• 제목/요약/키워드: Learning Attributes

검색결과 309건 처리시간 0.031초

A study of creative human judgment through the application of machine learning algorithms and feature selection algorithms

  • Kim, Yong Jun;Park, Jung Min
    • International journal of advanced smart convergence
    • /
    • 제11권2호
    • /
    • pp.38-43
    • /
    • 2022
  • In this study, there are many difficulties in defining and judging creative people because there is no systematic analysis method using accurate standards or numerical values. Analyze and judge whether In the previous study, A study on the application of rule success cases through machine learning algorithm extraction, a case study was conducted to help verify or confirm the psychological personality test and aptitude test. We proposed a solution to a research problem in psychology using machine learning algorithms, Data Mining's Cross Industry Standard Process for Data Mining, and CRISP-DM, which were used in previous studies. After that, this study proposes a solution that helps to judge creative people by applying the feature selection algorithm. In this study, the accuracy was found by using seven feature selection algorithms, and by selecting the feature group classified by the feature selection algorithms, and the result of deriving the classification result with the highest feature obtained through the support vector machine algorithm was obtained.

An assessment of machine learning models for slump flow and examining redundant features

  • Unlu, Ramazan
    • Computers and Concrete
    • /
    • 제25권6호
    • /
    • pp.565-574
    • /
    • 2020
  • Over the years, several machine learning approaches have been proposed and utilized to create a prediction model for the high-performance concrete (HPC) slump flow. Despite HPC is a highly complex material, predicting its pattern is a rather ambitious process. Hence, choosing and applying the correct method remain a crucial task. Like some other problems, prediction of HPC slump flow suffers from abnormal attributes which might both have an influence on prediction accuracy and increases variance. In recent years, different studies are proposed to optimize the prediction accuracy for HPC slump flow. However, more state-of-the-art regression algorithms can be implemented to create a better model. This study focuses on several methods with different mathematical backgrounds to get the best possible results. Four well-known algorithms Support Vector Regression, M5P Trees, Random Forest, and MLPReg are implemented with optimum parameters as base learners. Also, redundant features are examined to better understand both how ingredients influence on prediction models and whether possible to achieve acceptable results with a few components. Based on the findings, the MLPReg algorithm with optimum parameters gives better results than others in terms of commonly used statistical error evaluation metrics. Besides, chosen algorithms can give rather accurate results using just a few attributes of a slump flow dataset.

패션 AI의 학습 데이터 표준화를 위한 패션 아이템 이미지의 색채와 소재 속성 분류 체계 (Color & Texture Attribute Classification System of Fashion Item Image for Standardizing Learning Data in Fashion AI)

  • 박낭희;최윤미
    • 한국의류학회지
    • /
    • 제44권2호
    • /
    • pp.354-368
    • /
    • 2020
  • Accurate and versatile image data-sets are essential for fashion AI research and AI-based fashion businesses based on a systematic attribute classification system. This study constructs a color and texture attribute hierarchical classification system by collecting fashion item images and analyzing the metadata of fashion items described by consumers. Essential dimensions to explain color and texture attributes were extracted; in addition, attribute values for each dimension were constructed based on metadata and previous studies. This hierarchical classification system satisfies consistency, exclusiveness, inclusiveness, and flexibility. The image tagging to confirm the usefulness of the proposed classification system indicated that the contents of attributes of the same image differ depending on the annotator that require a clear standard for distinguishing differences between the properties. This classification system will improve the reliability of the training data for machine learning, by providing standardized criteria for tasks such as tagging and annotating of fashion items.

간호 시뮬레이션 교육에서의 심리적 안전(psychological safety)에 관한 개념분석 (Psychological Safety in Nursing Simulation Education: A Concept Analysis)

  • 강숙정;배정아
    • 한국콘텐츠학회논문지
    • /
    • 제17권9호
    • /
    • pp.331-340
    • /
    • 2017
  • 본 연구의 목적은 간호 시뮬레이션 교육에 있어 심리적 안전 개념의 명확한 속성을 규명하고 파악하여 다양한 시뮬레이션 교육에서 간호학생의 심리적 안전을 향상시킬 수 있는 교육환경 조성에 기여하고자 함이다. Walker와 Avant (2010)의 개념분석 단계를 사용하여 15개의 심리적 안전과 관련된 문헌을 선정하여 분석하였다. 간호 시뮬레이션 교육에서 심리적 안전의 속성으로는 다음 4가지가 도출되었다: 1) 편안한 느낌이나 상태; 2) 두려움 없이 행동할 수 있는 상태; 3) 조직에 대하여 신뢰할 수 있는 느낌; 그리고 4) 자신에게 무해하다는 느낌. 본 연구를 통하여 밝혀진 선행요인, 속성, 결과 등을 고려하여 심리적 안전을 보장하도록 하는 학습환경을 조성한다면 시뮬레이션 교육의 학습효과를 극대화할 수 있을 것으로 기대된다.

