• 제목/요약/키워드: Software classification

검색결과 890건 처리시간 0.023초

컴포넌트 유통시장 활성화를 위한 분류체계 모델링 (Component classification modeling for component circulation market activation)

  • 이서정;조은숙
    • 한국전자거래학회지
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    • 제7권3호
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    • pp.49-60
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    • 2002
  • Many researchers have studied component technologies with concept, methodology and implementation for partial business domain, however there are rarely researches for component classification to manage these systematically. In this paper, we suggest a component classification model, which can make component reusability higher and can derive higher productivity of software development. We take four focuses generalization, abstraction, technology and size. The generalization means which category a component belongs to. The abstraction means how specific a component encapsulates its inside. The technology means which platform for hardware environment a component can be plugged in. The size means the physical component volume.

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Extraction of User Preference for Video Stimuli Using EEG-Based User Responses

  • Moon, Jinyoung;Kim, Youngrae;Lee, Hyungjik;Bae, Changseok;Yoon, Wan Chul
    • ETRI Journal
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    • 제35권6호
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    • pp.1105-1114
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    • 2013
  • Owing to the large number of video programs available, a method for accessing preferred videos efficiently through personalized video summaries and clips is needed. The automatic recognition of user states when viewing a video is essential for extracting meaningful video segments. Although there have been many studies on emotion recognition using various user responses, electroencephalogram (EEG)-based research on preference recognition of videos is at its very early stages. This paper proposes classification models based on linear and nonlinear classifiers using EEG features of band power (BP) values and asymmetry scores for four preference classes. As a result, the quadratic-discriminant-analysis-based model using BP features achieves a classification accuracy of 97.39% (${\pm}0.73%$), and the models based on the other nonlinear classifiers using the BP features achieve an accuracy of over 96%, which is superior to that of previous work only for binary preference classification. The result proves that the proposed approach is sufficient for employment in personalized video segmentation with high accuracy and classification power.

소프트웨어 재사용을 지원하는 확장된 패싯 분류 방식과 혼합형 검색 모델 (An Extended Faceted Classification Scheme and Hybrid Retrieval Model to Support Software Reuse)

  • 강문설;김병기
    • 한국정보처리학회논문지
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    • 제1권1호
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    • pp.23-37
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    • 1994
  • 본 논문에서는 소프트웨어 부품을 분류하여 라이브러리에 저장하고, 사용자의 요 구에 따라 효율적으로 검색할 수 있도록 지원하는 확장된 패싯 분류 방식과 혼합형 검색 모델을 제안하고, 프로토타입 시스템을 설계하여 구현하였다. 분류 방식의 설계 를 위하여 부품들의 기본적인 클래스를 분석하여 필요한 항목을 식별한다음, 항목들의 특성을 분석하고 패싯을 결정하여 구품 식별자를 구성한다. 그리고 부품의 기본적인 특성을 기준으로 응용 영역별로 클러스터링시켜 라이브러리에 저장하고, 부품의 특성 을 표현하기 위하여 패싯과 항목들에 가중치를 할당하였다. 부품의 검색을 위하여, 질 의에 의한 검색 모델 및 유사한 바품들을 쉽게 검색할 수 있도록 가중치와 유사도를 이용하였다. 제안한 분류 방식과 검색 모델은 분류 과정이 간단하고, 유사한 부품을 쉽게 식별할 수 있었으며, 또한 질의 작성이 간단해지고, 출력될 부품들의 크기와 순 서의 조절이 가능하여 검색 효율이 개선되었다.

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음악에 따른 감정분류을 위한 EEG특징벡터 비교 (Comparison of EEG Feature Vector for Emotion Classification according to Music Listening)

  • 이소민;변성우;이석필
    • 전기학회논문지
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    • 제63권5호
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    • pp.696-702
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    • 2014
  • Recently, researches on analyzing relationship between the state of emotion and musical stimuli using EEG are increasing. A selection of feature vectors is very important for the performance of EEG pattern classifiers. This paper proposes a comparison of EEG feature vectors for emotion classification according to music listening. For this, we extract some feature vectors like DAMV, IAV, LPC, LPCC from EEG signals in each class related to music listening and compare a separability of the extracted feature vectors using Bhattacharyya distance. So more effective feature vectors are recommended for emotion classification according to music listening.

Android malicious code Classification using Deep Belief Network

  • Shiqi, Luo;Shengwei, Tian;Long, Yu;Jiong, Yu;Hua, Sun
    • KSII Transactions on Internet and Information Systems (TIIS)
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    • 제12권1호
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    • pp.454-475
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    • 2018
  • This paper presents a novel Android malware classification model planned to classify and categorize Android malicious code at Drebin dataset. The amount of malicious mobile application targeting Android based smartphones has increased rapidly. In this paper, Restricted Boltzmann Machine and Deep Belief Network are used to classify malware into families of Android application. A texture-fingerprint based approach is proposed to extract or detect the feature of malware content. A malware has a unique "image texture" in feature spatial relations. The method uses information on texture image extracted from malicious or benign code, which are mapped to uncompressed gray-scale according to the texture image-based approach. By studying and extracting the implicit features of the API call from a large number of training samples, we get the original dynamic activity features sets. In order to improve the accuracy of classification algorithm on the features selection, on the basis of which, it combines the implicit features of the texture image and API call in malicious code, to train Restricted Boltzmann Machine and Back Propagation. In an evaluation with different malware and benign samples, the experimental results suggest that the usability of this method---using Deep Belief Network to classify Android malware by their texture images and API calls, it detects more than 94% of the malware with few false alarms. Which is higher than shallow machine learning algorithm clearly.

