Organizational processes are constantly evolving due to different factors. To take care of this continuous transformation, these processes must be flexible enough, which implies their formalization and optimal design....
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Biometric authentication methods, representing the"something you are" scheme, are considered the most secure approach for gaining access to protected resources. Recent attacks using Machine Learning techniqu...
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This paper attempts to use machine learning algorithms to estimate the energy consumption of appliances in a smart home environment. This work aims to promote awareness among smart home systems and users about their a...
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In [1], authors show that the "square index coefficients" (SIC) of the N-point discrete Fourier transform (DFT), (i.e., Xk√N, k = 0, 1, · · ·, √N − 1) can be compressed from N to √N points,...
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Enterprise Architecture (EA) is a solution to build alignment between business strategy and information technology in dealing with digital transformation that causes fundamental changes for companies and businesses. T...
Enterprise Architecture (EA) is a solution to build alignment between business strategy and information technology in dealing with digital transformation that causes fundamental changes for companies and businesses. The purpose of this study is to examine the trends and progress of EA in responding to the challenges of the digital transformation era, which is carried out through SLRs using the PRISMA method. According to the research findings, implementing EA in businesses serves the following purposes: establishing clear objectives and strategies for the development of business and technology, achieving harmony between business and information technology, time and cost efficiency, and effectiveness in business development processes and information technology. Then, it was concluded that there are nine components of EA, namely, vision, mission, and strategic objectives; business architecture; data & information architecture; information system architecture; infrastructure and network architecture; security architecture; human resources architecture; governance, legal, and compliance; and standards & regulations.
Matching problems under preferences gained significant attention not just in mathematical sciences, but in other fields too since the paper published by Gale and Shapley in 1962-ben on the college admission being mode...
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Matching problems under preferences gained significant attention not just in mathematical sciences, but in other fields too since the paper published by Gale and Shapley in 1962-ben on the college admission being modelled as a matching problem with preferences, and Al Roth's work on matching problems in practice, such as modelling kidney exchanges as matching markets. For their work on matching markets, Roth and Shapley received the 2012 Nobel Memorial Prize in Economics. Today, this interdisciplinary field extended to other parts of mathematics, for example, stability of flows is examined, and focuses on the real-life application of this field. One such application is financial clearing, or portfolio compression. Market participants (banks, organizations, companies, financial agents) sign contracts, creating liabilities between each other, which increases the systemic risk. Large, dense markets commonly can be compressed by reducing obligations without lowering the net notional of each participant (an example is if liabilities make a cycle between agents, then it is possible to reduce each of them altogether without any net notional changing), and our target is to eliminate as much excess notional as possible in practice (excess is defined as the difference between gross and net notional). A limiting factor which may reduce the effectiveness of the compression can be the preferences and priorities of compression participants, who may individually define conditions for the compression, which must be considered when designing the clearing process, otherwise a participant may bail out, resulting in the designed clearing process to be impossible to execute. These markets can be well-represented with edge-weighted graphs. In this paper, I examine cases when preferences and conditions of participants on behalf of clearing are given, e.g., in what order would they pay back their liabilities (a key factor can be rate of interest) and I show a clearing algorithm for these p
The emergence of the Internet of Things (IoT) has witnessed immense growth globally with the use of various devices found in home, transportation, healthcare, and industry. The deployment and implementation of the IoT...
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The aquaculture industry has witnessed a significant surge in technological integration over the past decade, leveraging advancements in the Internet of Things (IoT) and Artificial Intelligence (AI) to enhance product...
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The assessment of an academic’s performance is not solely based on the tangible results achieved. Nonetheless, the formation aspect of the Knowledge Management (KM) process, which arises in the pursuit of outcomes, m...
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ISBN:
(数字)9798331510077
ISBN:
(纸本)9798331510084
The assessment of an academic’s performance is not solely based on the tangible results achieved. Nonetheless, the formation aspect of the Knowledge Management (KM) process, which arises in the pursuit of outcomes, must be acknowledged. This emphasizes the significance of KM process development for academics in achieving their essential responsibilities including teaching and learning, research and publishing, and community service. Consequently, it is essential to develop a KM model for assessing the accomplishments of academics in higher education. An evaluation of academic performance in higher education was conducted to identify the success factors of knowledge management, by considering five key elements viz, knowledge creation, knowledge acquisition, knowledge storage, knowledge sharing, and knowledge application. Accordingly, sixty-five sub-variables were identified as success model factors for evaluating academic knowledge management performance. A K-Means clustering method was utilized to assess the KM qualifications of academics at an Islamic public institution in Indonesia (University X) as the primary study. Herein, a 5-point Likert scale questionnaire was administered to 500 academics and subsequently categorized into three performance levels such as low, medium, and high performance. As a result, 140 academicians were categorized as low KM performance, 139 were clustered as medium qualification, and 221 academicians were positioned in high performance. Furthermore, a recommendation analysis is presented to elucidate the accomplishments of academic credentials for each cluster and propose corrective actions for enhancement. Therefore, the scholars at University X might enhance their knowledge management practices to get a superior quality university.
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