Comprehensive Performance Evaluation Of Network Intrusion System Using Machine Learning Approach |
Author : Muhammad Shahzad Haroon, Dr Syed Sajjad Hussain |
Abstract | Full Text |
Abstract :Over the last three decades, network devices
are increasing due to technology like the Internet of
Things (IoT) and Bring Your Own Device (BYOD). These
rapidly increasing devices open many venues for network
attacks whereas modern attacks are more sophisticated
and complex to detect. To detect these attacks efficiently,
we have used recently available dataset UNSW-NB15.
UNSW-NB15 is developed according to the modern flow
of network traffic with 49 features including 9 types of
network attacks. To analyze the traffic pattern for the
intrusion detection system(IDS), we have used multiple
classifiers to test the accuracy. From the dataset
UNSWNB15, we have used medium and strong correlated
features. All the results from different classifiers are
compared. Prominent results are achieved by ensemble
bagged tree which classifies normal and individual attacks
with an accuracy of 79%. |
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Designing Dispersion Flattened Photonic Crystal Fiber For Wideband Applications |
Author : Kubra Bashir, Rabia Zaman, Irfan Ahmed, Muhammad Imran Aslam |
Abstract | Full Text |
Abstract :In this paper, we proposed a dispersion
flattened photonic crystal fiber (PCF) for having very low
dispersion for wide bandwidth as well as low confinement
loss. The proposed fiber has been numerically analyzed
for Silica core as well as Borosilicate crown glass core
with square lattice air holes. In the proposed design we
have used elliptical air holes in the inner ring whereas
outer rings are circular. Finite Element Method based
software tool is used to analyze the proposed design. This
comparison of core materials deduces that Borosilicate
crown glass PCF produces negative dispersion, making it
a good candidate to be used as Dispersion Compensating
Fiber (DCF), whereas Silica PCF provides nearly zero
dispersion at wavelength range 1.35 µm to 1.70 µm |
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PERFORMANCE ANALYSIS OF MPLS AND TRADITIONAL IP IN NODE SCALABLE NETWORKS |
Author : Muhammad Arshad, Lala Rukh, Hussain Shah, Bilal Khan, Nazir Jan, Shahzad Ali |
Abstract | Full Text |
Abstract :Multiprotocol label switching is the latest and
developing technology in the world of the internet. It
speeds up the network by using the technique of label
instead of an IP address. It provides the reliable
transmission of data with high speed and low delay. For
efficient use of network utilization MPLS has a key
feature of QoS. Due to the effective utilization of network
resources, minimum delay and predictable performance
MPLS technology make it more appropriate for
implementing multimedia type applications. In this
research, the performance of MPLS technology is
compared with the traditional IP network for multimedia
traffic in node scalable networks. For simulating and
comparing the performance of both technologies OPNET
modular 14.5 is used. This comparison is done on the
basis of network performance parameters such as packet
loss/ traffic drop, end-to-end delay, and throughput.
Finally, the results have been evaluated which show that
MPLS technology provides better performance as
compared to IP in node scalable environment |
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DISCOURSE BASED OPINION MINING ON ROMAN URDU DATA |
Author : Dr. Zareen Sharf, Dr. Husnain Mansoor Ali |
Abstract | Full Text |
Abstract :The use of Roman Urdu (in the form of web and user-generated content) is a common mode of communication on social media. Content like comments, reviews, feedbacks and social networking posts have been generated in Roman Urdu in large volumes. But this area is not much worked on in terms of sentiment and opinion analysis. Roman Urdu (the scripting style for Urdu language) is one of the limited resource languages that brings forward the challenges and problems for performing Opinion Mining. Adequate opinion mining is not just about understanding the overall sentiment of a document or a single paragraph, but it is also important to be able to extract sentiments on a very granular level and relate each sentiment to the aspect it corresponds to. On the more advanced level, the analysis can go beyond only positive or negative attitude and identify complex attitude types. We, therefore, developed a model for performing discourse-based opinion mining, so we could also consider the impact that various discourse elements have on the overall sentiment of the text. Our work differs from the existing body of knowledge in that not much work has been carried out on processing of Roman Urdu data for opinion mining considering discourse elements. Since our work focuses on performing discourse-based opinion mining it can be considered as first attempt in this direction as none of the literature surveyed revealed discoursebased analysis of Roman Urdu text. The overall gist of this research work is to have insights of the
nature of user-generated content in Roman Urdu and to build necessary resources and devise algorithms to make an advancement in Sentiment Analysis and Classification for Roman Urdu. |
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Process Monitoring Using Canonical Correlation Analysis |
Author : Yin SHEN, Shakir Muhammad SHAIKH, Shahid KARIM, VISHAL KUMAR |
Abstract | Full Text |
Abstract :Principal component analysis (PCA) and partial least square (PLS) used for fault diagnosis and process monitoring for systems. It is expected that the information to be examined is not self-connected. However, the most largescale chemical industrial plants are nonlinear in nature so these techniques do not cope with them, invalid in nature. To fulfil the gap, there is need to develop an algorithm which can manage these nonlinearities of the process. The demands of
industrial products are increasing rapidly so different adaptable techniques are being proposed. Canonical Correlation Analysis (CCA) is multivariate data-driven methodology which takes input-output both process data into consideration.
Most industrial systems assumed that the data to be analysed is Gaussian in nature.However, it is not due to the nonlinearity’sreal systems in nature. In this work, an algorithm is developed that can monitor the system process using CCA
with control limit that is achieved from the kernel density estimation by estimating probability density function (pdf). |
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