• 제목/요약/키워드: Learning Data Model

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Predicting Reports of Theft in Businesses via Machine Learning

  • JungIn, Seo;JeongHyeon, Chang
    • International Journal of Advanced Culture Technology
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    • 제10권4호
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    • pp.499-510
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    • 2022
  • This study examines the reporting factors of crime against business in Korea and proposes a corresponding predictive model using machine learning. While many previous studies focused on the individual factors of theft victims, there is a lack of evidence on the reporting factors of crime against a business that serves the public good as opposed to those that protect private property. Therefore, we proposed a crime prevention model for the willingness factor of theft reporting in businesses. This study used data collected through the 2015 Commercial Crime Damage Survey conducted by the Korea Institute for Criminal Policy. It analyzed data from 834 businesses that had experienced theft during a 2016 crime investigation. The data showed a problem with unbalanced classes. To solve this problem, we jointly applied the Synthetic Minority Over Sampling Technique and the Tomek link techniques to the training data. Two prediction models were implemented. One was a statistical model using logistic regression and elastic net. The other involved a support vector machine model, tree-based machine learning models (e.g., random forest, extreme gradient boosting), and a stacking model. As a result, the features of theft price, invasion, and remedy, which are known to have significant effects on reporting theft offences, can be predicted as determinants of such offences in companies. Finally, we verified and compared the proposed predictive models using several popular metrics. Based on our evaluation of the importance of the features used in each model, we suggest a more accurate criterion for predicting var.

Using Machine Learning Technique for Analytical Customer Loyalty

  • Mohamed M. Abbassy
    • International Journal of Computer Science & Network Security
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    • 제23권8호
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    • pp.190-198
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    • 2023
  • To enhance customer satisfaction for higher profits, an e-commerce sector can establish a continuous relationship and acquire new customers. Utilize machine-learning models to analyse their customer's behavioural evidence to produce their competitive advantage to the e-commerce platform by helping to improve overall satisfaction. These models will forecast customers who will churn and churn causes. Forecasts are used to build unique business strategies and services offers. This work is intended to develop a machine-learning model that can accurately forecast retainable customers of the entire e-commerce customer data. Developing predictive models classifying different imbalanced data effectively is a major challenge in collected data and machine learning algorithms. Build a machine learning model for solving class imbalance and forecast customers. The satisfaction accuracy is used for this research as evaluation metrics. This paper aims to enable to evaluate the use of different machine learning models utilized to forecast satisfaction. For this research paper are selected three analytical methods come from various classifications of learning. Classifier Selection, the efficiency of various classifiers like Random Forest, Logistic Regression, SVM, and Gradient Boosting Algorithm. Models have been used for a dataset of 8000 records of e-commerce websites and apps. Results indicate the best accuracy in determining satisfaction class with both gradient-boosting algorithm classifications. The results showed maximum accuracy compared to other algorithms, including Gradient Boosting Algorithm, Support Vector Machine Algorithm, Random Forest Algorithm, and logistic regression Algorithm. The best model developed for this paper to forecast satisfaction customers and accuracy achieve 88 %.

Stress Identification and Analysis using Observed Heart Beat Data from Smart HRM Sensor Device

  • Pramanta, SPL Aditya;Kim, Myonghee;Park, Man-Gon
    • 한국멀티미디어학회논문지
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    • 제20권8호
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    • pp.1395-1405
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    • 2017
  • In this paper, we analyses heart beat data to identify subjects stress state (binary) using heart rate variability (HRV) features extracted from heart beat data of the subjects and implement supervised machine learning techniques to create the mental stress classifier. There are four steps need to be done: data acquisition, data processing (HRV analysis), features selection, and machine learning, before doing performance measurement. There are 56 features generated from the HRV Analysis module with several of them are selected (using own algorithm) after computing the Pearson Correlation Matrix (p-values). The results of the list of selected features compared with all features data are compared by its model error after training using several machine learning techniques: support vector machine, decision tree, and discriminant analysis. SVM model and decision tree model with using selected features shows close results compared to using all recording by only 1% difference. Meanwhile, the discriminant analysis differs about 5%. All the machine learning method used in this works have 90% maximum average accuracy.

