ResearchGuide Logo

Chat support

Advanced search ?

Discover the optimal journal based on multiple criteria or locate authors along with their published articles and the corresponding journals.

Publisher

* You can search a publisher or tap the name directly

Subject Area

* You can search a subject area or tap the name directly

Open Acess

Quartille





Data Science and Engineering

VERIFIED JOURNAL
You want to contribute ? Login first and send us the Journal infos you think is correct.
We would be pleased to have your collaboration

This journal is included in the ResearchGuide whitelist of reputable titles. Learn more here.

JOURNAL INFORMATION
Publisher Springer Berlin
Open Access NO
Quartile Q1
Citation Count 368
P-ISSN 2364-1541
E-ISSN 2364-1185
Categories Computational Mechanics, Computer Science Applications
Area Computer Science, Engineering
Region Western Europe
Country Germany
Summary

  1. Data Science and Engineering is published by Springer Berlin
  2. It is not an oppen access journal
  3. The Subject Area : Computer Science; Engineering

Latest Articles published

Last updated: 15/09/2024

Graph-Enhanced Prompt Learning for Personalized Review Generation


Last updated: 15/09/2024

An Overview Based on the Overall Architecture of Traffic Forecasting


Last updated: 15/09/2024

Category-Level Contrastive Learning for Unsupervised Hashing in Cross-Modal Retrieval


Last updated: 15/09/2024

Multi-view Heterogeneous Graph Neural Networks for Node Classification


Last updated: 15/09/2024

Extract Implicit Semantic Friends and Their Influences from Bipartite Network for Social Recommendation


Last updated: 15/09/2024

Channel-Enhanced Contrastive Cross-Domain Sequential Recommendation


Last updated: 15/09/2024

Decoupling Anomaly Discrimination and Representation Learning: Self-supervised Learning for Anomaly Detection on Attributed Graph


Last updated: 16/06/2024

Graph Neural Network-Based Short‑Term Load Forecasting with Temporal Convolution


Last updated: 16/06/2024

A Meta-adversarial Framework for Cross-Domain Cold-Start Recommendation


Last updated: 16/06/2024

Efficient Top-k Frequent Itemset Mining on Massive Data