Nam Dinh Vo

Nam Dinh Vo
FPT University · Computer Science

Ph.D. in Computer Science and Engineering

About

8
Publications
2,679
Reads
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25
Citations
Introduction
Nam D. Vo is a postdoctoral researcher at Knowledge Engineering and Storytelling Laboratory, Chung-Ang University since September 2020. He received a B.S. degree in Information Technology from Danang University, Vietnam, in 2005; an M.S. degree from Nice Sophia Antipolis University, France in 2011, and a Ph.D. degree in Application Software from Chung-Ang University, South Korea, in August 2020. His research interests include cross-domain recommendation systems, user pattern detection.
Additional affiliations
March 2021 - March 2021
University of Da nang
Position
  • Faculty Member
September 2020 - February 2021
Chung-Ang University
Position
  • PostDoc Position
January 2007 - August 2017
University of Danang
Position
  • Faculty Member
Education
August 2017 - August 2020
Chung-Ang University
Field of study
  • Computer Science
September 2009 - August 2011
University of Nice Sophia Antipolis
Field of study
  • Computer Science

Publications

Publications (8)
Chapter
Since the passage of Law on Tourism in 2005 and its amendment in 2017, Vietnam has increasingly invested in the tourism sector as a spearhead industry of the economy to turn Vietnam into a destination for the mass tourist. Along with tourism development, the negative impacts of tourism activities on the environment and society have been acknowledge...
Article
Full-text available
This paper addresses the tradeoff problem between hit ratio and content quality in edge caching systems for multiuser adaptive bitrate streaming (ABS) services. A dynamic policy for cache decision and quality level selection for each ABS content during every cache cycle is proposed. Achieving this policy is NP-complete. For this, the considered pro...
Article
Full-text available
The previous recommendation system applied the matrix factorization collaborative filtering (MFCF) technique to only single domains. Due to data sparsity, this approach has a limitation in overcoming the cold-start problem. Thus, in this study, we focus on discovering latent features from domains to understand the relationships between domains (cal...
Article
Full-text available
Corporate social responsibility (CSR) has been receiving increasing attention in the international community since the Sustainable Development Goals (SDGs) emphasise effective corporate partnership. CSR is one of the most critical instruments linking corporate activities to the SDGs. Among various stakeholders, consumers can play an essential role...
Conference Paper
Full-text available
Since the passage of Law on Tourism in 2005 and its amendment in 2017, Vietnam has increasingly invested in the tourism sector as a spearhead industry of the economy to turn Vietnam into a destination for the mass tourist. Along with tourism development, the negative impacts of tourism activities on the environment and society have been acknowledge...

Network

Cited By

Projects

Projects (3)
Project
Using data of the rainfall amount from 2010 to 2020 in 15 meteorological regions throughout the country to predict rainfall in Vietnam.
Project
- Identify a system of criteria for corporate governance quality assessment following international standards applicable to Vietnam's state-owned enterprises. - Measuring the quality of corporate governance in state-owned enterprises in Vietnam today according to the integrated rating scale - Evaluating the impact of corporate governance on the performance of state-owned enterprises - Identifying key issues that need improvement in corporate governance in state-owned enterprises - Proposing solutions to improve the quality of corporate governance in state-owned enterprises in Vietnam
Project
By using the implicit stochastic gradient descent algorithm to optimize the objective function for prediction, multiple matrices from domains will be consolidated inside the cross-domain recommendation system (CDRS).