GenRec: A Flexible Data Generator for Recommendations
- URL: http://arxiv.org/abs/2407.16594v1
- Date: Tue, 23 Jul 2024 15:53:17 GMT
- Title: GenRec: A Flexible Data Generator for Recommendations
- Authors: Erica Coppolillo, Simone Mungari, Ettore Ritacco, Giuseppe Manco,
- Abstract summary: GenRec is a novel framework for generating synthetic user-item interactions that exhibit realistic and well-known properties.
The framework is based on a generative process based on latent factor modeling.
- Score: 1.384948712833979
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: The scarcity of realistic datasets poses a significant challenge in benchmarking recommender systems and social network analysis methods and techniques. A common and effective solution is to generate synthetic data that simulates realistic interactions. However, although various methods have been proposed, the existing literature still lacks generators that are fully adaptable and allow easy manipulation of the underlying data distributions and structural properties. To address this issue, the present work introduces GenRec, a novel framework for generating synthetic user-item interactions that exhibit realistic and well-known properties observed in recommendation scenarios. The framework is based on a stochastic generative process based on latent factor modeling. Here, the latent factors can be exploited to yield long-tailed preference distributions, and at the same time they characterize subpopulations of users and topic-based item clusters. Notably, the proposed framework is highly flexible and offers a wide range of hyper-parameters for customizing the generation of user-item interactions. The code used to perform the experiments is publicly available at https://anonymous.4open.science/r/GenRec-DED3.
Related papers
- A Review of Modern Recommender Systems Using Generative Models (Gen-RecSys) [57.30228361181045]
This survey connects key advancements in recommender systems using Generative Models (Gen-RecSys)
It covers: interaction-driven generative models; the use of large language models (LLM) and textual data for natural language recommendation; and the integration of multimodal models for generating and processing images/videos in RS.
Our work highlights necessary paradigms for evaluating the impact and harm of Gen-RecSys and identifies open challenges.
arXiv Detail & Related papers (2024-03-31T06:57:57Z) - Don't be so negative! Score-based Generative Modeling with
Oracle-assisted Guidance [12.039478020062608]
We develop a new denoising diffusion probabilistic modeling (DDPM) methodology, Gen-neG.
Our approach builds on generative adversarial networks (GANs) and discriminator guidance in diffusion models to guide the generation process.
We empirically establish the utility of Gen-neG in applications including collision avoidance in self-driving simulators and safety-guarded human motion generation.
arXiv Detail & Related papers (2023-07-31T07:52:00Z) - TSGM: A Flexible Framework for Generative Modeling of Synthetic Time Series [61.436361263605114]
Time series data are often scarce or highly sensitive, which precludes the sharing of data between researchers and industrial organizations.
We introduce Time Series Generative Modeling (TSGM), an open-source framework for the generative modeling of synthetic time series.
arXiv Detail & Related papers (2023-05-19T10:11:21Z) - Federated Privacy-preserving Collaborative Filtering for On-Device Next
App Prediction [52.16923290335873]
We propose a novel SeqMF model to solve the problem of predicting the next app launch during mobile device usage.
We modify the structure of the classical matrix factorization model and update the training procedure to sequential learning.
One more ingredient of the proposed approach is a new privacy mechanism that guarantees the protection of the sent data from the users to the remote server.
arXiv Detail & Related papers (2023-02-05T10:29:57Z) - DORE: Document Ordered Relation Extraction based on Generative Framework [56.537386636819626]
This paper investigates the root cause of the underwhelming performance of the existing generative DocRE models.
We propose to generate a symbolic and ordered sequence from the relation matrix which is deterministic and easier for model to learn.
Experimental results on four datasets show that our proposed method can improve the performance of the generative DocRE models.
arXiv Detail & Related papers (2022-10-28T11:18:10Z) - HyperImpute: Generalized Iterative Imputation with Automatic Model
Selection [77.86861638371926]
We propose a generalized iterative imputation framework for adaptively and automatically configuring column-wise models.
We provide a concrete implementation with out-of-the-box learners, simulators, and interfaces.
arXiv Detail & Related papers (2022-06-15T19:10:35Z) - Synthetic Benchmarks for Scientific Research in Explainable Machine
Learning [14.172740234933215]
We release XAI-Bench: a suite of synthetic datasets and a library for benchmarking feature attribution algorithms.
Unlike real-world datasets, synthetic datasets allow the efficient computation of conditional expected values.
We demonstrate the power of our library by benchmarking popular explainability techniques across several evaluation metrics and identifying failure modes for popular explainers.
arXiv Detail & Related papers (2021-06-23T17:10:21Z) - Partially Conditioned Generative Adversarial Networks [75.08725392017698]
Generative Adversarial Networks (GANs) let one synthesise artificial datasets by implicitly modelling the underlying probability distribution of a real-world training dataset.
With the introduction of Conditional GANs and their variants, these methods were extended to generating samples conditioned on ancillary information available for each sample within the dataset.
In this work, we argue that standard Conditional GANs are not suitable for such a task and propose a new Adversarial Network architecture and training strategy.
arXiv Detail & Related papers (2020-07-06T15:59:28Z)
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.