• 제목/요약/키워드: FL Framework

검색결과 11건 처리시간 0.02초

Toward a Conceptual Clarification of Foreign Language Anxiety

  • Kim, Young-Sang
    • 영어어문교육
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    • 제11권4호
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    • pp.1-20
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    • 2005
  • Despite the noteworthy increase in the number of FL anxiety studies, inconsistencies associated with the effects of FL anxiety on language learner performance have been reported in literature. Such conflicting results seem to be attributable in part to unstable conceptualization of the FL anxiety construct and its measure. This paper purported to address the emerging call for a theoretical clarification of the construct at hand as a preface to a clear picture of language anxiety on a conceptual ground. This paper not only covers aspects of general anxiety from psychological perspectives, but examines how FL anxiety and its associated concepts have been conceptualized in the literature. Inconsistent results that pertain to FL learning were also delineated. Given the drawbacks found in the exiting theories of FL anxiety, several points were taken into account for a refinement of the conceptual framework. This attempt will hopefully shed new light on the construct per se and prove conducive to the development of the field of English education.

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DRM-FL: Cross-Silo Federated Learning 접근법의 프라이버시 보호를 위한 분산형 랜덤화 메커니즘 (DRM-FL: A Decentralized and Randomized Mechanism for Privacy Protection in Cross-Silo Federated Learning Approach)

  • 무함마드 필다우스;초느에진랏;마리즈아길랄;이경현
    • 한국정보처리학회:학술대회논문집
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    • 한국정보처리학회 2022년도 춘계학술발표대회
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    • pp.264-267
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    • 2022
  • Recently, federated learning (FL) has increased prominence as a viable approach for enhancing user privacy and data security by allowing collaborative multi-party model learning without exchanging sensitive data. Despite this, most present FL systems still depend on a centralized aggregator to generate a global model by gathering all submitted models from users, which could expose user privacy and the risk of various threats from malicious users. To solve these issues, we suggested a safe FL framework that employs differential privacy to counter membership inference attacks during the collaborative FL model training process and empowers blockchain to replace the centralized aggregator server.

푸드 리터러시에 대한 개념 정립과 적용 방안 모색: 주제범위 문헌고찰을 통하여 (Defining Food Literacy and Its Application to Nutrition Interventions: A scoping Review)

  • 유혜림;조은빈;김기랑;박소현
    • 대한지역사회영양학회지
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    • 제26권2호
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    • pp.77-92
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    • 2021
  • Objectives: Food literacy (FL) can be an important concept that embodies the nutritional capabilities of individuals. The purpose of this study was to introduce the definition and core elements of FL from previous literature, to summarize measurement tools and intervention programs with FL, and to suggest the direction of future research and programs to integrate the concept of FL. Methods: The literature review was conducted through PubMed and Google Scholar databases by combining the search term 'food literacy' with 'definition', 'measurement', 'questionnaire', 'intervention', and 'program'. Among the 94 papers primarily reviewed 31 manuscripts that suited the purpose of the study were used for analyses. Results: There is no consensus on the definition of FL that encompasses the multidimensional aspects of the concept. The definitions of FL were slightly different depending on the authors, and the interpretation of the core elements also varied. Based on the review, we propose a framework of FL that is in line with the current discussion among international researchers. This focuses on the core elements adapted from health literacy, namely functional, interactive, and critical FL. Specifically, we suggest some detailed elements for interactive and critical FL, which were often the subject of divergent views among researchers in previous literature. We found that most of the tools in the reviewed literature provided information on validity and reliability and were developed for a specific target population. Also, most of the tools were focused on functional FL. Similarly, most of the interventions targeted functional FL. Conclusions: This study reviewed the definition and core elements of FL, available measurement tools, and intervention programs using validated tools. We propose the development of tools with sound reliability and validity that encompass the three core elements of FL for different age groups. This will help to understand whether improving food literacy can translate into better nutritional intake and health status among individuals and communities.

Clustering-Based Federated Learning for Enhancing Data Privacy in Internet of Vehicles

  • Zilong Jin;Jin Wang;Lejun Zhang
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • 제18권6호
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    • pp.1462-1477
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    • 2024
  • With the evolving complexity of connected vehicle features, the volume and diversity of data generated during driving continue to escalate. Enabling data sharing among interconnected vehicles holds promise for improving users' driving experiences and alleviating traffic congestion. Yet, the unintentional disclosure of users' private information through data sharing poses a risk, potentially compromising the interests of vehicle users and, in certain cases, endangering driving safety. Federated learning (FL) is a newly emerged distributed machine learning paradigm, which is expected to play a prominent role for privacy-preserving learning in autonomous vehicles. While FL holds significant potential to enhance the architecture of the Internet of Vehicles (IoV), the dynamic mobility of vehicles poses a considerable challenge to integrating FL with vehicular networks. In this paper, a novel clustered FL framework is proposed which is efficient for reducing communication and protecting data privacy. By assessing the similarity among feature vectors, vehicles are categorized into distinct clusters. An optimal vehicle is elected as the cluster head, which enhances the efficiency of personalized data processing and model training while reducing communication overhead. Simultaneously, the Local Differential Privacy (LDP) mechanism is incorporated during local training to safeguard vehicle privacy. The simulation results obtained from the 20newsgroups dataset and the MNIST dataset validate the effectiveness of the proposed scheme, indicating that the proposed scheme can ensure data privacy effectively while reducing communication overhead.

