface.co/datasets/erfanloghmani/myket-android-application-recommendation-dataset
    Explore at:
    Dataset updated
    Aug 18, 2023
    Authors
    Erfan Loghmani
    License

    MIT Licensehttps://opensource.org/licenses/MIT
    License information was derived automatically

    Description

    Myket Android Application Install Dataset

    This dataset contains information on application install interactions of users in the Myket android application market. The dataset was created for the purpose of evaluating interaction prediction models, requiring user and item identifiers along with timestamps of the interactions.

      Data Creation
    

    The dataset was initially generated by the Myket data team, and later cleaned and subsampled by Erfan Loghmani a master student… See the full description on the dataset page: https://huggingface.co/datasets/erfanloghmani/myket-android-application-recommendation-dataset.

  19. Food Recommendation System

    • kaggle.com
    • hotwaterguaranteed.com
    zip
    Updated Sep 8, 2022
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    Cite
    schemersays (2022). Food Recommendation System [Dataset]. https://www.kaggle.com/datasets/schemersays/food-recommendation-system
    Explore at:
    zip(25348 bytes)Available download formats
    Dataset updated
    Sep 8, 2022
    Authors
    schemersays
    Description

    This dataset represents the data related to food recommender system. Two datasets are included in this dataset file. First includes the dataset related to the foods, ingredients, cuisines involved. Second, includes the dataset of the rating system for the recommendation system.

  20. a

    Recommendation Abbreviation - 6 Forms to Abbreviate Recommendation

    • allacronyms.com
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    Updated Jun 9, 2022
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    All Acronyms (2022). Recommendation Abbreviation - 6 Forms to Abbreviate Recommendation [Dataset]. https://www.allacronyms.com/recommendation/abbreviated
    Explore at:
    htmlAvailable download formats
    Dataset updated
    Jun 9, 2022
    Dataset authored and provided by
    All Acronyms
    License

    Attribution 4.0 (CC BY 4.0)https://creativecommons.org/licenses/by/4.0/
    License information was derived automatically

    Area covered
    World
    Description

    Explore the top abbreviations for Recommendation with our comprehensive guide. This page lists 6 commonly used shorthand versions of Recommendation, perfect for professionals, students, or anyone looking to streamline their communication in business or academic settings. Updated in 2022, our list ensures you stay current with the most accepted and widely used abbreviations for Recommendation. Perfect for writing reports, creating presentations, or quick note-taking in fast-paced environments.

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UCSD CSE Research Project (2023). Social Recommendation Data [Dataset]. https://cseweb.ucsd.edu/~jmcauley/datasets.html

Social Recommendation Data

Explore at:
212 scholarly articles cite this dataset (View in Google Scholar)
jsonAvailable download formats
Dataset updated
Sep 15, 2023
Dataset authored and provided by
UCSD CSE Research Project
Description

These datasets include ratings as well as social (or trust) relationships between users. Data are from LibraryThing (a book review website) and epinions (general consumer reviews).

Metadata includes

  • reviews

  • price paid (epinions)

  • helpfulness votes (librarything)

  • flags (librarything)

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