• 제목/요약/키워드: unbalanced data

검색결과 325건 처리시간 0.024초

ISRMC-MAC: Implementable Single-Radio, Multi-Channel MAC Protocol for WBANs

  • Cho, Kunryun;Jeon, Seokhee;Cho, Jinsung;Lee, Ben
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • 제10권3호
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    • pp.1052-1070
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    • 2016
  • Wireless Body Area Networks (WBANs) have received a lot of attention as a promising technology for medical and healthcare applications. A WBAN should guarantee energy efficiency, data reliability, and low data latency because it uses tiny sensors that have limited energy and deals with medical data that needs to be timely and correctly transferred. To satisfy this requirement, many multi-radio multi-channel MAC protocols have been proposed, but these cannot be implemented on current off-the-shelf sensor nodes because they do not support multi-radio transceivers. Thus, recently single-radio multi-channel MAC protocols have been proposed; however, these methods are energy inefficient due to data duplication. This paper proposes a TDMA-based single-radio, multi-channel MAC protocol that uses the Unbalanced Star+Mesh topology to satisfy the requirements of WBANs. Our analytical analysis together experiments using real sensor nodes show that the proposed protocol outperforms existing methods in terms of energy efficiency, reliability, and low data latency.

범주형 자료에서 순서화된 대립가설 검정을 위한 정확검정의 개발 (Developing of Exact Tests for Order-Restrictions in Categorical Data)

  • 남주선;강승호
    • 응용통계연구
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    • 제26권4호
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    • pp.595-610
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    • 2013
  • 범주형 자료에서 순서화된 대립가설을 검정하는 경우는 의학 사회학 경영학 등 다양한 응용분야에서 발생한다. 이러한 검정 방법은 대부분 대표본이론에 근거하여 개발되었다. 하지만 표본크기가 작거나 표본크기가 매우 불균등한 경우 대표본이론에 근거한 검정방법의 제 1종 오류 확률은 목표로 하는 5%와 멀어지는 경우가 많이 발생한다. 본 논문에서는 범주형 자료에서 순서화된 대립가설을 검정하는 경우 표본크기가 작거나 표본크기가 매우 불균등한 경우에 사용될 수 있는 정확검정방법을 소개하고 이에 대한 검정력 및 정확 p-value를 제시할 것이다.

Dimension reduction for right-censored survival regression: transformation approach

  • Yoo, Jae Keun;Kim, Sung-Jin;Seo, Bi-Seul;Shin, Hyejung;Sim, Su-Ah
    • Communications for Statistical Applications and Methods
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    • 제23권3호
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    • pp.259-268
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    • 2016
  • High-dimensional survival data with large numbers of predictors has become more common. The analysis of such data can be facilitated if the dimensions of predictors are adequately reduced. Recent studies show that a method called sliced inverse regression (SIR) is an effective dimension reduction tool in high-dimensional survival regression. However, it faces incapability in implementation due to a double categorization procedure. This problem can be overcome in the right-censoring type by transforming the observed survival time and censoring status into a single variable. This provides more flexibility in the categorization, so the applicability of SIR can be enhanced. Numerical studies show that the proposed transforming approach is equally good to (or even better) than the usual SIR application in both balanced and highly-unbalanced censoring status. The real data example also confirms its practical usefulness, so the proposed approach should be an effective and valuable addition to usual statistical practitioners.

세탁기 탈수 동작 시 불평형 질량에 따른 진동 특성 분석 (Vibration Analysis of Washing Machine according to Unbalanced Mass during Dehydration)

  • 이대경;정지수;손정현;김찬중;박진홍
    • 한국기계가공학회지
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    • 제21권1호
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    • pp.1-7
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    • 2022
  • In this study, vibration analysis of washing machine dehydration was carried out using laser sensors. The suspension of the washing machine was attached to a jig developed for this study. In addition, 10 laser sensors were attached to the jig. The channels of each laser sensor are composed of five channels: front, rear, left, right, and upper. Data acquisition equipment was used to obtain sensor data. The measured data were processed using signal processing, and interpolation of the data was performed using MATLAB with robust interpolation. Vibration analysis according to unbalanced mass and sensor attachment points was carried out.