IoT-Based Health Big-Data Process Technologies: A Survey

  • Yoo, Hyun;Park, Roy C.;Chung, Kyungyong
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • 제15권3호
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    • pp.974-992
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    • 2021
  • Recently, the healthcare field has undergone rapid changes owing to the accumulation of health big data and the development of machine learning. Data mining research in the field of healthcare has different characteristics from those of other data analyses, such as the structural complexity of the medical data, requirement for medical expertise, and security of personal medical information. Various methods have been implemented to address these issues, including the machine learning model and cloud platform. However, the machine learning model presents the problem of opaque result interpretation, and the cloud platform requires more in-depth research on security and efficiency. To address these issues, this paper presents a recent technology for Internet-of-Things-based (IoT-based) health big data processing. We present a cloud-based IoT health platform and health big data processing technology that reduces the medical data management costs and enhances safety. We also present a data mining technology for health-risk prediction, which is the core of healthcare. Finally, we propose a study using explainable artificial intelligence that enhances the reliability and transparency of the decision-making system, which is called the black box model owing to its lack of transparency.

간호대학생의 직소모형과 플립러닝 융합교육 효과 (Effects of Convergence Education by Jigsaw Model and Flipped Learning in Nursing Students)

  • 김현정;박다혜
    • 융합정보논문지
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    • 제9권3호
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    • pp.36-43
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    • 2019
  • 본 연구의 목적은 간호대학생의 직소모형과 플립러닝 융합교육의 효과를 확인하기 위함이며 비동등성 대조군 전 후 설계 실험연구이다. 연구대상자는 J지역에 소재한 간호학과 3학년 통합실습II를 수강한 81명의 학생으로 자료는 설문지를 이용하여 융합교육 전 후에 수집되었다. 연구결과, 직소모형과 플립러닝 융합교육이 학습만족도(t=-3.783, p=.001)에서 유의하게 나타났다. 따라서 직소모형과 플립러닝 융합교육을 교수학습방법으로 활용하면 학습만족도를 향상시켜 학습성과를 극대화 시킬 수 있을 것으로 사료되며, 본 연구는 그 기초자료로 의의가 있다. 이러한 연구결과를 토대로 직소모형과 플립러닝을 융합한 후속연구와 교수학습 프로그램 개발 및 적용이 필요하다.

부분 방전의 안전도 평가를 위한 예측 모델 설계 (A Study on the Design of Prediction Model for Safety Evaluation of Partial Discharge)

  • 이수일;고대식
    • Journal of Platform Technology
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    • 제8권3호
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    • pp.10-21
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    • 2020
  • 부분 방전 현상은 배전반, 트랜스포머, 스위치 기어 등 고압전력기기에서 많이 발생한다. 부분 방전은 절연체의 수명을 단축하고 절연파괴를 가져오게 되고 이로 인해 정전사고 등 대형피해가 발생하게 된다. 부분 방전 현상은 제품 내부에서 발생하는 경우와 표면에서 발생하는 여러 가지 유형을 가지고 있다. 본 논문에서는 부분 방전 현상에 대한 패턴 및 발생할 확률을 예측할 수 있는 예측 모델을 설계하는 것이다. 설계된 모델을 분석하기 위하여 부분 방전 현상을 발생시키는 시뮬레이터를 활용하여 각각의 부분 방전 유형에 대한 학습 데이터를 UHF 센서를 통하여 수집하였다. 본 논문에서 설계된 예측 모델은 딥 러닝 중 CNN을 기반으로 설계를 하였으며 학습을 통하여 모델을 검증하였다. 설계된 모델에 대한 학습을 위하여 5,000개의 훈련데이터를 만들었으며 훈련데이터의 형태는 UHF센서에서 입력되는 3차원의 원시데이터를 2차원 데이터로 전 처리하여 모델에 대한 입력데이터로 사용하였다. 실험결과, 학습을 통하여 설계된 모델에 대한 정확도는 0.9972의 정확도를 갖는 것을 알 수 있었으며 데이터를 2차원 이미지로 만들어 학습한 경우 보다 그레이 스케일 이미지 형태로 만들어 학습한 경우가 제안된 모델에 대해 정확도가 높음을 알 수 있었다.

