ئەز   Rowaida Khaleel Ibrahim

Specialties

Computer

Education

MSc degree

Computer لە Zakho

2020

Published Journal Articles

A Comprehensive Study of Malware Detection in Android Operating Systems
A Comprehensive Study of Malware Detection in Android Operating Systems

Android is now the world's (or one of the world’s) most popular operating system. More... See more

Android is now the world's (or one of the world’s) most popular operating system. More and more malware assaults are taking place in Android applications. Many security detection techniques based on Android Apps are now available. The open environmental feature of the Android environment has given Android an extensive appeal in recent years. The growing number of mobile devices are incorporated in many aspects of our everyday lives. This paper gives a detailed comparison that summarizes and analyses various detection techniques. This work examines the current status of Android malware detection methods, with an emphasis on Machine Learning￾based classifiers for detecting malicious software on Android devices. Android has a huge number of apps that may be downloaded and used for free. Consequently, Android phones are more susceptible to malware. As a result, additional research has been done in order to develop effective malware detection methods. To begin, several of the currently available Android malware detection approaches are carefully examined and classified based on their detection methodologies. This study examines a wide range of machine-learning-based methods to detecting Android malware covering both types dynamic and static

 2021-07
Asian Journal of Research in Computer Science
A Comprehensive Study of Caching Effects on Fog Computing Performance

The rapid advancement in the Internet of things applications generates a considerable amount of data... See more

The rapid advancement in the Internet of things applications generates a considerable amount of data and requires additional computing power. These are serious challenges that directly impact the performance, latency, and network breakdown of cloud computing. Fog Computing can be depended on as an excellent solution to overcome some related problems in cloud computing. Fog computing supports cloud computing to become nearer to the Internet of Things. The fog's main task is to access the data generated by the IoT devices near the edge. The data storage and data processing are performed locally at the fog nodes instead of achieving that at cloud servers. Fog computing presents high-quality services and fast response time. Therefore, Fog computing can be the best solution for the Internet of things to present a practical and secure service for various clients. Fog computing enables sufficient management for the services and resources by keeping the devices closer to the network edge. In this paper, we review various computing paradigms, features of fog computing, an in-depth reference architecture of fog with its various levels, a

 2021-07
Qubahan Academic Journal (Issue : 3) (Volume : 1)
Efficiency of semantic web implementation on cloud computing: A review

Semantic web and cloud technology systems have been critical components in creating and deploying applications... See more

Semantic web and cloud technology systems have been critical components in creating and deploying applications in various fields. Although they are self-contained, they can be combined in various ways to create solutions, which has recently been discussed in depth. We have shown a dramatic increase in new cloud providers, applications, facilities, management systems, data, and so on in recent years, reaching a level of complexity that indicates the need for new technology to address such tremendous, shared, and heterogeneous services and resources. As a result, issues with portability, interoperability, security, selection, negotiation, discovery, and definition of cloud services and resources may arise. Semantic Technologies, which has enormous potential for cloud computing, is a vital way of re-examining these issues. This paper explores and examines the role of Semantic-Web Technology in the Cloud from a variety of sources. In addition, a "cloud-driven" mode of interaction illustrates how we can construct the semantic web and provide automated semantical annotations to web applications on a large scale by leveraging Cloud computing properties and advantages.

 2021-06
Asian Journal of Research in Computer Science
IoT and ICT based smart water management, monitoring and controlling system: A review

Water is a basic human need in all economic operations. Farmland, renewable energy, the industrial... See more

Water is a basic human need in all economic operations. Farmland, renewable energy, the industrial industry, and mining are all critical economic areas. Water supplies are under severe strain. With the population increase, the requirement for water from competing economic sectors is increased. So, there is not enough water left to meet human needs and maintain environmental flows that maintain the integrity of our ecosystems. Underground water is becoming depleted in many sectors, making now and future generations near the point of being deprived of protection from the increasing climate variability. Therefore, the critical role that information technology methods and internet communication technologies (ICT) play in water resources managing to limit the excessive waste of fresh water and to control and monitor water pollution. In this paper, we have to review research that uses the internet of things (IoT) as a communication technology that controls the preservation of the available amount of water and not wastes it by homeowners and farmers. In contrast, they use water, and we have also reviewed some researches that preserve water quality and reduce its pollution.

