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Journal : TELKOMNIKA (Telecommunication Computing Electronics and Control)

Fortifying Big Data infrastructures to Face Security and Privacy Issues Tole Sutikno; Deris Stiawan; Imam Much Ibnu Subroto
TELKOMNIKA (Telecommunication Computing Electronics and Control) Vol 12, No 4: December 2014
Publisher : Universitas Ahmad Dahlan

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.12928/telkomnika.v12i4.957

Abstract

The explosion of data available on the internet is very increasing in recent years. One of the most challenging issues is how to effectively manage such a large amount of data and identify new ways to analyze large amounts of data and unlock information. Organizations must find a way to manage their data in accordance with all relevant privacy regulations without making the data inaccessible and unusable. Cloud Security Alliance (CSA) has released that the top 10 challenges, which are as follows: 1) secure computations in distributed programming frameworks, 2) security best practices for non-relational data stores, 3) secure data storage and transactions logs, 4) end-point input validation/filtering, 5) real-time security monitoring, 6) scalable and composable privacy-preserving data mining and analytics, 7) cryptographically enforced data centric security, 8) granular access control, 9) granular audits, 10) data Provenance. The challenges themselves can be organized into four distinct aspects of the Big Data ecosystem.
Plagiarism Detection through Internet using Hybrid Artificial Neural Network and Support Vectors Machine Imam Much Ibnu Subroto; Ali Selamat
TELKOMNIKA (Telecommunication Computing Electronics and Control) Vol 12, No 1: March 2014
Publisher : Universitas Ahmad Dahlan

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.12928/telkomnika.v12i1.4

Abstract

Currently, most of the plagiarism detections are using similarity measurement techniques. Basically, a pair of similar sentences describes the same idea. However, not all like that, there are also sentences that are similar but have opposite meanings. This is one problem that is not easily solved by use of the technique similarity. Determination of dubious value similarity threshold on similarity method is another problem. The plagiarism threshold was adjustable, but it means uncertainty. Another problem, although the rules of plagiarism can be understood together but in practice, some people have a different opinion in determining a document, whether or not classified as plagiarism. Of the three problems, a statistical approach could possibly be the most appropriate solution. Machine learning methods like k-nearest neighbors (KNN), support vector machine (SVM), artificial neural networks (ANN) is a technique that is commonly used in solving the problem based on statistical data. This method of learning process based on statistical data to be smart resembling intelligence experts. In this case, plagiarism is data that has been validated by experts. This paper offers a hybrid approach of SVM method for detecting plagiarism. The data collection method in this work using an Internet search to ensure that a document is in the detection is up-to-date. The measurement results based on accuracy, precision and recall show that the hybrid machine learning does not always result in better performance. There is no better and vice versa. Overall testing of the four hybrid combinations concluded that the hybrid ANN-SVM method is the best performance in the case of plagiarism.
The Architecture of Indonesian Publication Index: A Major Indonesian Academic Database Imam Much Ibnu Subroto; Tole Sutikno; Deris Stiawan
TELKOMNIKA (Telecommunication Computing Electronics and Control) Vol 12, No 1: March 2014
Publisher : Universitas Ahmad Dahlan

Show Abstract | Download Original | Original Source | Check in Google Scholar | DOI: 10.12928/telkomnika.v12i1.15

