87 research outputs found
Competitive Facility Location under Random Utilities and Routing Constraints
In this paper, we study a facility location problem within a competitive
market context, where customer demand is predicted by a random utility choice
model. Unlike prior research, which primarily focuses on simple constraints
such as a cardinality constraint on the number of selected locations, we
introduce routing constraints that necessitate the selection of locations in a
manner that guarantees the existence of a tour visiting all chosen locations
while adhering to a specified tour length upper bound. Such routing constraints
find crucial applications in various real-world scenarios. The problem at hand
features a non-linear objective function, resulting from the utilization of
random utilities, together with complex routing constraints, making it
computationally challenging. To tackle this problem, we explore three types of
valid cuts, namely, outer-approximation and submodular cuts to handle the
nonlinear objective function, as well as sub-tour elimination cuts to address
the complex routing constraints. These lead to the development of two exact
solution methods: a nested cutting plane and nested branch-and-cut algorithms,
where these valid cuts are iteratively added to a master problem through two
nested loops. We also prove that our nested cutting plane method always
converges to optimality after a finite number of iterations. Furthermore, we
develop a local search-based metaheuristic tailored for solving large-scale
instances and show its pros and cons compared to exact methods. Extensive
experiments are conducted on problem instances of varying sizes, demonstrating
that our approach excels in terms of solution quality and computation time when
compared to other baseline approaches
Federated Few-shot Learning for Cough Classification with Edge Devices
Automatically classifying cough sounds is one of the most critical tasks for
the diagnosis and treatment of respiratory diseases. However, collecting a huge
amount of labeled cough dataset is challenging mainly due to high laborious
expenses, data scarcity, and privacy concerns. In this work, our aim is to
develop a framework that can effectively perform cough classification even in
situations when enormous cough data is not available, while also addressing
privacy concerns. Specifically, we formulate a new problem to tackle these
challenges and adopt few-shot learning and federated learning to design a novel
framework, termed F2LCough, for solving the newly formulated problem. We
illustrate the superiority of our method compared with other approaches on
COVID-19 Thermal Face & Cough dataset, in which F2LCough achieves an average
F1-Score of 86%. Our results show the feasibility of few-shot learning combined
with federated learning to build a classification model of cough sounds. This
new methodology is able to classify cough sounds in data-scarce situations and
maintain privacy properties. The outcomes of this work can be a fundamental
framework for building support systems for the detection and diagnosis of
cough-related diseases.Comment: 21 pages, 5 figure
The psychological impact of the COVID-19 epidemic among healthcare workers at the grassroots level in Vietnam
The COVID-19 pandemic has significantly affected the mental health of healthcare workers (HCWs). Therefore, an immediate priority is to monitor rates of mental health issues to understand related factors and inform interventions. The main purpose of this study was to evaluate the psychological and mental health impact of COVID-19 and some related factors among HCWs at the grassroots level in Vietnam. A cross-sectional study was conducted on 675 HCWs working at health facilities through questionnaires. The finding showed the rate of HCWs who were psychologically affected by the COVID-19 pandemic was 37.2%, of which 64.1% of HCWs were afraid to tell their families about the risk of exposure to COVID-19 at work. The 31.0% of HCWs had difficulty sleeping deeply/insomnia due to the COVID-19 epidemic. No statistically significant differences were found in the psychological impact of COVID-19 between HCW groups by age, gender, seniority, and professional qualifications. Some groups of HCWs were found to have poor psychological health. Our research suggests that during the COVID-19 pandemic, HCWs working in healthcare facilities experienced an increased psychological burden; psychological interventions for those at high risk and with common mental disorders should be included to reduce this burden and protect HCWs' mental health
Knowledge of tuberculosis among physicians working at community health stations in Vietnam
Tuberculosis (TB) remains a significant health problem worldwide, including in Vietnam, where around 174,000 newly diagnosed cases and 13,200 patients died in 2018. There are challenges in the diagnostic process, treatment, and follow-up. The physicians with knowledge of TB working at commune health stations play an essential role in this struggle. The primary purpose of this study was to evaluate knowledge of TB and related factors among physicians working at community health stations in the Northern provinces of Vietnam. A cross-sectional survey was implemented on 335 physicians working at community health stations in 5 Northern provinces in Vietnam from September 2019 to October 2020. The result showed that the TB knowledge of physicians was not good. There were some severe knowledge gaps concerning at-risk groups, the main symptoms of TB, sputum tests for both diagnosis and follow-up and management of attack therapy. The TB training participants had better TB knowledge than others (aOR=1.68; 95%CI: 1.047-2.712). This study underlines the importance of clinical experience and TB training to TB knowledge. We suggest that a TB training plan is required for physicians. Our survey results could inform the process of defining the physicians who work at community health stations' role in TB management in the future