 2021-05
Current Journal of Applied Science and Technology
Unified Ontology Implementation of Cloud Computing for Distributed Systems

The ability to provide massive data storage, applications, platforms plus many other services leads to... See more

The ability to provide massive data storage, applications, platforms plus many other services leads to make the number of clouds services providers been increased. Providing different types of services and resources by various providers implies to get a high level of complexity. This complexity leads to face many challenges related to security, reliability, discovery, service selection, and interoperability. In this review, we focus on the use of many technologies and methods for utilizing the semantic web and ontology in cloud computing and distributed system as a solution for these challenges. Cloud computing does not have an own search engine to satisfy the needs of the providers of the cloud service. Using ontology enhances the cloud computing self￾motivated via an intelligent framework of SaaS and consolidating the security by providing resources access control. The use RDF and OWL semantic technologies in the modeling of a multi￾agent system are very effective in increases coordination the interoperability. One of the most efficient proposed frameworks is building cloud computing marketplace that collects the consumer's requirements of cloud services provider and managing these needs and resources to provide quick and reliable services.

 2020-11
Adv. sci. technol. eng. syst.j (Issue : 5) (Volume : 4)
Survey on Semantic Similarity Based on Document Clustering

Clustering is a branch of data mining which involves grouping similar data in a collection... See more

Clustering is a branch of data mining which involves grouping similar data in a collection known as cluster. Clustering can be used in many fields, one of the important applications is the intelligent text clustering. Text clustering in traditional algorithms was collecting documents based on keyword matching, this means that the documents were clustered without having any descriptive notions. Hence, non-similar documents were collected in the same cluster. The key solution for this problem is to cluster documents based on semantic similarity, where the documents are clustered based on the meaning and

 2019-11

Thesis

2021-08-20
Semantic Similarity for Document Clustering using TFIDF and K-mean

The constant success of the internet made the number of text documents in electronic forms... See more

The constant success of the internet made the number of text documents in electronic forms increases hugely. The techniques to group these documents into meaningful clusters are becoming critical missions. Clustering is one of the data mining techniques, which can be used for mining data by gathering similar data in groups. The traditional method of clustering documents was based on statistical features, and the clustering was done using syntactical notion rather than semantical one. However, these techniques resulted in dis-similar data to be gathered in the same group due to problems of polysemy and synonymy. Now, these problems can be solved with clustering based on semantic similarity. This thesis proposes a system to cluster documents based on semantic similarity.

 2021

Conference

2021 4th International Iraqi Conference on Engineering Technology and Their Applications (IICETA)
 2022-02
Design a Clustering Document based Semantic Similarity System using TFIDF and K-Mean

Abstract: The continuing success of the Internet has led to an enormous rise in the volume of electronic text records. The strategies for grouping these records into coherent groups are increasingly important. Traditional text clustering... See more

Abstract: The continuing success of the Internet has led to an enormous rise in the volume of electronic text records. The strategies for grouping these records into coherent groups are increasingly important. Traditional text clustering methods are focused on statistical characteristics, with a syntactic rather than semantical concept used to do clustering. A new approach for collecting documentation based on textual similarities is presented in this paper. The method is accomplished by defining, tokenizing, and stopping text synopses from Wikipedia and IMDB datasets using the NLTK dictionary. Then, a vector space is created using TFIDF with the K-mean algorithm to carry out clustering. The results were shown as an interactive website.

2021 4th International Iraqi Conference on Engineering Technology and Their Applications (IICETA)
 2022-02
Comprehensive Study of Moving from Grid and Cloud Computing Through Fog and Edge Computing towards Dew Computing

Abstract: Dew Computing (DC) is a comparatively modern field with a wide range of applications. By examining how technological advances such as fog, edge and Dew computing, and distributed intelligence force us to reconsider traditional... See more

Abstract: Dew Computing (DC) is a comparatively modern field with a wide range of applications. By examining how technological advances such as fog, edge and Dew computing, and distributed intelligence force us to reconsider traditional Cloud Computing (CC) to serve the Internet of Things. A new dew estimation theory is presented in this article. The revised definition is as follows: DC is a software and hardware cloud-based company. On-premises servers provide autonomy and collaborate with cloud networks. Dew Calculation aims to enhance the capabilities of on-premises and cloud-based applications. These categories can result in the development of new applications. In the world, there has been rapid growth in Information and Communication Technology (ICT), starting with Grid Computing (GC), CC, Fog Computing (FC), and the latest Edge Computing (EC) technology. DC technologies, infrastructure, and applications are described. We’ll go through the newest developments in fog networking, QoE, cloud at the edge, platforms, security, and privacy. The dew-cloud architecture is an option concerning the current client-server architecture, where two servers are located at opposite ends. In the absence of an Internet connection, a dew server helps users browse and track their details. Data are primarily stored as a local copy on the dew server that starts the Internet and is synchronized with the cloud master copy. The local dew pages, a local online version of the current website, can be browsed, read, written, or added to the users. Mapping between different Local Dew sites has been made possible using the dew domain name scheme and dew domain redirection.

