• Title/Summary/Keyword: 포함편향

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The Changes in Fixed Telephone Household Coverage Rates due to Diffusion of Mobile Phones: The Impact in Some Selected Countries including South Korea (이동전화 확산에 따른 유선전화 가구보유율의 변화: 한국을 포함한 주요 국가들을 중심으로)

  • 김선웅
    • Survey Research
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    • v.5 no.1
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    • pp.27-49
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    • 2004
  • Recently, in several countries including South Korea, the percentage of households having fixed telephones, which is often called the fixed telephone coverage rates, has decreased due to a rapid spread of mobile phones. It is generally assumed that the lower the rates of coverage, resulting in a major frame undercoverage problem, the greater the possibility of the bias. In this paper, we first take a look at the changes of coverage rates in both fixed telephones and mobile phones in South Korea and examine the coverage rates by sociodemographic characteristics of households. Also, we refer to a change in the level of fixed telephone noncoverage and the resulting problems in the situation. Second, we provide a comparison of the coverage rates for households for some European countries, the United States, Canada etc. Finally, we suggest further research to rise to our research environments increasingly troublesome, owing to the wide spread of mobile phones.

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A GPU-based Terrain Rendering using Multi-resolution Bias Map (다해상도 편향맵을 이용한 GPU기반의 지형 렌더링)

  • Lee, Eun-Seok;Kim, Tae-Gwon;Lee, Jin-Hee;Shin, Byeong-Seok
    • Proceedings of the Korean Information Science Society Conference
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    • 2012.06c
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    • pp.314-316
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    • 2012
  • 대용량 지형 데이터를 실시간에 렌더링 하기 위해 여러 가지 연속상세단계 기법들이 연구되었다. 하지만 이러한 방법을 적용해도 지형 데이터가 하드웨어에서 처리할 수 있는 크기보다 클 경우 과도한 간략화로 인한 기하오차가 발생하거나 프레임률이 저하된다. 또한 기존 연속상세단계 기법을 수행하기 위해 만들어진 자료구조들 또한 지형 데이터의 크기에 비례하여 커지므로 메모리와 전처리 시간이 많이 소요된다. 본 논문에서는 적은 개수의 정점으로 효과적인 지형 렌더링이 가능한 편향맵을 다해상도로 확장하여 별도의 자료구조가 따로 필요 없는 간단한 연속상세단계 기법을 제안한다. 이 방법은 적은 메모리 용량으로 높은 정확도의 지형을 실시간에 렌더링 할 수 있다. 연속상세단계 선택은 보다 빠른 처리를 위해 GPU에서 패치 단위의 테셀레이션을 통해서 단일 패스로 수행된다. 상세단계가 선택으로 세분화 된 지형의 각 정점들은 화면 공간상의 오차를 참조하여 각각의 상세단계를 선택한 후 해당되는 편향맵에 저장된 이동벡터만큼 이동하여 최종 지형 메쉬를 생성한다. 제안한 방법은 전처리 단계를 포함한 모든 처리가 GPU에서 수행되므로 속도가 빠르고 적은 정점으로 보다 정확한 지형을 렌더링 할 수 있다.

Estimation of Resistance Bias Factors for the Ultimate Limit State of Aggregate Pier Reinforced Soil (쇄석다짐말뚝으로 개량된 지반의 극한한계상태에 대한 저항편향계수 산정)

  • Bong, Tae-Ho;Kim, Byoung-Il;Kim, Sung-Ryul
    • Journal of the Korean Geotechnical Society
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    • v.35 no.6
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    • pp.17-26
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    • 2019
  • In this study, the statistical characteristics of the resistance bias factors were analyzed using a high-quality field load test database, and the total resistance bias factors were estimated considering the soil uncertainty and construction errors for the application of the limit state design of aggregate pier foundation. The MLR model by Bong and Kim (2017), which has a higher prediction performance than the previous models was used for estimating the resistance bias factors, and its suitability was evaluated. The chi-square goodness of fit test was performed to estimate the probability distribution of the resistance bias factors, and the normal distribution was found to be most suitable. The total variability in the nominal resistance was estimated including the uncertainty of undrained shear strength and construction errors that can occur during the aggregate pier construction. Finally, the probability distribution of the total resistance bias factors is shown to follow a log-normal distribution. The parameters of the probability distribution according to the coefficient of variation of total resistance bias factors were estimated by Monte Carlo simulation, and their regression equations were proposed for simple application.

