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Auteurs principaux: Flicke, Markus, Angrabeit, Glenn, Iyengar, Madhav, Protsenko, Vitalii, Shakun, Illia, Cicvaric, Jovan, Kargi, Bora, He, Haoyu, Schuler, Lukas, Scholz, Lewin, Agnihotri, Kavyanjali, Cao, Yong, Geiger, Andreas
Format: Preprint
Publié: 2025
Sujets:
Accès en ligne:https://arxiv.org/abs/2504.08385
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author Flicke, Markus
Angrabeit, Glenn
Iyengar, Madhav
Protsenko, Vitalii
Shakun, Illia
Cicvaric, Jovan
Kargi, Bora
He, Haoyu
Schuler, Lukas
Scholz, Lewin
Agnihotri, Kavyanjali
Cao, Yong
Geiger, Andreas
author_facet Flicke, Markus
Angrabeit, Glenn
Iyengar, Madhav
Protsenko, Vitalii
Shakun, Illia
Cicvaric, Jovan
Kargi, Bora
He, Haoyu
Schuler, Lukas
Scholz, Lewin
Agnihotri, Kavyanjali
Cao, Yong
Geiger, Andreas
contents Scholar Inbox is a new open-access platform designed to address the challenges researchers face in staying current with the rapidly expanding volume of scientific literature. We provide personalized recommendations, continuous updates from open-access archives (arXiv, bioRxiv, etc.), visual paper summaries, semantic search, and a range of tools to streamline research workflows and promote open research access. The platform's personalized recommendation system is trained on user ratings, ensuring that recommendations are tailored to individual researchers' interests. To further enhance the user experience, Scholar Inbox also offers a map of science that provides an overview of research across domains, enabling users to easily explore specific topics. We use this map to address the cold start problem common in recommender systems, as well as an active learning strategy that iteratively prompts users to rate a selection of papers, allowing the system to learn user preferences quickly. We evaluate the quality of our recommendation system on a novel dataset of 800k user ratings, which we make publicly available, as well as via an extensive user study. https://www.scholar-inbox.com/
format Preprint
id arxiv_https___arxiv_org_abs_2504_08385
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Scholar Inbox: Personalized Paper Recommendations for Scientists
Flicke, Markus
Angrabeit, Glenn
Iyengar, Madhav
Protsenko, Vitalii
Shakun, Illia
Cicvaric, Jovan
Kargi, Bora
He, Haoyu
Schuler, Lukas
Scholz, Lewin
Agnihotri, Kavyanjali
Cao, Yong
Geiger, Andreas
Computation and Language
Artificial Intelligence
Information Retrieval
Scholar Inbox is a new open-access platform designed to address the challenges researchers face in staying current with the rapidly expanding volume of scientific literature. We provide personalized recommendations, continuous updates from open-access archives (arXiv, bioRxiv, etc.), visual paper summaries, semantic search, and a range of tools to streamline research workflows and promote open research access. The platform's personalized recommendation system is trained on user ratings, ensuring that recommendations are tailored to individual researchers' interests. To further enhance the user experience, Scholar Inbox also offers a map of science that provides an overview of research across domains, enabling users to easily explore specific topics. We use this map to address the cold start problem common in recommender systems, as well as an active learning strategy that iteratively prompts users to rate a selection of papers, allowing the system to learn user preferences quickly. We evaluate the quality of our recommendation system on a novel dataset of 800k user ratings, which we make publicly available, as well as via an extensive user study. https://www.scholar-inbox.com/
title Scholar Inbox: Personalized Paper Recommendations for Scientists
topic Computation and Language
Artificial Intelligence
Information Retrieval
url https://arxiv.org/abs/2504.08385