전기로용 다단 H-브릿지 STATCOM의 전류제어 (Current Control in Cascaded H-bridge STATCOM for Electric Arc Furnaces)

  • 권병기;정승기;김태형;김윤현
    • 전력전자학회논문지
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    • 제20권1호
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    • pp.19-30
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    • 2015
  • A static synchronous compensator (STATCOM) applied to rapidly changing, highly unbalanced loads such as electric arc furnaces (EAFs), requires both positive-sequence and negative-sequence current control, which indicates fast response characteristics and can be controlled independently. Furthermore, a delta-connected STATCOM with cascaded H-bridge configuration accompanying multiple separate DC-sides, should have high performance zero-sequence current control to suppress a phase-to-phase imbalance in DC-side voltages when compensating for unbalanced load. In this paper, actual EAF data is analyzed to reflect on the design of current controllers and a pioneering zero-sequence current controller with a superb transient performance is devised, which generates an imaginary -axis component from the presumed response of forwarded reference. Via simulation and experiments, the performance of the positive, negative, and zero-sequence current control of a cascaded H-bridge STATCOM for EAF is verified.

중학생의 간식섭취, 편식, 식사태도간의 상호관계 (Relationships among Snacks, Unbalanced Diet, and Eating Behaivor of Middle School Students)

  • 박현영;김기남
    • 한국가정과교육학회지
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    • 제7권2호
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    • pp.79-89
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    • 1995
  • The purpose of this study was to find out the relationships among snacks, unbalanced diet, and eating behaviors of middle school students. Subjects of this study were randomly selected from middle school students living in ChungBuk and data were collected by questionaires. Major findings were as follows: First, majority of respondents felt snacks necessary for them. They were influenced by T. V advertisement when they chose snacks. Most students had snacks habitually, and girl students had snacks more freqently than boy students. The students who had more pocketmoney had more snack than those who had less pocktmoney. Second, girl students were more fastidious than boy students about foods. The students who took instant noodles an snacks more frequently got lower scores of eating behaviors than those who took instant noodles and snacks more frequently got lower scores of eating behaviors than those who took instant noodles and snacks less frequently. Finally frequent snacks and unbalanced diet had strong relationships with lower scores of eating behaviors. In conclusion, the findings implied that nutrition-education through mass media like. T.V may be effective and nutrition education also should be practiced both at school and at home for the students’good eating behaviors and health.

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EEC-FM: Energy Efficient Clustering based on Firefly and Midpoint Algorithms in Wireless Sensor Network

  • Daniel, Ravuri;Rao, Kuda Nageswara
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • 제12권8호
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    • pp.3683-3703
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    • 2018
  • Wireless sensor networks (WSNs) consist of set of sensor nodes. These sensor nodes are deployed in unattended area which are able to sense, process and transmit data to the base station (BS). One of the primary issues of WSN is energy efficiency. In many existing clustering approaches, initial centroids of cluster heads (CHs) are chosen randomly and they form unbalanced clusters, results more energy consumption. In this paper, an energy efficient clustering protocol to prevent unbalanced clusters based on firefly and midpoint algorithms called EEC-FM has been proposed, where midpoint algorithm is used for initial centroid of CHs selection and firefly is used for cluster formation. Using residual energy and Euclidean distance as the parameters for appropriate cluster formation of the proposed approach produces balanced clusters to eventually balance the load of CHs and improve the network lifetime. Simulation result shows that the proposed method outperforms LEACH-B, BPK-means, Park's approach, Mk-means, and EECPK-means with respect to balancing of clusters, energy efficiency and network lifetime parameters. Simulation result also demonstrate that the proposed approach, EEC-FM protocol is 45% better than LEACH-B, 17.8% better than BPK-means protocol, 12.5% better than Park's approach, 9.1% better than Mk-means, and 5.8% better than EECPK-means protocol with respect to the parameter half energy consumption (HEC).