Abstract

Journal articles are required all researchers as references to improve the quality of research so that the results are better than existing studies. The presence of many journal indexers that collect articles from many publishers and repositories are very helpful to lecturers and researchers to locate articles in their specific areas of interest. The main issues in the indexing include: (i) the selection and collection process articles data, (ii) the management of indexing based on source and relevance of science (iii) the accuracy and speed of the search process, and (iv) the relationship between the articles each other called citation. The desirable by readers from the indexer is to get relevant and good-quality articles easily and accurately. While the interest of the journal managers is to supply their article which reader preferred then hope many cited to their journals. This is where the position of an indexer to bridge publisher and reader. This paper presents the architecture of Indonesian Publications Index (IPI) as the bridge. This architecture is designed with three layers. The layers are the data collection layer, storage layer, and service layer. The functionality of the first layer is IPI collaboration with publishers, the second layer is the index management system, the third layer is a service to the readers. Service layer built on a variety of applications such as web based applications, mobile applications and e-library.
Co-Authors A Azidny A. A. Uliansyah, Beta Abdelhadi Husein Aburawis Abdul Rohman Soleh Achmad Chaidir Adi Ariyo Munandar Adib Ulil Anwar Agung Suryowibowo Ahmad Syarif Hidayatullah Akhsinatul Laeliyah Alfano Endra Wardhana Alfiah Nurul Fatimah Intan Pertiwi Ali Selamat Ali Selamat Andhika Bayu Pratama Andi Riansyah Arief Marwanto Arifin, Bustanul Arifin, Zaenal Arigama, Rizki Artini DP, Sri Aser Anou Ashar, Firbaya Mutiara Asih Widi Harini Ayunda Miftakhul Laili Azmia, Hisnan Faudan Badieah Assegaf Badie’ah, Badie’ah Badie’ah, Badie’ah Bahrun Niam Bahtiar, Thoriq Basit, Abdul Budi Cahyo Wibowo Bustanul Arifin Bustanul Arifin Chaerul Haviana, Sam F. Chanif, Muhammad Nur Daniyah, Daniyah Darso D Dedy Kurniadi Deris Stiawan Deshinta Arrova Dewi Dwi Zunia Arianto Eka Nuryanto Budi Susila Eko Saputra, Wardianto F Feriawan Fadhilah, Achmad Naufal Fahmi Arif Dewoputro Fahrizal, Fery Fajar Yumono Fajarini, Intan Putri Nur Febrian Rio Hartono Fitri Anindyahadi Goli Arji Hardjana, Irawan Pudja Hud Munawar Ilhamsyah, Muhamad Reynaldi Imam Hendi Susanto Irfan Fadhil Irwan Sukendar Irwan Sukendar Iska Yanuartanti khaled jemah basher Kharis Abdullah La Ode Muhamad Idris Laksamana Rajendra Haidar Lestari Kurniawati, Lestari Lina Handayani Mahfud Ade Purwanto Maryuliana Maryuliana Maulida, Aina Nurul Mekacahyani, Rakhimatulfitria Milasanti, Denina Moch Taufik Moloud Abdar Muhamad Haddin Muhamad Qomaruddin Muhammad Fadelillah Muhammad Khosyiin Muhammad Nur Gofinda Muhammad Qomaruddin Muhammad Rahman Hakim Munawar Agus Riyadi Mustafa, Mustafa Najmah, Najmah Nova Catur Anggi Cahyo Nur Ramadhanif Nur'aini, Intan Nurhidayah, Eva Nurnasikha, Kusuma Nuzulia Khoiriyah Poetro, Bagus Satrio Waluyo Pranoto Wibowo Prasetyo, Muhammad Krisna Heri Putra, Allief Suryatama Jaya Putra, Yustian Dikma Eka Putri, Sarah Dwi Qirom Qirom Rachmad Gabels Raden Abdul Rahman Ratna Supradewi Riansyah, Andi Riky Maulana Firdaus Rini Oktarina Riyadh Alnajih Alsayih Riyani, Dita Rizki Arigama Rohman, Andhi Rony, Zahara Tussoleha Rusmal Firmansyah S Suprayogi Saadah, Farikhatus Sam F. Chaerul Haviana Sam Farisa Chaerul Haviana Sapto Utomo Sharareh R. Niakan Kalhori Sigit Ardianto Sofia Murtiani Sri Artini DP Sri Arttini Dwi Prasetyawati Sri Mulyono Suharyo Herwasto Sukendar, Irwan Supriyanto S Suryani Alifah Suyanto Suyanto Tole Sutikno Tri Basuki Kurniawan Trisnawarman, Trisnawarman Ulil Albab Ushuludin, Mohammad Wardianto Eko Saputra Wicaksono, Yusuf Arief Wiwiek Fatmawati Yahya Hidayatullah Yasni, Loura Yusuf Arief Wicaksono Zaenal Arifin