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Sense of Social Presence Versus Learning Environment : Centering on Effects of Learning Satisfaction and Achievement in Cyber Education 2.0

  • Yum, Jihwan
    • Journal of Information Technology Applications and Management
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    • 제21권4호
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    • pp.141-156
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    • 2014
  • This study intended to evaluate the viability of cyber education in terms of learning satisfaction and learning achievement. The study integrated two research streams such as social presence model and learning environment model. Where the learning environment model emphasizes the components of learning aids, social presence model considers more deeply the relationships among peers and with instructors. These two research streams have been considered relatively independently. The study integrated these ideas and measured their reliabilities and validities. The results demonstrate that the two constructs are relevantly independent and both of these constructs are very important considerations for the success of cyber education. The study concludes that cyber education 2.0 requires more social presence factors than the learning environment factors such as technological development or new equipments.

절단고정시간과 지연된 S-형태 NHPP 소프트웨어 신뢰모형에 근거한 학습효과특성 비교연구 (The Comparative Study for Property of Learning Effect based on Truncated time and Delayed S-Shaped NHPP Software Reliability Model)

  • 김희철
    • 디지털산업정보학회논문지
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    • 제8권4호
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    • pp.25-34
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    • 2012
  • In this study, in the process of testing before the release of the software products designed, software testing manager in advance should be aware of the testing-information. Therefore, the effective learning effects perspective has been studied using the NHPP software. The finite failure nonhomogeneous Poisson process models presented and applied property of learning effect based on truncated time and delayed S-shaped software reliability. Software error detection techniques known in advance, but influencing factors for considering the errors found automatically and learning factors, by prior experience, to find precisely the error factor setting up the testing manager are presented comparing the problem. As a result, the learning factor is greater than autonomous errors-detected factor that is generally efficient model can be confirmed. This paper, a failure data analysis was performed, using time between failures, according to the small sample and large sample sizes. The parameter estimation was carried out using maximum likelihood estimation method. Model selection was performed using the mean square error and coefficient of determination, after the data efficiency from the data through trend analysis was performed.

DEXA에서 딥러닝 기반의 척골 및 요골 자동 분할 모델 (Automated Ulna and Radius Segmentation model based on Deep Learning on DEXA)

  • 김영재;박성진;김경래;김광기
    • 한국멀티미디어학회논문지
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    • 제21권12호
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    • pp.1407-1416
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    • 2018
  • The purpose of this study was to train a model for the ulna and radius bone segmentation based on Convolutional Neural Networks and to verify the segmentation model. The data consisted of 840 training data, 210 tuning data, and 200 verification data. The learning model for the ulna and radius bone bwas based on U-Net (19 convolutional and 8 maximum pooling) and trained with 8 batch sizes, 0.0001 learning rate, and 200 epochs. As a result, the average sensitivity of the training data was 0.998, the specificity was 0.972, the accuracy was 0.979, and the Dice's similarity coefficient was 0.968. In the validation data, the average sensitivity was 0.961, specificity was 0.978, accuracy was 0.972, and Dice's similarity coefficient was 0.961. The performance of deep convolutional neural network based models for the segmentation was good for ulna and radius bone.

강소농교육 참여 농업인의 직무성과와 학습지향성, 자기효능감, 학습전이의 구조적 관계 (Structural Relations of Learning Orientation, Self-Efficacy, Learning Transfer and Job Performance of Farmers who Participated in the Strong and Small Farms Education)

  • 김사균;양석준
    • 농촌지도와개발
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    • 제22권4호
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    • pp.455-464
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    • 2015
  • The purposes of this study are to explain and identify the frame of structural relations of learning orientation, self-efficacy, learning transfer and job performance of farmers who participated in the strong and small farms education. This is an experimental research with the data collected from 495 farmers who have taken the farm education. Based on the collected data, the study conducted a structural equation modeling(SEM) to confirm the validity and analyze the structural relations of the suggested model. Using measured and latent variables drew from the analyses, the study set a structural equation model and tested the model by analysis of the structural equation modeling with AMOS 18.0. The results found from the empirical analysis can be summarized as follows. 1) Learning orientation and self-efficacy positively influenced job performance through learning transfer. 2) The hypothesis that learning orientation would have direct impact on job performance was not supported. 3) The strong and small farms education is useful to expand learning transfer and to enhance job performance. So, government policy support has to reinforce learning support on farmers in order to achieve high performance of learning and job management through farm educations.