불균형(不均衡) 일원(一元) 변량모형(變量模型)에서 추정방법(推定方法)에 따른 분산성분(分散成分)의 추정량(推定量)이 음(陰)이 될 확률(確率)의 계산(計算) (On the Probability of the Estimate of Variance Components that is Negative in Unbalanced One-Way Random Model)

  • 송규문
    • Journal of the Korean Data and Information Science Society
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    • 제4권
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    • pp.121-130
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    • 1993
  • 불균형 일원 변량모형에서 AOV추정량과 사전값이 0, 1, ${\infty}$인 MINQUE에 국한하여 정규분포를 가정할 때 분산성분의 추정량이 음이 될 이론적 확률을 구하고, 비정규분포에 대해서는 모의실험을 통해 추정량이 음이 될 확률을 구하였다. 이 때 정차분포에서의 이론적 확률과 모의실험에 의해 계산된 확률간에 유의한 차이가 없고 표본수, 수준수 그리고 ${\rho}$가 커지면 각 추정량은 음이 될 확률이 작아지며, 고려된 추정량 중에서 AOV추정량이 대부분의 경우에 음이 될 확률이 가장 작게 나타났다.

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사영에 의한 제1종 분석 (Type I Analysis by Projections)

  • 최재성
    • 응용통계연구
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    • 제24권2호
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    • pp.373-381
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    • 2011
  • 본 논문은 실험자료에 대한 분석모형으로 이원 분산분석모형을 가정한다. 고정효과 모형의 가정하에 요인별 변동량을 구하기 위한 방법으로 제1종 분석을 다루고 있다. 모형의 순차적 적합에 따라 얻어지는 요인별 제곱합의 계산방법으로 대수적 방법이 아닌 사영에 의한 분석방법을 제공한다. 관측자료를 다차원상의 공간벡터로 간주할 때, 최소 제곱법에 의한 요인별 변동량은 계획행렬로 생성되는 모수추정 공간에서 요인별 부분공간으로의 사영에 이르는 거리 제곱으로 구해질 수 있음을 논의하고 있다. 또한 사영행렬로 부터의 고유벡터와 고유근을 이용하여 요인별 변동량을 구하는 방법을 제공하고 있다. 균형자료나 불균형자료에서 모형의 순차적 적합에 따른 제1종 분석이 행해질 때 요인별 변동량의 합은 처리제곱합과 일치하나 제2종 분석의 경우 불균형자료에서 이러한 성질이 만족되지 않음을 논의하고 있다.

Application of Reinforcement Learning in Detecting Fraudulent Insurance Claims

  • Choi, Jung-Moon;Kim, Ji-Hyeok;Kim, Sung-Jun
    • International Journal of Computer Science & Network Security
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    • 제21권9호
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    • pp.125-131
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    • 2021
  • Detecting fraudulent insurance claims is difficult due to small and unbalanced data. Some research has been carried out to better cope with various types of fraudulent claims. Nowadays, technology for detecting fraudulent insurance claims has been increasingly utilized in insurance and technology fields, thanks to the use of artificial intelligence (AI) methods in addition to traditional statistical detection and rule-based methods. This study obtained meaningful results for a fraudulent insurance claim detection model based on machine learning (ML) and deep learning (DL) technologies, using fraudulent insurance claim data from previous research. In our search for a method to enhance the detection of fraudulent insurance claims, we investigated the reinforcement learning (RL) method. We examined how we could apply the RL method to the detection of fraudulent insurance claims. There are limited previous cases of applying the RL method. Thus, we first had to define the RL essential elements based on previous research on detecting anomalies. We applied the deep Q-network (DQN) and double deep Q-network (DDQN) in the learning fraudulent insurance claim detection model. By doing so, we confirmed that our model demonstrated better performance than previous machine learning models.