With the advancement of the digital era, rating data is ubiquitous on websites such as Amazon and Yelp. Customers can gain valuable information about products and services from rating data, which helps them make decisions. Besides, real-world systems can often be modeled as networks, from social media and email communications to protein-protein...
-
December 15, 2022 (v1)PublicationUploaded on: April 14, 2023
-
October 5, 2022 (v1)Conference paper
With the significant increase of interactions between individuals through numeric means, the clustering of vertex in graphs has become a fundamental approach for analysing large and complex networks. We propose here the deep latent position model (DeepLPM), an end-to-end clustering approach which combines the widely used latent position model...
Uploaded on: December 4, 2022 -
July 17, 2020 (v1)Conference paper
We introduce a deep latent recommender system (deepLTRS) for imputing missing ratings based on the observed ratings and product reviews. Our approach extends a standard variational autoen-coder architecture associated with deep latent variable models in order to account for both the ordinal entries and the text entered by users to score and...
Uploaded on: December 4, 2022 -
April 4, 2022 (v1)Publication
With the significant increase of interactions between individuals through numeric means, clustering of vertices in graphs has become a fundamental approach for analyzing large and complex networks. In this work, we propose the deep latent position model (DeepLPM), an end-to-end generative clustering approach which combines the widely used...
Uploaded on: December 3, 2022 -
January 17, 2023 (v1)Publication
Most of existing graph neural networks (GNNs) developed for the prevalent text-rich networks typically treat texts as node attributes. This kind of approach unavoidably results in the loss of important semantic structures and restricts the representational power of GNNs. In this work, we introduce a document similarity-based graph convolutional...
Uploaded on: February 22, 2023 -
December 2021 (v1)Journal article
We introduce a deep latent recommender system named deepLTRS in order to provide users with high quality recommendations based on observed user ratings \textit{and} texts of product reviews. The underlying motivation is that, when a user scores only a few products, the texts used in the reviews represent a significant source of information,...
Uploaded on: December 4, 2022