• 제목/요약/키워드: Supervised Data

검색결과 651건 처리시간 0.03초

Semi-supervised regression based on support vector machine

  • Seok, Kyungha
    • Journal of the Korean Data and Information Science Society
    • /
    • 제25권2호
    • /
    • pp.447-454
    • /
    • 2014
  • In many practical machine learning and data mining applications, unlabeled training examples are readily available but labeled ones are fairly expensive to obtain. Therefore semi-supervised learning algorithms have attracted much attentions. However, previous research mainly focuses on classication problems. In this paper, a semi-supervised regression method based on support vector regression (SVR) formulation that is proposed. The estimator is easily obtained via the dual formulation of the optimization problem. The experimental results with simulated and real data suggest superior performance of the our proposed method compared with standard SVR.

제조 공정 결함 탐지를 위한 MixMatch 기반 준지도학습 성능 분석 (Performance Analysis of MixMatch-Based Semi-Supervised Learning for Defect Detection in Manufacturing Processes)

  • 김예준;정예은;김용수
    • 산업경영시스템학회지
    • /
    • 제46권4호
    • /
    • pp.312-320
    • /
    • 2023
  • Recently, there has been an increasing attempt to replace defect detection inspections in the manufacturing industry using deep learning techniques. However, obtaining substantial high-quality labeled data to enhance the performance of deep learning models entails economic and temporal constraints. As a solution for this problem, semi-supervised learning, using a limited amount of labeled data, has been gaining traction. This study assesses the effectiveness of semi-supervised learning in the defect detection process of manufacturing using the MixMatch algorithm. The MixMatch algorithm incorporates three dominant paradigms in the semi-supervised field: Consistency regularization, Entropy minimization, and Generic regularization. The performance of semi-supervised learning based on the MixMatch algorithm was compared with that of supervised learning using defect image data from the metal casting process. For the experiments, the ratio of labeled data was adjusted to 5%, 10%, 25%, and 50% of the total data. At a labeled data ratio of 5%, semi-supervised learning achieved a classification accuracy of 90.19%, outperforming supervised learning by approximately 22%p. At a 10% ratio, it surpassed supervised learning by around 8%p, achieving a 92.89% accuracy. These results demonstrate that semi-supervised learning can achieve significant outcomes even with a very limited amount of labeled data, suggesting its invaluable application in real-world research and industrial settings where labeled data is limited.

Filtering Effect in Supervised Classification of Polarimetric Ground Based SAR Images

  • Kang, Moon-Kyung;Kim, Kwang-Eun;Cho, Seong-Jun;Lee, Hoon-Yol;Lee, Jae-Hee
    • 대한원격탐사학회지
    • /
    • 제26권6호
    • /
    • pp.705-719
    • /
    • 2010
  • We investigated the speckle filtering effect in supervised classification of the C-band polarimetric Ground Based SAR image data. Wishart classification method was used for the supervised classification of the polarimetric GB-SAR image data and total of 6 kinds of speckle filters were applied before supervised classification, which are boxcar, Gaussian, Lopez, IDAN, the refined Lee, and the refined Lee sigma filters. For each filters, we changed the filtering kernel size from $3{\times}3$ to $9{\times}9$ to investigate the filtering size effect also. The refined Lee filter with the kernel size of bigger than $5{\times}5$ showed the best result for the Wishart supervised classification of polarimetric GB-SAR image data. The result also showed that the type of trees could be discriminated by Wishart supervised classification of polarimetric GB-SAR image data.

스마트폰 로봇의 위치 인식을 위한 준 지도식 학습 기법 (Semi-supervised Learning for the Positioning of a Smartphone-based Robot)

  • 유재현;김현진
    • 제어로봇시스템학회논문지
    • /
    • 제21권6호
    • /
    • pp.565-570
    • /
    • 2015
  • Supervised machine learning has become popular in discovering context descriptions from sensor data. However, collecting a large amount of labeled training data in order to guarantee good performance requires a great deal of expense and time. For this reason, semi-supervised learning has recently been developed due to its superior performance despite using only a small number of labeled data. In the existing semi-supervised learning algorithms, unlabeled data are used to build a graph Laplacian in order to represent an intrinsic data geometry. In this paper, we represent the unlabeled data as the spatial-temporal dataset by considering smoothly moving objects over time and space. The developed algorithm is evaluated for position estimation of a smartphone-based robot. In comparison with other state-of-art semi-supervised learning, our algorithm performs more accurate location estimates.

멀티 모달 지도 대조 학습을 이용한 농작물 병해 진단 예측 방법 (Multimodal Supervised Contrastive Learning for Crop Disease Diagnosis)

  • 이현석;여도엽;함규성;오강한
    • 대한임베디드공학회논문지
    • /
    • 제18권6호
    • /
    • pp.285-292
    • /
    • 2023
  • With the wide spread of smart farms and the advancements in IoT technology, it is easy to obtain additional data in addition to crop images. Consequently, deep learning-based crop disease diagnosis research utilizing multimodal data has become important. This study proposes a crop disease diagnosis method using multimodal supervised contrastive learning by expanding upon the multimodal self-supervised learning. RandAugment method was used to augment crop image and time series of environment data. These augmented data passed through encoder and projection head for each modality, yielding low-dimensional features. Subsequently, the proposed multimodal supervised contrastive loss helped features from the same class get closer while pushing apart those from different classes. Following this, the pretrained model was fine-tuned for crop disease diagnosis. The visualization of t-SNE result and comparative assessments of crop disease diagnosis performance substantiate that the proposed method has superior performance than multimodal self-supervised learning.

