Assessment of Technical Information Quality using Machine Learning

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© 2023 by IJCTT Journal
Volume-71 Issue-9
Year of Publication : 2023
Authors : Arvind Kumar Bhardwaj, Sandeep Rangineni, Divya Marupaka
DOI :  10.14445/22312803/IJCTT-V71I9P105

How to Cite?

Arvind Kumar Bhardwaj, Sandeep Rangineni, Divya Marupaka, "Assessment of Technical Information Quality using Machine Learning ," International Journal of Computer Trends and Technology, vol. 71, no. 9, pp. 33-40, 2023. Crossref, https://doi.org/10.14445/22312803/IJCTT-V71I9P105

Abstract
Even specialists sometimes do not comprehend the reasoning behind the choices made by the most advanced ML systems, making them opaque to end-users in high-stakes fields like medical diagnosis, financial decision-making, and others. Because of this, there has been a rise in attention paid to the problem of explaining ML, both in the academic world and in the fields where it is really useful. From a survey of explanatory theories, we isolate some characteristics. Metrics used for assessments are aimed at achieving the defined qualities of explainability. Developing a set of assessment measures that can be used across all available explanation approaches is impossible. Software's prevalence in consumer goods and services and its complexity have both been on the increase in recent years. As our reliance on software grows, so does the significance of monitoring, improving, and enhancing its quality. In order to monitor and manage different aspects of software systems, software metrics provide a quantifiable technique for doing so. The challenge of predicting software quality may be recast as one of categorization or concept learning within the framework of machine learning. In this study, we provide the groundwork for using machine learning techniques in big software companies for evaluating and forecasting product quality. We also provide evidence that machine learning techniques may be useful in this context. Some objective measures for evaluating image quality are hard and time-consuming to calculate because they rely on explicit modelling of the extremely non-linear nature of human perception. Even though ML-based techniques for visual quality evaluation have been shown to work in a number of studies, the general reliability of these paradigms remains unclear due to their susceptibility to overfitting. A thorough familiarity with the benefits and drawbacks that define learning machines is necessary before attempting to use ML to model perceptual systems. The best procedures are shown and exemplified in this work.

Keywords
Data analysis, Data preparation, Machine learning, Data collection, Visual quality, Software quality.

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