Classification of Livestock Diseases Using GLCM and Artificial Neural Networks

  • Choi, Dong-Oun;Huan, Meng;Kang, Yun-Jeong
    • International Journal of Internet, Broadcasting and Communication
    • /
    • 제14권4호
    • /
    • pp.173-180
    • /
    • 2022
  • In the naked eye observation, the health of livestock can be controlled by the range of activity, temperature, pulse, cough, snot, eye excrement, ears and feces. In order to confirm the health of livestock, this paper uses calf face image data to classify the health status by image shape, color and texture. A series of images that have been processed in advance and can judge the health status of calves were used in the study, including 177 images of normal calves and 130 images of abnormal calves. We used GLCM calculation and Convolutional Neural Networks to extract 6 texture attributes of GLCM from the dataset containing the health status of calves by detecting the image of calves and learning the composite image of Convolutional Neural Networks. In the research, the classification ability of GLCM-CNN shows a classification rate of 91.3%, and the subsequent research will be further applied to the texture attributes of GLCM. It is hoped that this study can help us master the health status of livestock that cannot be observed by the naked eye.

미세먼지, 악취 농도 예측을 위한 앙상블 방법 (Ensemble Method for Predicting Particulate Matter and Odor Intensity)

  • 이종영;최명진;주영인;양재경
    • 산업경영시스템학회지
    • /
    • 제42권4호
    • /
    • pp.203-210
    • /
    • 2019
  • Recently, a number of researchers have produced research and reports in order to forecast more exactly air quality such as particulate matter and odor. However, such research mainly focuses on the atmospheric diffusion models that have been used for the air quality prediction in environmental engineering area. Even though it has various merits, it has some limitation in that it uses very limited spatial attributes such as geographical attributes. Thus, we propose the new approach to forecast an air quality using a deep learning based ensemble model combining temporal and spatial predictor. The temporal predictor employs the RNN LSTM and the spatial predictor is based on the geographically weighted regression model. The ensemble model also uses the RNN LSTM that combines two models with stacking structure. The ensemble model is capable of inferring the air quality of the areas without air quality monitoring station, and even forecasting future air quality. We installed the IoT sensors measuring PM2.5, PM10, H2S, NH3, VOC at the 8 stations in Jeonju in order to gather air quality data. The numerical results showed that our new model has very exact prediction capability with comparison to the real measured data. It implies that the spatial attributes should be considered to more exact air quality prediction.

연속형 속성을 갖는 인공 신경망의 규칙 추출 (Extracting Rules from Neural Networks with Continuous Attributes)

  • 바트셀렘;이완곤;전명중;박현규;박영택
    • 정보과학회 논문지
    • /
    • 제45권1호
    • /
    • pp.22-29
    • /
    • 2018
  • 지난 수십 년 동안 인공 신경망은 음성 인식에서 이미지 분류에 이르기까지 수많은 분야에서 성공적으로 사용되었다. 그러나 인공 신경망은 특정 결론이 어떻게 도출되었는지 알 필요가 있음에도 불구하고 이러한 결과를 설명할 수 있는 능력이 부족하다. 대부분의 연구는 신경망에서 이진 규칙을 추출하는데 초점을 맞추고 있지만, 기계 학습 응용 프로그램에 사용되는 데이터는 연속된 값이 포함되어 있기 때문에 실용적이지 않은 경우가 있다. 이러한 격차를 줄이기 위해 본 논문에서는 연속된 값이 포함된 데이터로부터 학습된 신경망에서 논리 규칙을 추출하는 알고리즘을 제안한다. 초평면 기반 선형 분류기를 사용하여 입력 및 은닉 층 사이에서 학습된 가중치로부터 규칙을 추출하고, 비선형 분류 규칙을 생성하기 위해 은닉 층과 출력 층에서 학습된 이진 규칙과 분류기를 결합한다. 비선형 연속값으로 구성된 여러 데이터셋을 대상으로 진행한 실험에서 제안하는 방법이 논리적 규칙을 정확하게 추출할 수 있음을 보였다.