서울 도심의 공간 표상에 대한 젠더문화론적 독해 - '검경(speculum)' 으로 보며 '산보하기(fl$\check{a}$neria)' - (A Reading on the Spatial Representations of Urban Center in Seoul from Cultural Perspective of Gender : 'Fl$\check{a}$nerie' Seeing with Speculum)

  • 이수안
    • 대한지리학회지
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    • 제44권3호
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    • pp.282-300
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    • 2009
  • 이 논문은 서울의 도심을 근대성과 후기근대성이 공존하는 도시공간으로서의 문화텍스트로 상정하고 젠더문화연구의 관점에서 독해하기 위해 기획되었다. 물리적 공간과 사회적 주체 간의 관계가 어떻게 형성되어 왔는지를 주요 논제로 상던 기존의 도시사회학과 인문지리학적 논의를 배경으로 하여, 근대성이 관철되는 과정을 거치면서 형성된 서울이라는 도시 공간의 성별적 표상과 공간의 성별 분할을 파악하였다. 이미지성과 가독성을 중심으로 한 서울의 공간적 해석의 분석틀은 성별분업과 영역의 이분법, 여성성/남성성의 이분법적 재현. 그리고 근대성과 후기근대성이 이들과 조응하고 교차하는 방식 등으로 구성되었다. 이 논문에서는 Benjamin의 '산보하기(fl$\check{a}$nerie)' 의 도시문화 해석과 음미의 방식은 수용하되 이를 페미니스트 문화독해 방식으로 전화하여 은유적 방법론으로 차용하기 위하여 lrigaray의 '검경(speculum)으로 들여다보기'를 도입함으로써 도시공간분석의 새로운 해석적 방법론으로 제시하고자 시도하였다.

Who has a high level of food literacy, and who does not?: a qualitative study of college students in South Korea

  • Hyelim Yoo;Eunbin Jo;Hyeongyeong Lee;Eunji Ko;Eunjin Jang;Jiwon Sim;Sohyun Park
    • Nutrition Research and Practice
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    • 제17권6호
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    • pp.1155-1169
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    • 2023
  • BACKGROUND/OBJECTIVES: Unhealthy food choices among young adults are common globally, and the incidence of chronic diseases, such as obesity, is rising. Food literacy (FL) is important for improving and maintaining individual health in a rapidly changing food environment and can form the basis for following a sustainable diet. Therefore, it is essential to improve FL among young adults, particularly college students, who are in the formative years of their lifelong food habits. This study examined the facilitators and barriers of FL and related dietary behavior among college students in South Korea. SUBJECTS/METHODS: This study recruited 25 college students with different residence types using convenience and snowball sampling. In-person, telephone, and video interviews were conducted from March to November 2021. The interview data were analyzed using framework analysis based on the socio-ecological model. RESULTS: At the individual level, prior good experiences with food were the most frequently mentioned facilitator. In contrast, the major barriers were a lack of knowledge, financial hardship, irregular schedules, and academic stress. At the interpersonal level, the influences of family and peers, such as early exposure to healthy eating habits and opportunities to have easy accessibility to farms and farming, are major facilitators, but the lack of a sense of community was the major barrier. At the environmental level, the major barriers were unfavorable food environments at home and in neighborhoods, such as the absence of kitchens in housing and large packaging of produce at markets. CONCLUSIONS: Many factors affected the students' FL and related healthy eating practices. These findings suggest that a campus-based FL program should be developed by reflecting on these facilitators and barriers.

증류 기반 연합 학습에서 로짓 역전을 통한 개인 정보 취약성에 관한 연구 (A Survey on Privacy Vulnerabilities through Logit Inversion in Distillation-based Federated Learning)

  • 윤수빈;조윤기;백윤흥
    • 한국정보처리학회:학술대회논문집
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    • 한국정보처리학회 2024년도 춘계학술발표대회
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    • pp.711-714
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    • 2024
  • In the dynamic landscape of modern machine learning, Federated Learning (FL) has emerged as a compelling paradigm designed to enhance privacy by enabling participants to collaboratively train models without sharing their private data. Specifically, Distillation-based Federated Learning, like Federated Learning with Model Distillation (FedMD), Federated Gradient Encryption and Model Sharing (FedGEMS), and Differentially Secure Federated Learning (DS-FL), has arisen as a novel approach aimed at addressing Non-IID data challenges by leveraging Federated Learning. These methods refine the standard FL framework by distilling insights from public dataset predictions, securing data transmissions through gradient encryption, and applying differential privacy to mask individual contributions. Despite these innovations, our survey identifies persistent vulnerabilities, particularly concerning the susceptibility to logit inversion attacks where malicious actors could reconstruct private data from shared public predictions. This exploration reveals that even advanced Distillation-based Federated Learning systems harbor significant privacy risks, challenging the prevailing assumptions about their security and underscoring the need for continued advancements in secure Federated Learning methodologies.