GEANT4, SPENVIS 를 이용한 STEIN 검출기의 배경계수 예측

  • Jeon, Jong-Ho;Park, Seong-Ha;Kim, Yong-Ho;Seon, Jong-Ho;Jin, Ho;Lee, Dong-Hun;Lin, Robert P.;Immel, Thomas
    • The Bulletin of The Korean Astronomical Society
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    • v.37 no.2
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    • pp.230.2-230.2
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    • 2012
  • 경희대학교에서 제작중인 초소형 위성 TRIO-CINEMA (TRiplet Ionosphere Observatory-Cubesat for Ion, Neutral, Electron and MAgnetic fields)에 탑재될 입자검출기 STEIN (SupraThermal Electron, Ion, Neutral)은 정전 편향기를 이용하여 4~300keV의 대전입자 혹은 중성입자들을 분리하여 검출하도록 이루어져있다. CINEMA 운용 궤도에서는 STEIN 정전 편향기를 통하지 않고 검출기 내부로 들어오는 입자들로부터 생기는 배경계수가 포함되어 검출될 것으로 예상되므로 STEIN 검출기의 결과값의 신뢰성을 높이기 위해 배경계수값을 예측할 필요성이 있다. 본 연구에서는 SPENVIS (The Space Environment Information System)를 통해 CINEMA 운용 궤도에 존재하는 입자들의 유량을 계산하였고 GEANT4 (GEometry ANd Tracking)를 통해 CINEMA 운용 궤도상의 STEIN의 외부 환경을 모사하여 배경계수값을 예측하였다. 향후 STEIN의 측정값에 배경계수값을 차감한다면 측정값의 신뢰성이 높아질 것으로 기대된다.

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A bias adjusted ratio-type estimator (편향 보정 비형태추정량에 관한 연구)

  • Oh, Jung-Taek;Shin, Key-Il
    • The Korean Journal of Applied Statistics
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    • v.31 no.3
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    • pp.397-408
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    • 2018
  • Various methods for accurate parameter estimation have been developed in a sample survey and it is also common to use a ratio estimator or the regression estimator using auxiliary information. The ratio-type estimator has been used in many recent studies and is known to improve the accuracy of estimation by adjusting the ratio estimator. However, various studies are under way to solve it since the ratio-type estimator is biased. In this study, we propose a generalized ratio-type estimator with a new parameter added to the ratio-type estimator to remove the bias. We suggested a method to apply this result to the parameter estimation under the error assumption of heteroscedasticity. Through simulation, we confirmed that the suggested generalized ratio-type estimator gives good results compared to conventional ratio-type estimators.

Constructing Database and Probabilistic Analysis for Ultimate Bearing Capacity of Aggregate Pier (쇄석다짐말뚝의 극한지지력 데이터베이스 구축 및 통계학적 분석)

  • Park, Joon-Mo;Kim, Bum-Joo;Jang, Yeon-Soo
    • Journal of the Korean Geotechnical Society
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    • v.30 no.8
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    • pp.25-37
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    • 2014
  • In load and resistance factor design (LRFD) method, resistance factors are typically calibrated using resistance bias factors obtained from either only the data within ${\pm}2{\sigma}$ or the data except the tail values of an assumed probability distribution to increase the reliability of the database. However, the data selection approach has a shortcoming that any low-quality data inadvertently included in the database may not be removed. In this study, a data quality evaluation method, developed based on the quality of static load test results, the engineering characteristics of in-situ soil, and the dimension of aggregate piers, is proposed for use in constructing database. For the evaluation of the method, a total 65 static load test results collected from various literatures, including static load test reports, were analyzed. Depending on the quality of the database, the comparison between bias factors, coefficients of variation, and resistance factors showed that uncertainty in estimating bias factors can be reduced by using the proposed data quality evaluation method when constructing database.