Semi-Supervised Learning Using Kernel Estimation

  • Seok, Kyung-Ha
    • Journal of the Korean Data and Information Science Society
    • /
    • 제18권3호
    • /
    • pp.629-636
    • /
    • 2007
  • A kernel type semi-supervised estimate is proposed. The proposed estimate is based on the penalized least squares loss and the principle of Gaussian Random Fields Model. As a result, we can estimate the label of new unlabeled data without re-computation of the algorithm that is different from the existing transductive semi-supervised learning. Also our estimate is viewed as a general form of Gaussian Random Fields Model. We give experimental evidence suggesting that our estimate is able to use unlabeled data effectively and yields good classification.

  • PDF

혼합 데이터 마이닝 기법인 불일치 패턴 모델의 특성 연구 (Characteristics on Inconsistency Pattern Modeling as Hybrid Data Mining Techniques)

  • 허준;김종우
    • Journal of Information Technology Applications and Management
    • /
    • 제15권1호
    • /
    • pp.225-242
    • /
    • 2008
  • PM (Inconsistency Pattern Modeling) is a hybrid supervised learning technique using the inconsistence pattern of input variables in mining data sets. The IPM tries to improve prediction accuracy by combining more than two different supervised learning methods. The previous related studies have shown that the IPM was superior to the single usage of an existing supervised learning methods such as neural networks, decision tree induction, logistic regression and so on, and it was also superior to the existing combined model methods such as Bagging, Boosting, and Stacking. The objectives of this paper is explore the characteristics of the IPM. To understand characteristics of the IPM, three experiments were performed. In these experiments, there are high performance improvements when the prediction inconsistency ratio between two different supervised learning techniques is high and the distance among supervised learning methods on MDS (Multi-Dimensional Scaling) map is long.

  • PDF

Study on semi-supervised local constant regression estimation

  • Seok, Kyung-Ha
    • Journal of the Korean Data and Information Science Society
    • /
    • 제23권3호
    • /
    • pp.579-585
    • /
    • 2012
  • Many different semi-supervised learning algorithms have been proposed for use wit unlabeled data. However, most of them focus on classification problems. In this paper we propose a semi-supervised regression algorithm called the semi-supervised local constant estimator (SSLCE), based on the local constant estimator (LCE), and reveal the asymptotic properties of SSLCE. We also show that the SSLCE has a faster convergence rate than that of the LCE when a well chosen weighting factor is employed. Our experiment with synthetic data shows that the SSLCE can improve performance with unlabeled data, and we recommend its use with the proper size of unlabeled data.

준지도학습 기반 반도체 공정 이상 상태 감지 및 분류 (Semi-Supervised Learning for Fault Detection and Classification of Plasma Etch Equipment)

  • 이용호;최정은;홍상진
    • 반도체디스플레이기술학회지
    • /
    • 제19권4호
    • /
    • pp.121-125
    • /
    • 2020
  • With miniaturization of semiconductor, the manufacturing process become more complex, and undetected small changes in the state of the equipment have unexpectedly changed the process results. Fault detection classification (FDC) system that conducts more active data analysis is feasible to achieve more precise manufacturing process control with advanced machine learning method. However, applying machine learning, especially in supervised learning criteria, requires an arduous data labeling process for the construction of machine learning data. In this paper, we propose a semi-supervised learning to minimize the data labeling work for the data preprocessing. We employed equipment status variable identification (SVID) data and optical emission spectroscopy data (OES) in silicon etch with SF6/O2/Ar gas mixture, and the result shows as high as 95.2% of labeling accuracy with the suggested semi-supervised learning algorithm.

준지도 커널능형회귀모형에 관한 연구 (A study on semi-supervised kernel ridge regression estimation)

  • 석경하
    • Journal of the Korean Data and Information Science Society
    • /
    • 제24권2호
    • /
    • pp.341-353
    • /
    • 2013
  • 데이터마이닝과 기계학습의 응용분야에서는 라벨 없는 자료를 이용하는 연구가 많이 진행되고 있다. 이러한 연구는 분류문제에 집중되었다가 최근에 회귀분석문제로 관심이 모아지고 있다. 본 연구에서는 커널능형회귀모형 형태의 준지도 회귀분석 방법을 제시한다. 제안된 방법은 기존의 전환적 방법과는 달리 라벨 없는 자료의 라벨을 추정하는 과정을 필요로 하지 않기 때문에 선택해야 할 모수의 수도 적고, 계산과정도 단순할 뿐 아니라 일반화에 강점이 있다. 모의실험과 실제 자료 분석을 통해 제안된 방법이 라벨 없는 자료를 잘 활용하여 라벨 있는 자료만 이용하는 방법보다 더 우수한 추정을 하는 것을 볼 수 있었다.