2021 International Conference on Advanced Computer Applications (ACA)
 2021-12
Clustering Document based Semantic Similarity System using TFIDF and K-Mean

Abstract:The steady success of the Internet has led to an enormous rise in the volume of electronic text records. Sensitive tasks are increasingly being used to organize these materials in meaningful bundles. The standard clustering... See more

Abstract:The steady success of the Internet has led to an enormous rise in the volume of electronic text records. Sensitive tasks are increasingly being used to organize these materials in meaningful bundles. The standard clustering approach of documents was focused on statistical characteristics and clustering using the syntactic rather than semantic notion. This paper provides a new way to group documents based on textual similarities. Text synopses are found, identified, and stopped using the NLTK dictionary from Wikipedia and IMDB datasets. The next step is to build a vector space with TFIDF and cluster it using an algorithm K-mean. The results were obtained based on three proposed scenarios: 1) no treatment. 2) preprocessing without derivation, and 3) Derivative processing. The results showed that good similarity ratios were obtained for the internal evaluation when using (txt-sentoken data set) for all K values. In contrast, the best ratio was obtained with K = 20. In addition, as an external evaluation, purity measures were obtained and presented V measure of (txt). -sentoken) and the accuracy scale of (nltk-Reuter) gave the best results in three scenarios for K = 20 as subjective evaluation, the maximum time consumed with the first scenario (no preprocessing), and the minimum time recorded with the second scenario (excluding derivation).

2020 International Conference on Advanced Science and Engineering (ICOASE)
 2021-05
Clustering Documents based on Semantic Similarity using HAC and K-Mean Algorithms

The continuing success of the Internet has greatly increased the number of text documents in electronic formats. The techniques for grouping these documents into meaningful collections have become mission-critical. The traditional method of compiling documents... See more

The continuing success of the Internet has greatly increased the number of text documents in electronic formats. The techniques for grouping these documents into meaningful collections have become mission-critical. The traditional method of compiling documents based on statistical features and grouping did use syntactic rather than semantic. This article introduces a new method for grouping documents based on semantic similarity. This process is accomplished by identifying document summaries from Wikipedia and IMDB datasets, then deriving them using the NLTK dictionary. A vector space afterward is modeled with TFIDF, and the clustering is performed using the HAC and K-mean algorithms. The results are compared and visualized as an interactive webpage.

Presentation

Fifth International Iraqi Conference on Engineering Technology (5th IICETA-2022)_online
2022-06
Clustering Document Based on Semantic Similarity Using Graph Base Spectral

The Internet's continued growth has resulted in a significant rise in the amount of electronic text documents. Grouping these materials into meaningful collections has become crucial. The old approach of document compilation based on statistical... See more

The Internet's continued growth has resulted in a significant rise in the amount of electronic text documents. Grouping these materials into meaningful collections has become crucial. The old approach of document compilation based on statistical characteristics and categorization relied on syntactic rather than semantic information. This article introduces a unique approach for classifying texts based on their semantic similarity. This is performed by extracting document summaries from the Wikipedia and IMDB databases and then utilizing the NLTK dictionary to generate them. Following that, a vector space is modelled using TFIDF, and clustering is accomplished using Spectral methods. The results are compared with previews' work.

 2022
University of zakho department of computer
2022-03
Semantic Similarity for Document Clustering using TFIDF and K-mean

Clustering is an unsupervised learning problem. Its major task is to collect similar data in a cluster in such a way that the data in the same cluster is more similar to each other than... See more

Clustering is an unsupervised learning problem. Its major task is to collect similar data in a cluster in such a way that the data in the same cluster is more similar to each other than thus in other clusters . Text document clustering term is an important way that converts a large dataset of documents into meaningful clusters in a way that the documents in the same cluster are more similar to each other .However, in traditional text document clustering, the documents were clustering without having a description concept, which means the similarity of concepts were ignored in there that caused unsimilar documents reside in the same cluster . Semantic Web technology plays a major role for solving this problem.

 2022