Bias adjusted estimation in a sample survey with linear response rate (응답률이 선형인 표본조사에서 편향 보정 추정)

  • Chung, Hee Young;Shin, Key-Il
    • The Korean Journal of Applied Statistics
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    • v.32 no.4
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    • pp.631-642
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    • 2019
  • Many methods have been developed to solve problems found in sample surveys involving a large number of item non-responses that cause inaccuracies in estimation. However, the non-response adjustment method used under the assumption of random non-response generates a bias in cases where the response rate is affected by the variable of interest. Chung and Shin (2017) and Min and Shin (2018) proposed a method to improve the accuracy of estimation by appropriately adjusting a bias generated when the response rate is a function of the variables of interest. In this study, we studied a case where the response rate function is linear and the error of the super population model follows normal distribution. We also examined the effect of the number of stratum population on bias adjustment. The performance of the proposed estimator was examined through simulation studies and confirmed through actual data analysis.

A simulation study for various propensity score weighting methods in clinical problematic situations (임상에서 발생할 수 있는 문제 상황에서의 성향 점수 가중치 방법에 대한 비교 모의실험 연구)

  • Siseong Jeong;Eun Jeong Min
    • The Korean Journal of Applied Statistics
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    • v.36 no.5
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    • pp.381-397
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    • 2023
  • The most representative design used in clinical trials is randomization, which is used to accurately estimate the treatment effect. However, comparison between the treatment group and the control group in an observational study without randomization is biased due to various unadjusted differences, such as characteristics between patients. Propensity score weighting is a widely used method to address these problems and to minimize bias by adjusting those confounding and assess treatment effects. Inverse probability weighting, the most popular method, assigns weights that are proportional to the inverse of the conditional probability of receiving a specific treatment assignment, given observed covariates. However, this method is often suffered by extreme propensity scores, resulting in biased estimates and excessive variance. Several alternative methods including trimming, overlap weights, and matching weights have been proposed to mitigate these issues. In this paper, we conduct a simulation study to compare performance of various propensity score weighting methods under diverse situation, such as limited overlap, misspecified propensity score, and treatment contrary to prediction. From the simulation results overlap weights and matching weights consistently outperform inverse probability weighting and trimming in terms of bias, root mean squared error and coverage probability.

Bias corrected imputation method for non-ignorable non-response (무시할 수 없는 무응답에서 편향 보정을 이용한 무응답 대체)

  • Lee, Min-Ha;Shin, Key-Il
    • The Korean Journal of Applied Statistics
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    • v.35 no.4
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    • pp.485-499
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    • 2022
  • Controlling the total survey error including sampling error and non-sampling error is very important in sampling design. Non-sampling error caused by non-response accounts for a large proportion of the total survey error. Many studies have been conducted to handle non-response properly. Recently, a lot of non-response imputation methods using machine learning technique and traditional statistical methods have been studied and practically used. Most imputation methods assume MCAR(missing completely at random) or MAR(missing at random) and few studies have been conducted focusing on MNAR (missing not at random) or NN(non-ignorable non-response) which cause bias and reduce the accuracy of imputation. In this study, we propose a non-response imputation method that can be applied to non-ignorable non-response. That is, we propose an imputation method to improve the accuracy of estimation by removing the bias caused by NN. In addition, the superiority of the proposed method is confirmed through small simulation studies.

A Study on Impacts of De-identification on Machine Learning's Biased Knowledge (머신러닝 편향성 관점에서 비식별화의 영향분석에 대한 연구)

  • Soohyeon Ha;Jinsong Kim;Yeeun Son;Gaeun Won;Yujin Choi;Soyeon Park;Hyung-Jong Kim;Eunsung Kang
    • Journal of the Korea Society for Simulation
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    • v.33 no.2
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    • pp.27-35
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    • 2024
  • We aimed to shed light on the issue of perpetuating societal disparities by analyzing the impact of inherent biases present in datasets used for training artificial intelligence models on the predictions generated by Artificial Intelligence(AI). Therefore, to examine the influence of data bias on AI models, we constructed an original dataset containing biases related to gender wage gaps and subsequently created a de-identified dataset. Additionally, by utilizing the decision tree algorithm, we compared the outputs of AI models trained on both the original and de-identified datasets, aiming to analyze how data de-identification affects the biases in the results produced by artificial intelligence models. Through this, our goal was to highlight the significant role of data de-identification not only in safeguarding individual privacy but also in addressing biases within the data.