Rheo Malani

Work place: Department of Information Technology, PoliteknikNegeriSamarinda, East Kalimantan, Indonesia

E-mail: anaogie@gmail.com

Website:

Research Interests: Applied computer science, Computer systems and computational processes, Robotics, Computer Architecture and Organization, Computer Networks, Theoretical Computer Science

Biography

Rheo Malani. Born in Samarinda, August 23, 1978. Completed undergraduate (S1) majoring in Computer Science at STIMIK WidyaCipthaDarma of Samarinda in 2003. Completed postgraduate study of Information System Department at Diponegoro University Semarang in 2013. Beginning in 2005 working as a lecturer in the Department of Information Technology, State Polytechnic of Samarinda until now.

In 2003 he was a programmer at the company IntSys Tech, and in 2008 worked as the head of IT in the organization of "PON 2008" East Kalimantan.

My Scopus ID : 57202205135

SINTA ID: 6024712

Research that has been published in SCOPUS is 2018:

  • Image mosaicing by using random seeds generation based on fuzzy membership function
  • Total asset prediction of the large Indonesian bank using adaptive artificial neural network back-propagation
  • Modelling of contractor selection using fuzzy-TOPSIS
  • Rainfall prediction using fuzzy inference system for preliminary micro-hydro power plant planning
  • Comparison of Canny and Centroid on Face Recognition Process using Gray Level Cooccurrence Matrix and Probabilistic Neural Network
  • Secured Data Transmission using Metadata Logger Manipulation Approach

Research that has been published in SCOPUS is 2019:

  • Prediction of the Topographic Shape of the Ground Surface Using IDW Method through the Rectangular-Neighborhood Approach
  • Optimization of the spatial interpolation based on the sliding neighborhood operation method by using K-mean clustering for predicting the topographic shape of the ground surface
  • Assessment of the average level of TOEFL score by using SOM (Self organizing map) and K-mean clustering techniques

Areas of interest:

Computer Science, Computer Networks, Robotics & Artificial Intelligent.

Author Articles
Implementation of the Naive Bayes Classifier Method for Potential Network Port Selection

By Rheo Malani Arief Bramanto Wicaksono Putra Muhammad Rifani

DOI: https://doi.org/10.5815/ijcnis.2020.02.04, Pub. Date: 8 Apr. 2020

The rapid development of information technology has also accompanied by an increase in activities classified as dangerous and irresponsible, such as information theft. In the field of network systems, this kind of activity is called intrusion. Intrusion Detection System (IDS) is a system that prevents intrusion and protecting both hosts and network assets. At present, the development of various techniques and methods for implementing IDS is a challenge, along with the increasing pattern of intrusion activities. The various methods used in IDS have generally classified into two types, namely Signature-Based Intrusion Detection System (SIDS) and the Anomaly-Based Intrusion Detection System (AIDS).
When a personal computer (PC) connected to the Internet, a malicious attacker tries to enter and exploit it. One of the most commonly used techniques in accessing open ports which are the door for applications and services that use connections in TCP/IP networks. Open ports indicate a particular process where the server provides certain services to clients and vice versa.
This study applies the Naïve Bayes classifier to predict port numbers that have the potential to change activity status from "close" to "open" and vice versa. Predictable potential port numbers can be a special consideration for localizing monitoring activities in the future. The method applied is classified as AIDS because it based on historical data of port activity obtained through the port scan process, regardless of the type of attack. Naïve Bayes classifier is determined to have two event conditions that predict the occurrence of specific port numbers when they occur in specified duration and activity status. The study results have shown a 70% performance after being applied to selected test data.

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