ISO/IEC 9126-2 메트릭을 활용한 소프트웨어 정량적 평가 지표 도출 (Quantitative Evaluation Index Derivation of the Software Based on ISO/IEC 9126-2 Metrics)

  • 조성호;장중순
    • 한국신뢰성학회지:신뢰성응용연구
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    • 제16권2호
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    • pp.134-146
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    • 2016
  • Purpose: Many domestic companies have to make out quantitative evaluation table in their proposal when they conduct the software R&D project. However, most of companies have a difficulty to select the evaluation items and criteria, also to derive a quantitative results. Therefore, we propose a method to derive the quantitative evaluation index by utilizing the ISO/IEC 9126-2. Methods: Analyzing ISO/IEC 9126-2, and we classify the quality metrics as high-classification and sub-classification for Web/App software, Embedded software and Installation software. Next, Conduct the metrics selection survey depending on importance and necessity. Then, carry out the case study. Verify the correspondence between evaluation items and criteria from original suggestion of company and from outcome by utilizing the ISO/IEC 9126-2 quality metrics. Results: It is possible to classify into two metrics, one for common software or one another for only special software. Furthermore, there is quality metrics that is more important and more necessary depending upon characteristics of the software. Conclusion: ISO/IEC 9126-2 quality metrics can be used to make an evaluation items and criteria for quantitative evaluation table of software product.

An Approach to Applying Multiple Linear Regression Models by Interlacing Data in Classifying Similar Software

  • Lim, Hyun-il
    • Journal of Information Processing Systems
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    • 제18권2호
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    • pp.268-281
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    • 2022
  • The development of information technology is bringing many changes to everyday life, and machine learning can be used as a technique to solve a wide range of real-world problems. Analysis and utilization of data are essential processes in applying machine learning to real-world problems. As a method of processing data in machine learning, we propose an approach based on applying multiple linear regression models by interlacing data to the task of classifying similar software. Linear regression is widely used in estimation problems to model the relationship between input and output data. In our approach, multiple linear regression models are generated by training on interlaced feature data. A combination of these multiple models is then used as the prediction model for classifying similar software. Experiments are performed to evaluate the proposed approach as compared to conventional linear regression, and the experimental results show that the proposed method classifies similar software more accurately than the conventional model. We anticipate the proposed approach to be applied to various kinds of classification problems to improve the accuracy of conventional linear regression.

Verilog-HDL을 이용한 다중필드 패킷분류 알고리듬의 설계 검증 (The verification of the hardware implementation of packet classification algorithm on multiple fields by Veriolg-HDL)

  • 홍성표;김준형;최원호
    • 대한전기학회:학술대회논문집
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    • 대한전기학회 2003년도 학술회의 논문집 정보 및 제어부문 B
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    • pp.852-855
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    • 2003
  • This paper reports the RFC(Recursive Flow Classification) algorithm that is available on multiple fields. It is easy to be implemented by both software and hardware. For high speed classification of packets, the implementation of RFC is essential by hardware. Hence, in this paper, RFC algorithm is simulated by Verilog-HDL, and it verify the efficiency of the algorithm. The result shows that the algorithm can perform a packet classification within several cycles. It is not only much faster than software implementation but also enough to support OC192c.

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User Interface Application for Cancer Classification using Histopathology Images

  • Naeem, Tayyaba;Qamar, Shamweel;Park, Peom
    • 시스템엔지니어링학술지
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    • 제17권2호
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    • pp.91-97
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    • 2021
  • User interface for cancer classification system is a software application with clinician's friendly tools and functions to diagnose cancer from pathology images. Pathology evolved from manual diagnosis to computer-aided diagnosis with the help of Artificial Intelligence tools and algorithms. In this paper, we explained each block of the project life cycle for the implementation of automated breast cancer classification software using AI and machine learning algorithms to classify normal and invasive breast histology images. The system was designed to help the pathologists in an automatic and efficient diagnosis of breast cancer. To design the classification model, Hematoxylin and Eosin (H&E) stained breast histology images were obtained from the ICIAR Breast Cancer challenge. These images are stain normalized to minimize the error that can occur during model training due to pathological stains. The normalized dataset was fed into the ResNet-34 for the classification of normal and invasive breast cancer images. ResNet-34 gave 94% accuracy, 93% F Score, 95% of model Recall, and 91% precision.

A Hybrid Soft Computing Technique for Software Fault Prediction based on Optimal Feature Extraction and Classification

  • Balaram, A.;Vasundra, S.
    • International Journal of Computer Science & Network Security
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    • 제22권5호
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    • pp.348-358
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    • 2022
  • Software fault prediction is a method to compute fault in the software sections using software properties which helps to evaluate the quality of software in terms of cost and effort. Recently, several software fault detection techniques have been proposed to classifying faulty or non-faulty. However, for such a person, and most studies have shown the power of predictive errors in their own databases, the performance of the software is not consistent. In this paper, we propose a hybrid soft computing technique for SFP based on optimal feature extraction and classification (HST-SFP). First, we introduce the bat induced butterfly optimization (BBO) algorithm for optimal feature selection among multiple features which compute the most optimal features and remove unnecessary features. Second, we develop a layered recurrent neural network (L-RNN) based classifier for predict the software faults based on their features which enhance the detection accuracy. Finally, the proposed HST-SFP technique has the more effectiveness in some sophisticated technical terms that outperform databases of probability of detection, accuracy, probability of false alarms, precision, ROC, F measure and AUC.