5,732 research outputs found
Brief information on the doctoral thesis Governing function of the Socialist Republic of Viet Nam
The study systematically reviewed research related to the research topic, illustrated problems that have been studied and identified new, arising issues of the economic management function of the state in Vietnam that need to be researched and addressed now and in the future
Economic management function of the state of the socialist Republic of Vietnam
Mankind history has recorded the birth, development, survival struggle, and decline of various forms of states. Along with that process, the role and function of the State in socio-economic development have been strongly highlighted, represented not only social classes but also the characteristics of institutions, structures, and organizations of society in each period, and in accordance with the development of human cognition. The state in a socialist-oriented market economy has similar connotations and differences in comparison with states in general. However, due to the lack of clear definitions to distinguish the two concepts of "economic function" and "economic management function," the design, implementation, monitoring, and evaluation of the effectiveness of state management policies are ineffective, as right now there exist many fuzzy and overlapping gaps in theory. Not only that, the gap between the designed policy and the actualization of policy decisions is quite far from reality. Therefore, from the time the policies are established and issued until those policies take effects, there are many issues worth discussing
Knowledge Creation And Green Entrepreneurship: A Study Of Two Vietnamese Green Firms
This paper aims to advance the understanding and practice of knowledge-based
management in Vietnam by studying two Vietnamese agricultural companies. It provides
illustrative examples of how knowledge-based management, pursuing a vision that fosters
creativity and innovation by employees, could ultimately fulfil the profitability objective
of the business and at the same time add value to the community’s quality of life. Using
the SECI model as the parameter for analysis, we found that knowledge creation
processes were affected by a combination of leadership, teamwork and Ba, corporate
culture, and human resource management. Our conclusion emphasises the need for
future research to further examine the practice of knowledge-based management in
cross-industry segments in Vietnam and in other countries with similar conditions
Exotic States Emerged By Spin-Orbit Coupling, Lattice Modulation and Magnetic Field in Lieb Nano-ribbons
The Lieb nano-ribons with the spin-orbit coupling, the lattice modulation and the magnetic field are exactly studied. They are constructed from the Lieb lattice with two open boundaries in a direction. The interplay between the spin-orbit coupling, the lattice modulation and the magnetic field emerges various exotic ground states. With certain conditions of the spin-orbit coupling, the lattice modulation, the magnetic field and filling the ground state becomes half metallic or half topological. In the half metallic ground state, one spin component is metallic, while the other spin component is insulating. In the half topological ground state, one spin component is topological, while the other spin component is topological trivial. The model exhibits very rich phase diagram
Enhance Incomplete Utterance Restoration by Joint Learning Token Extraction and Text Generation
This paper introduces a model for incomplete utterance restoration (IUR).
Different from prior studies that only work on extraction or abstraction
datasets, we design a simple but effective model, working for both scenarios of
IUR. Our design simulates the nature of IUR, where omitted tokens from the
context contribute to restoration. From this, we construct a Picker that
identifies the omitted tokens. To support the picker, we design two label
creation methods (soft and hard labels), which can work in cases of no
annotation of the omitted tokens. The restoration is done by using a Generator
with the help of the Picker on joint learning. Promising results on four
benchmark datasets in extraction and abstraction scenarios show that our model
is better than the pretrained T5 and non-generative language model methods in
both rich and limited training data settings. The code will be also available.Comment: This is the early version of the paper accepted by NAACL 2022. It
includes 10 pages, 2 figure
HYBRID END-TO-END APPROACH INTEGRATING ONLINE LEARNING WITH FACE-IDENTIFICATION SYSTEM
To date, facial recognition has been one of the most intriguing, interesting research topics over years. It requires some specific face-based algorithms such as facial detection, facial alignment, facial representation, and facial recognition as well; however, all of these algorithms derive from heavy deep learning architectures that cause limitations for development, scalability, flawed accuracy, and deployment into publicity with mere CPU servers. It also calls for large datasets containing hundreds of thousands of records for training purposes. In this paper, we propose a full pipeline for an effective face recognition application which only uses a small Vietnamese celebrity dataset and CPU for training that can solve the leakage of data and the need for GPU devices. It is based on a face vector-to-string tokens algorithm then saves face’s properties into Elasticsearch for future retrieval, so the problem of online learning in Facial Recognition is also tackled. Comparison with another popular algorithm on the dataset, our proposed pipeline not only outweighs the accuracy counterpart, but it also achieves a very speedy time inference for a real-time face recognition application
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