Edge Computing Model based on Federated Learning for COVID-19 Clinical Outcome Prediction in the 5G Era

  • Ruochen Huang;Zhiyuan Wei;Wei Feng;Yong Li;Changwei Zhang;Chen Qiu;Mingkai Chen
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • 제18권4호
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    • pp.826-842
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    • 2024
  • As 5G and AI continue to develop, there has been a significant surge in the healthcare industry. The COVID-19 pandemic has posed immense challenges to the global health system. This study proposes an FL-supported edge computing model based on federated learning (FL) for predicting clinical outcomes of COVID-19 patients during hospitalization. The model aims to address the challenges posed by the pandemic, such as the need for sophisticated predictive models, privacy concerns, and the non-IID nature of COVID-19 data. The model utilizes the FATE framework, known for its privacy-preserving technologies, to enhance predictive precision while ensuring data privacy and effectively managing data heterogeneity. The model's ability to generalize across diverse datasets and its adaptability in real-world clinical settings are highlighted by the use of SHAP values, which streamline the training process by identifying influential features, thus reducing computational overhead without compromising predictive precision. The study demonstrates that the proposed model achieves comparable precision to specific machine learning models when dataset sizes are identical and surpasses traditional models when larger training data volumes are employed. The model's performance is further improved when trained on datasets from diverse nodes, leading to superior generalization and overall performance, especially in scenarios with insufficient node features. The integration of FL with edge computing contributes significantly to the reliable prediction of COVID-19 patient outcomes with greater privacy. The research contributes to healthcare technology by providing a practical solution for early intervention and personalized treatment plans, leading to improved patient outcomes and efficient resource allocation during public health crises.

연합학습 개방형 플랫폼의 발전과 문제점에 대한 체계적 비교 분석 (Advances and Issues in Federated Learning Open Platforms: A Systematic Comparison and Analysis)

  • 김진수;양세모;이강윤;이광기
    • 인터넷정보학회논문지
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    • 제24권4호
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    • pp.1-13
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    • 2023
  • 연합학습이 현대 인공지능 연구에 큰 패러다임을 가지고 오면서 다양한 분야의 연구에서 연합학습을 접목시키기 위한 노력을 하고 있다. 하지만 연합학습 적용을 위한 연구자들은 자신의 상황과 목적에 맞는 연합학습 프레임워크와 벤치마크 툴을 선택해야 하는 문제에 직면한다. 본 연구는 실제 연합학습을 적용하는 연구자의 상황을 고려한 연합학습 프레임워크 및 벤치마크 툴의 선택 가이드라인 제시를 목표로 한다. 특히, 본 연구에서는 3가지의 주요한 기여점이 존재한다. 첫번째, 연합학습을 적용하는 연구자의 상황을 연합학습의 목표와 결합하여 일반화하고, 각 상황에 적합한 연합학습 프레임워크의 선택 가이드라인을 제안한다. 두번째, 연구자에게 연합학습 프레임워크를 각각의 특징과 성능비교를 통해 선택의 적합성을 보여준다. 마지막으로, 현존하는 연합학습 프레임워크의 한계와 실세계 연합학습 운영을 위한 방안, 특히 생명주기 관리에 대한 플랫폼의 구조에 대해 제안한다.

항공기 주위 난류 유동장 해석 (TURBULENT FLOW SIMULATIONS ABOUT THE AIRCRAFT CONFIGURATION)

  • 김윤식;박수형;권장혁
    • 한국전산유체공학회지
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    • 제10권4호통권31호
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    • pp.39-50
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    • 2005
  • An application of the KFLOW3D code which has been developed at KAIST is presented. This paper briefly describes the underlying methodology and summarizes the results for the DLR-F6 transport configuration recently presented in the second AIAA CFD Drag Prediction Workshop held in Orlando, FL, June 2003. KFLOW3D is a parallelized Reynolds averaged Navier-Stokes solver for multi-block structured grids. For the present computations, 2-equation k-$\omega$ WD+ nonlinear eddy viscosity model is used. The emphasis of the paper is placed on the implementation of the k-$\omega$ WD+ model in the multigrid framework and practicality of KFLOW3D for accurately predicting not only the integrated aerodynamic property such as the drag coefficient but pressure distributions.