8 research outputs found

    Classification of Pulmonary Nodules by Using Hybrid Features

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    Early detection of pulmonary nodules is extremely important for the diagnosis and treatment of lung cancer. In this study, a new classification approach for pulmonary nodules from CT imagery is presented by using hybrid features. Four different methods are introduced for the proposed system. The overall detection performance is evaluated using various classifiers. The results are compared to similar techniques in the literature by using standard measures. The proposed approach with the hybrid features results in 90.7% classification accuracy (89.6% sensitivity and 87.5% specificity)

    The k-means algorithm: A comprehensive survey and performance evaluation

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    © 2020 by the authors. Licensee MDPI, Basel, Switzerland. The k-means clustering algorithm is considered one of the most powerful and popular data mining algorithms in the research community. However, despite its popularity, the algorithm has certain limitations, including problems associated with random initialization of the centroids which leads to unexpected convergence. Additionally, such a clustering algorithm requires the number of clusters to be defined beforehand, which is responsible for different cluster shapes and outlier effects. A fundamental problem of the k-means algorithm is its inability to handle various data types. This paper provides a structured and synoptic overview of research conducted on the k-means algorithm to overcome such shortcomings. Variants of the k-means algorithms including their recent developments are discussed, where their effectiveness is investigated based on the experimental analysis of a variety of datasets. The detailed experimental analysis along with a thorough comparison among different k-means clustering algorithms differentiates our work compared to other existing survey papers. Furthermore, it outlines a clear and thorough understanding of the k-means algorithm along with its different research directions

    Component Thermodynamical Selection Based Gene Expression Programming for Function Finding

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    Gene expression programming (GEP), improved genetic programming (GP), has become a popular tool for data mining. However, like other evolutionary algorithms, it tends to suffer from premature convergence and slow convergence rate when solving complex problems. In this paper, we propose an enhanced GEP algorithm, called CTSGEP, which is inspired by the principle of minimal free energy in thermodynamics. In CTSGEP, it employs a component thermodynamical selection (CTS) operator to quantitatively keep a balance between the selective pressure and the population diversity during the evolution process. Experiments are conducted on several benchmark datasets from the UCI machine learning repository. The results show that the performance of CTSGEP is better than the conventional GEP and some GEP variations

    Studies in particle swarm optimization technique for global optimization.

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    Ph. D. University of KwaZulu-Natal, Durban 2013.Abstract available in the digital copy.Articles found within the main body of the thesis in the print version is found at the end of the thesis in the digital version

    The relationship between corporate governance mechanisms and company attributes and accounting conservatism of Jordanian listed companies

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    This study examines the relationship between the corporate governance mechanisms related to the ownership structure, board of directors, audit committee and auditor quality along with company attributes and the accounting conservatism of Jordanian listed companies. The theoretical foundation of such a relationship was provided by five comprehensive theories which are the agency theory, the positive accounting theory, the resource dependence theory, stewardship and the signaling theory. The data were obtained from the annual reports of 348 Jordanian companies from 2009 to 2011. Upon using the multiple regression analysis, the results show that the relationship between the corporate governance mechanisms and accounting conservatism was somewhat varied. Fifteen hypotheses were developed in this study. Seven of them were significant while eight were not. For ownership structure, institutional and foreign ownership were significant while family and managerial ownership were not statistically significant. Board independence, financial expertise and board tenure were significant, while board size, CEO and multiple directorships were not significant due to the higher level of P-value compared to 0.05. On the other hand, audit committee and auditor independence were statistically significant to conservatism, while auditor brand name, company size and debt contract were reported to be negatively and not significantly related to conservatism. These results indicate that corporate governance plays a vital role in enhancing the level of conservatism and reducing agency conflict. Further, regulator bodies in Jordan should increase the effectiveness of corporate governance in Jordanian companies in order to enhance the quality of financial reports. In addition, this study opens up avenues for more studies on accounting conservatism not only in Jordan, but also in other countries where this area of study is lacking. Furthermore, it opens up opportunities and provides avenues for more in-depth research related to the quality of financial reports

    Applied (Meta)-Heuristic in Intelligent Systems

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    Engineering and business problems are becoming increasingly difficult to solve due to the new economics triggered by big data, artificial intelligence, and the internet of things. Exact algorithms and heuristics are insufficient for solving such large and unstructured problems; instead, metaheuristic algorithms have emerged as the prevailing methods. A generic metaheuristic framework guides the course of search trajectories beyond local optimality, thus overcoming the limitations of traditional computation methods. The application of modern metaheuristics ranges from unmanned aerial and ground surface vehicles, unmanned factories, resource-constrained production, and humanoids to green logistics, renewable energy, circular economy, agricultural technology, environmental protection, finance technology, and the entertainment industry. This Special Issue presents high-quality papers proposing modern metaheuristics in intelligent systems

    Multi-Agent Systems

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    A multi-agent system (MAS) is a system composed of multiple interacting intelligent agents. Multi-agent systems can be used to solve problems which are difficult or impossible for an individual agent or monolithic system to solve. Agent systems are open and extensible systems that allow for the deployment of autonomous and proactive software components. Multi-agent systems have been brought up and used in several application domains

    Emerging Informatics

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    The book on emerging informatics brings together the new concepts and applications that will help define and outline problem solving methods and features in designing business and human systems. It covers international aspects of information systems design in which many relevant technologies are introduced for the welfare of human and business systems. This initiative can be viewed as an emergent area of informatics that helps better conceptualise and design new world-class solutions. The book provides four flexible sections that accommodate total of fourteen chapters. The section specifies learning contexts in emerging fields. Each chapter presents a clear basis through the problem conception and its applicable technological solutions. I hope this will help further exploration of knowledge in the informatics discipline
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