• Title/Summary/Keyword: 베이지안 망

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A Vibration Signal-based Deep Learning Model for Bearing Diagnosis (인공신경망과 베이지안 최적화 모델을 이용한 고효율 페로브스카이트 구조제안 방법)

  • Kim, San;Kim, Jaekwang
    • Proceedings of the Korean Society of Broadcast Engineers Conference
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    • 2022.06a
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    • pp.1258-1260
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    • 2022
  • 재료공학에서 머신러닝을 이용해 목적 성능에 부합하는 물질의 조성을 탐색하는 연구가 있다. 물질의 성능은밀도 범함수 계산을 통해 시뮬레이션 할 수 있지만, 계산량이 많은 문제가 있다. 본 연구를 통해 우리는 고효율 페로브스카이트 태양광전지를 만들기 위한 페로브스카이트 조성을 추천하는 심층신경망과 베이지안 최적화 모델을 제안했다. 본 연구에서 높은 전력효율이 예상되는 페로브스카이트 조성을 심층신경망과 베이지안 최적화 방법을 통해 추천하는 모델을 구현하였다. 심층신경망 모델은 주어진 조성과 실험조건에서 예상되는 전력효율을 예측해 베이지안 최적화를 통한 탐색과정에서 소요되는 실험비용을 줄인다. 베이지안 최적화 모델은 실험공간을 입력으로 받아 고효율이 예상되는 실험조건을 출력하는데, 미리 설정한 실험공간만을 탐색하기 때문에 실험적으로 가능한 출력값만을 제시 할 수 있다. 본 연구는 심층신경망과 베이지안 최적화 방법을 조합해 주어진 실험공간을 탐색하는 시간과 비용을 최소화하는 방법을 제시한다

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Quantitative Annotation of Edges in Bayesian Networks with Condition-Specific Data (베이지안 망 연결 구조에 대한 데이터 군집별 기여도의 정량화 방법에 대한 연구)

  • Jeong, Seong-Won;Lee, Do-Heon;Lee, Gwang-Hyeong
    • Proceedings of the Korean Institute of Intelligent Systems Conference
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    • 2007.04a
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    • pp.85-88
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    • 2007
  • 본 연구에서는 베이지안 망 구조 학습에서, 학습 데이터의 특정 부분집합이 학습된 망의 각연결 구조(edge)의 형성에 기여하는 정도를 정량화하는 방법을 제안한다. 생물학 정보의 분석 등에 베이지안 망 학습을 이용하는 경우, 제안된 방법은 망의 각 연결 구조의 형성에 특정 군집 데이터가 기여하는 정도의 정량화가 가능하다. 제안된 방법의 유효성을 보이기 위해, 벤치마크 베이지안 망을 이용하여 제안된 방법이 망 연결 구조에 대한 데이터 군집별 기여도를 효과적으로 정량화 할 수 있음을 보인다.

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Quantitative Annotation of Edges, in Bayesian Networks with Condition-Specific Data (베이지안 망 연결 구조에 대한 데이터 군집별 기여도의 정량화 방법에 대한 연구)

  • Jung, Sung-Won;Lee, Do-Heon;Lee, Kwang-H.
    • Journal of the Korean Institute of Intelligent Systems
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    • v.17 no.3
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    • pp.316-321
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    • 2007
  • We propose a quatitative annotation method for edges in Bayesian networks using given sets of condition-specific data. Bayesian network model has been used widely in various fields to infer probabilistic dependency relationships between entities in target systems. Besides the need for identifying dependency relationships, the annotation of edges in Bayesian networks is required to analyze the meaning of learned Bayesian networks. We assume the training data is composed of several condition-specific data sets. The contribution of each condition-specific data set to each edge in the learned Bayesian network is measured using the ratio of likelihoods between network structures of including and missing the specific edge. The proposed method can be a good approach to make quantitative annotation for learned Bayesian network structures while previous annotation approaches only give qualitative one.

An Efficient Learning Method for Large Bayesian Networks using Clustering (클러스터링을 이용한 효율적인 대규모 베이지안 망 학습 방법)

  • Jung Sungwon;Lee Kwang H.;Lee Doheon
    • Proceedings of the Korean Information Science Society Conference
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    • 2005.07b
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    • pp.700-702
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    • 2005
  • 본 논문에서는 대규모 베이지안 망을 빠른 시간 안에 학습하기 위한 방법으로, 클러스터링을 이용한 방법을 제안한다. 제안하는 방법은 베이지안 구조 학습에 있어서 DAG(Directed Acyclic Graph)를 탐색하는 영역을 제한하기 위해 클러스터링을 사용한다. 기존의 베이지안 구조 학습 방법들이 고려하는 후보 DAG의 수가 전체 노드 수에 의해 제한되는 데 반해, 제안되는 방법에서는 미리 정해진 클러스터의 최대 크기에 의해 제한된다. 실험 결과를 통해, 제안하는 방법이 기존의 대규모 베이지안 망 학습에 활용되었던 SC(Sparse Candidate) 방법 보다 훨씬 적은 수의 후보 DAG만을 고려하였음에도 불구하고, 비슷한 정도의 정확도를 나타냄을 보인다.

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Design and Implementation of Travel Mode Choice Model Using the Bayesian Networks of Data Mining (데이터마이닝의 베이지안 망 기법을 이용한 교통수단선택 모형의 설계 및 구축)

  • Kim, Hyun-Gi;Kim, Kang-Soo;Lee, Sang-Min
    • Journal of Korean Society of Transportation
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    • v.22 no.2 s.73
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    • pp.77-86
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    • 2004
  • In this study, we applied the Bayesian Network for the case of the mode choice models using the Seoul metropolitan area's house trip survey Data. Sex and age were used lot the independent variables for the explanation or the mode choice, and the relationships between the mode choice and the travellers' social characteristics were identified by the Bayesian Network. Furthermore, trip and mode's characteristics such as time and fare were also used for independent variables and the mode choice models were developed. It was found that the Bayesian Network were useful tool to overcome the problems which were in the traditional mode choice models. In particular, the various transport policies could be evaluated in the very short time by the established relation-ships. It is expected that the Bayesian Network will be utilized as the important tools for the transport analysis.