A Multiple Choices Reading Comprehension Corpus for Vietnamese Language Education
Machine reading comprehension has been an interesting and challenging task in
recent years, with the purpose of extracting useful information from texts. To
attain the computer ability to understand the reading text and answer relevant
information, we introduce ViMMRC 2.0 - an extension of the previous ViMMRC for
the task of multiple-choice reading comprehension in Vietnamese Textbooks which
contain the reading articles for students from Grade 1 to Grade 12. This
dataset has 699 reading passages which are prose and poems, and 5,273
questions. The questions in the new dataset are not fixed with four options as
in the previous version. Moreover, the difficulty of questions is increased,
which challenges the models to find the correct choice. The computer must
understand the whole context of the reading passage, the question, and the
content of each choice to extract the right answers. Hence, we propose the
multi-stage approach that combines the multi-step attention network (MAN) with
the natural language inference (NLI) task to enhance the performance of the
reading comprehension model. Then, we compare the proposed methodology with the
baseline BERTology models on the new dataset and the ViMMRC 1.0. Our
multi-stage models achieved 58.81% by Accuracy on the test set, which is 5.34%
better than the highest BERTology models. From the results of the error
analysis, we found the challenge of the reading comprehension models is
understanding the implicit context in texts and linking them together in order
to find the correct answers. Finally, we hope our new dataset will motivate
further research in enhancing the language understanding ability of computers
in the Vietnamese language
On the Out of Distribution Robustness of Foundation Models in Medical Image Segmentation
Constructing a robust model that can effectively generalize to test samples
under distribution shifts remains a significant challenge in the field of
medical imaging. The foundational models for vision and language, pre-trained
on extensive sets of natural image and text data, have emerged as a promising
approach. It showcases impressive learning abilities across different tasks
with the need for only a limited amount of annotated samples. While numerous
techniques have focused on developing better fine-tuning strategies to adapt
these models for specific domains, we instead examine their robustness to
domain shifts in the medical image segmentation task. To this end, we compare
the generalization performance to unseen domains of various pre-trained models
after being fine-tuned on the same in-distribution dataset and show that
foundation-based models enjoy better robustness than other architectures. From
here, we further developed a new Bayesian uncertainty estimation for frozen
models and used them as an indicator to characterize the model's performance on
out-of-distribution (OOD) data, proving particularly beneficial for real-world
applications. Our experiments not only reveal the limitations of current
indicators like accuracy on the line or agreement on the line commonly used in
natural image applications but also emphasize the promise of the introduced
Bayesian uncertainty. Specifically, lower uncertainty predictions usually tend
to higher out-of-distribution (OOD) performance.Comment: Advances in Neural Information Processing Systems (NeurIPS) 2023,
Workshop on robustness of zero/few-shot learning in foundation model
When Intervention Becomes Imperative: A Case Report of Spontaneous Vulvar Edema During Pregnancy
Spontaneous idiopathic vulvar edema during the second trimester is a rare condition. The approach to managing this condition involves relieving symptoms, identifying underlying causes, and implementing appropriate treatment. Managing such cases during pregnancy is challenging because of concerns for potential adverse fetal outcomes. Conservative management expects the condition to be relieved spontaneously postpartum, whereas invasive treatment offers a more rapid resolution. Treatment choices are controversial because each method has its pros and cons and influences the delivery process to a certain extent. Surgical drainage becomes a viable option when patients are not responsive to medications. We report a case of spontaneous massive vulvar edema in a 22-year-old primigravida in her 23rd week of pregnancy. After ruling out other notable causes of vulvar edema, we decided to intervene using an invasive procedure because she complained of progressive symptoms and discomfort. Subsequently, the edema subsided postprocedure, and the patient experienced successful labor with no complications. This report aims to alert clinicians that drainage attempts should be considered in pregnant patients with worsening symptoms
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