MobileRec: A Large-Scale Dataset for Mobile Apps Recommendation
- URL: http://arxiv.org/abs/2303.06588v1
- Date: Sun, 12 Mar 2023 06:39:40 GMT
- Title: MobileRec: A Large-Scale Dataset for Mobile Apps Recommendation
- Authors: M.H. Maqbool, Umar Farooq, Adib Mosharrof, A.B. Siddique, Hassan
Foroosh
- Abstract summary: MobileRec contains 19.3 million user interactions (i.e., user reviews on apps) with over 10K unique apps across 48 categories.
MobileRec presents users' ratings as well as sentiments on installed apps, and each app contains rich metadata such as app name, category, description, and overall rating.
- Score: 13.500977307018669
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Recommender systems have become ubiquitous in our digital lives, from
recommending products on e-commerce websites to suggesting movies and music on
streaming platforms. Existing recommendation datasets, such as Amazon Product
Reviews and MovieLens, greatly facilitated the research and development of
recommender systems in their respective domains. While the number of mobile
users and applications (aka apps) has increased exponentially over the past
decade, research in mobile app recommender systems has been significantly
constrained, primarily due to the lack of high-quality benchmark datasets, as
opposed to recommendations for products, movies, and news. To facilitate
research for app recommendation systems, we introduce a large-scale dataset,
called MobileRec. We constructed MobileRec from users' activity on the Google
play store. MobileRec contains 19.3 million user interactions (i.e., user
reviews on apps) with over 10K unique apps across 48 categories. MobileRec
records the sequential activity of a total of 0.7 million distinct users. Each
of these users has interacted with no fewer than five distinct apps, which
stands in contrast to previous datasets on mobile apps that recorded only a
single interaction per user. Furthermore, MobileRec presents users' ratings as
well as sentiments on installed apps, and each app contains rich metadata such
as app name, category, description, and overall rating, among others. We
demonstrate that MobileRec can serve as an excellent testbed for app
recommendation through a comparative study of several state-of-the-art
recommendation approaches. The quantitative results can act as a baseline for
other researchers to compare their results against. The MobileRec dataset is
available at https://huggingface.co/datasets/recmeapp/mobilerec.
Related papers
- MobileConvRec: A Conversational Dataset for Mobile Apps Recommendations [2.1926846784098064]
We present MobileConvRec, a benchmark dataset for conversational mobile app recommendations.
MobileConvRec consists of over 12K multi-turn recommendation-related conversations spanning 45 app categories.
We demonstrate that MobileConvRec can serve as an excellent testbed for conversational mobile app recommendation.
arXiv Detail & Related papers (2024-05-28T01:53:16Z) - End-to-end Learnable Clustering for Intent Learning in Recommendation [54.157784572994316]
We propose a novel intent learning method termed underlineELCRec.
It unifies behavior representation learning into an underlineEnd-to-end underlineLearnable underlineClustering framework.
We deploy this method on the industrial recommendation system with 130 million page views and achieve promising results.
arXiv Detail & Related papers (2024-01-11T15:22:55Z) - On Generative Agents in Recommendation [58.42840923200071]
Agent4Rec is a user simulator in recommendation based on Large Language Models.
Each agent interacts with personalized recommender models in a page-by-page manner.
arXiv Detail & Related papers (2023-10-16T06:41:16Z) - FedGRec: Federated Graph Recommender System with Lazy Update of Latent
Embeddings [108.77460689459247]
We propose a Federated Graph Recommender System (FedGRec) to mitigate privacy concerns.
In our system, users and the server explicitly store latent embeddings for users and items, where the latent embeddings summarize different orders of indirect user-item interactions.
We perform extensive empirical evaluations to verify the efficacy of using latent embeddings as a proxy of missing interaction graph.
arXiv Detail & Related papers (2022-10-25T01:08:20Z) - TTRS: Tinkoff Transactions Recommender System benchmark [62.997667081978825]
We present the TTRS - Tinkoff Transactions Recommender System benchmark.
This financial transaction benchmark contains over 2 million interactions between almost 10,000 users and more than 1,000 merchant brands over 14 months.
We also present a comprehensive comparison of the current popular RecSys methods on the next-period recommendation task and conduct a detailed analysis of their performance against various metrics and recommendation goals.
arXiv Detail & Related papers (2021-10-11T20:04:07Z) - Mobile Sensing for Multipurpose Applications in Transportation [0.0]
The State Departments of Transportation struggles to collect consistent data for analyzing and resolving transportation problems in a timely manner.
Recent advancements in the sensors integrated into smartphones have resulted in a more affordable method of data collection.
The developed app was evaluated by collecting data on the i70W highway connecting Columbia, Missouri, and Kansas City, Missouri.
arXiv Detail & Related papers (2021-06-20T17:56:12Z) - Emerging App Issue Identification via Online Joint Sentiment-Topic
Tracing [66.57888248681303]
We propose a novel emerging issue detection approach named MERIT.
Based on the AOBST model, we infer the topics negatively reflected in user reviews for one app version.
Experiments on popular apps from Google Play and Apple's App Store demonstrate the effectiveness of MERIT.
arXiv Detail & Related papers (2020-08-23T06:34:05Z) - Controllable Multi-Interest Framework for Recommendation [64.30030600415654]
We formalize the recommender system as a sequential recommendation problem.
We propose a novel controllable multi-interest framework for the sequential recommendation, called ComiRec.
Our framework has been successfully deployed on the offline Alibaba distributed cloud platform.
arXiv Detail & Related papers (2020-05-19T10:18:43Z) - Mobile Phone Usage Data for Credit Scoring [1.7205106391379026]
We use different classification algorithms to split customers into paying and non-paying ones using mobile data.
We found that with a dataset that consists of mobile data based only on 2,503 customers, we can predict credit risk.
arXiv Detail & Related papers (2020-02-28T09:32:11Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.