Learning Distribution Graphs Using a Neuro-Fuzzy Network for Naive Bayesian Classifier (퍼지신경망을 사용한 네이브 베이지안 분류기의 분산 그래프 학습)

  • Tian, Xue-Wei;Lim, Joon S.
    • Journal of Digital Convergence
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    • v.11 no.11
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    • pp.409-414
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    • 2013
  • Naive Bayesian classifiers are a powerful and well-known type of classifiers that can be easily induced from a dataset of sample cases. However, the strong conditional independence assumptions can sometimes lead to weak classification performance. Normally, naive Bayesian classifiers use Gaussian distributions to handle continuous attributes and to represent the likelihood of the features conditioned on the classes. The probability density of attributes, however, is not always well fitted by a Gaussian distribution. Another eminent type of classifier is the neuro-fuzzy classifier, which can learn fuzzy rules and fuzzy sets using supervised learning. Since there are specific structural similarities between a neuro-fuzzy classifier and a naive Bayesian classifier, the purpose of this study is to apply learning distribution graphs constructed by a neuro-fuzzy network to naive Bayesian classifiers. We compare the Gaussian distribution graphs with the fuzzy distribution graphs for the naive Bayesian classifier. We applied these two types of distribution graphs to classify leukemia and colon DNA microarray data sets. The results demonstrate that a naive Bayesian classifier with fuzzy distribution graphs is more reliable than that with Gaussian distribution graphs.

Bayesian Learning for Self Organizing Maps (자기조직화 지도를 위한 베이지안 학습)

  • 전성해;전홍석;황진수
    • The Korean Journal of Applied Statistics
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    • v.15 no.2
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    • pp.251-267
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    • 2002
  • Self Organizing Maps(SOM) by Kohonen is very fast algorithm in neural networks. But it doesn't show sure rules of training results. In this paper, we introduce to Bayesian Learning for Self Organizing Maps(BLSOM) which combines self organizing maps with Bayesian learning. So it supports explanatory power of models and improves prediction. BLSOM has global optima anywhere but SOM has not. This is proved by experiment in this paper.

Hierarchical Gabor Feature and Bayesian Network for Handwritten Digit Recognition (계층적인 가버 특징들과 베이지안 망을 이용한 필기체 숫자인식)

  • 성재모;방승양
    • Journal of KIISE:Software and Applications
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    • v.31 no.1
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    • pp.1-7
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    • 2004
  • For the handwritten digit recognition, this paper Proposes a hierarchical Gator features extraction method and a Bayesian network for them. Proposed Gator features are able to represent hierarchically different level information and Bayesian network is constructed to represent hierarchically structured dependencies among these Gator features. In order to extract such features, we define Gabor filters level by level and choose optimal Gabor filters by using Fisher's Linear Discriminant measure. Hierarchical Gator features are extracted by optimal Gabor filters and represent more localized information in the lower level. Proposed methods were successfully applied to handwritten digit recognition with well-known naive Bayesian classifier, k-nearest neighbor classifier. and backpropagation neural network and showed good performance.

Bayesian Network-Based Analysis on Clinical Data of Infertility Patients (베이지안 망에 기초한 불임환자 임상데이터의 분석)

  • Jung, Yong-Gyu;Kim, In-Cheol
    • The KIPS Transactions:PartB
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    • v.9B no.5
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    • pp.625-634
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    • 2002
  • In this paper, we conducted various experiments with Bayesian networks in order to analyze clinical data of infertility patients. With these experiments, we tried to find out inter-dependencies among important factors playing the key role in clinical pregnancy, and to compare 3 different kinds of Bayesian network classifiers (including NBN, BAN, GBN) in terms of classification performance. As a result of experiments, we found the fact that the most important features playing the key role in clinical pregnancy (Clin) are indication (IND), stimulation, age of female partner (FA), number of ova (ICT), and use of Wallace (ETM), and then discovered inter-dependencies among these features. And we made sure that BAN and GBN, which are more general Bayesian network classifiers permitting inter-dependencies among features, show higher performance than NBN. By comparing Bayesian classifiers based on probabilistic representation and reasoning with other classifiers such as decision trees and k-nearest neighbor methods, we found that the former show higher performance than the latter due to inherent characteristics of clinical domain. finally, we suggested a feature reduction method in which all features except only some ones within Markov blanket of the class node are removed, and investigated by experiments whether such feature reduction can increase the performance of Bayesian classifiers.

A Classification Analysis using Bayesian Neural Network (베이지안 신경망을 이용한 분류분석)

  • Hwang, Jin-Soo;Choi, Seong-Yong;Jun, Hong-Suk
    • Journal of the Korean Data and Information Science Society
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    • v.12 no.2
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    • pp.11-25
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    • 2001
  • There are several algorithms for classification in modeling relations, patterns, and rules which exist in data. We learn to classify objects on the basis of instances presented to us, not by being given a set of classification rules. The Bayesian learning uses the probability distribution to express our knowledge about unknown parameters and update our knowledge by the law of probability as the evidence gathered from data. Also, the neural network models are designed for predicting an unknown category or quantity on the basis of known attributes by training. In this paper, we compare the misclassification error rates of Bayesian Neural Network method with those of other classification algorithms, CHAID, CART, and QUBST using several data sets.

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