속성간의 대응이 범주학습에 미치는 효과 (The effects of attribute alignment on category learning)

  • 이태연
    • 인지과학
    • /
    • 제12권4호
    • /
    • pp.29-39
    • /
    • 2001
  • Kaplan(2000)은 유사성에서 동일하더라도 대응조건의 사례들이 더 정확하게 범주화된다는 결과를 보고하였다. 이 연구는 Kaplan(2000)의 결과가 연구에서 언어자극이 사용되었기 때문인지를 검토하고 대응효과가 속성에 대한 선택적 주의의 결과인지를 밝히고자 하였다[16]. 실험 1에서는 속성간의 대응이 유사성과 범주화에 모두 영향을 미치는지 그리고 대응되어 있는 속성들이 더 잘 기억되는지를 검토하였다. 그 결과에 따르면 공유속성의 수가 동일하더라도 속성이 대응되어 있으면 자극들이 더 유사하게 평정되었고 범주도 더 빠르고 정화하게 학습되었다. 이러한 결과는 속성간의 대응이 범주내 유사성을 높여 범주학습을 용이하게 하였기 때문이라고 해석될 수 있지만 속성회상검사에서 대응되어 있는 속성이 더 많이 회상된 결과를 볼 때 대응효과가 반드시 유사성에 의존한다고 보기 어렵다. 실험 2에서는 대응효과가 속성에 대한 선택적 주의의 결과인지를 살펴보기 위해 대응범주와 비 대응범주를 정의하는 속성의 수를 동일하게 통제하고 범주화에 적절한 속성에만 주의를 기울이도록 지시하였다. 그 결과를 보면 지시조건과 무관하게 비 대응조건보다 대응조건에서 범주가 더 빨리 학습되었지만 비 대응조건에서는 범주화에 적절한 속성에 주의를 기울이도록 지시한 조건에서 범주가 더 빨리 학습되었고 판단시간도 더 빨랐다. 결론적으로 범주화에서 대응은 범주화에 적절한 차원에 선택적 주의를 하는 과정을 촉진하는 것으로 보인다.

  • PDF

수정된 이원평가표를 이용한 품질속성의 분류에 관한 연구 (Classification of Quality Attributes Using Two-dimensional Evaluation Table)

  • 김광필;송해근
    • 대한안전경영과학회지
    • /
    • 제20권1호
    • /
    • pp.41-55
    • /
    • 2018
  • For several decades, attribute classification methods using the asymmetrical relationship between an attribute performance and the satisfaction of that attribute have been explored by numerous researchers. In particular, the Kano model, which classifies quality attributes into 5 elements using simple questionnaire and two-dimensional evaluation table, has gained popularity: Attractive, One-dimensional, Must-be, Indifferent, and Reverse quality. As Kano's model is well accepted, many literatures have introduced categorization methods using the Kano's evaluation table at attribute level. However, they applied different terminologies and classification criteria and this causes confusion and misunderstanding. Therefore, a criterion for quality classification at attribute level is necessary. This study is aimed to suggest a new attribute classification method that sub-categorizes quality attributes using 5-point ordinal point and Kano's two-dimensional evaluation table through an extensive literature review. For this, the current study examines the intrinsic and extrinsic problems of the well-recognized Kano model that have been used for measuring customer satisfaction of products and services. For empirical study, the author conducted a comparative study between the results of Kano's model and the proposed method for an e-learning case (33 attributes). Results show that the proposed method is better in terms of ease of use and understanding of kano's results and this result will contribute to the further development of the attractive quality theory that enables to understand both the customers explicit and implicit needs.

학령기 아동의 삶의 질 영역과 속성들 (Dimensions and Attributes of Quality of Life in Korean School-age Children)

  • 한경자;이영희;심인옥;최윤정
    • Child Health Nursing Research
    • /
    • 제11권2호
    • /
    • pp.167-178
    • /
    • 2005
  • Purpose: The purpose of this study was to describe quality of life (QOL) in Korean school-age children by identifying dimensions and attributes of QOL from the child's point of view. Method: In-depth interviews with focus questions were used for the study. Twelve children, aged 10 to 13 years, were recruited from Seoul and rural areas. The interviews were audio-taped and transcribed before content analysis. The data were analyzed for themes and attributes. The researchers read the data together and discussed their conclusions until a consensus was reached. Results: Eight dimensions, 57 subdimensions and 101atttributes were identified for QOL in school-age children. The eight dimensions of QOL were physical, social, emotional, learning, leisure, family, self-value, and material aspects. Conclusion: The study results can be utilized in developing reliable instruments to measure quality of life specific to school-age children. It is proposed that a consistent and unified policy should be established by school, family, and community for the purpose of improving the QOL of school-age children.

  • PDF