Towards Shrewd Object Visualization Mechanism

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Shahzad Ashraf*

Abstract

In order to measure the accurate outcome of different visualization mechanism it is imperative to adopt a shrewd strategy. Indeed, the outcome of experiment is focusing to assess the value of complex visualization approaches when comparing with alternative methods for data analysis. The interaction between participant prior knowledge and experience, a diverse range of experimental or real -world data sets and a dynamic interaction with the display system presents challenges when seeking timely, affordable and statistically relevant results. A hybrid approach proposed is being proposed to deal with complex interactive data analysis tools. This approach involves a structured survey completed after free engagement with the software platform by expert participants. The survey captures objective and subjective data points relating to the experience with the goal of making an assessment of the software performance supported by statistically significant experimental results. This work is particularly applicable to field of network analysis for cyber security and also military cyber operations and intelligence data analysis.

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Article Details

Ashraf, S. (2020). Towards Shrewd Object Visualization Mechanism. Trends in Computer Science and Information Technology, 5(1), 097–102. https://doi.org/10.17352/tcsit.000030
Research Articles

Copyright (c) 2020 Ashraf S.

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