Please use this identifier to cite or link to this item: https://rda.sliit.lk/handle/123456789/4112
Title: A Machine Learning Approach for Context-Aware Input/Output Validation in Mobile Applications
Authors: De Dilva, H.K.B
Keywords: mobile applications
input/output validation
machine learning
anomaly detection
context-aware
user experience
Issue Date: Dec-2024
Publisher: SLIIT
Abstract: There is still insecurity in mobile application since, input/output validation is not well implemented since the rule-based methods cannot adapt the new attacking forms and the new environments. Thus, this work puts forward a novel approach for context-aware input/output validation in mobile applications to overcome these challenges with the use of machine learning. The work is targeted towards investigating a sequence of previous data, application context, and user input for identifying abnormal patterns in real-time using a machine learning model. In line with the formulated model, an adaptive validation system will be employed so that the validation criteria are fluid with the detected context and possible threats. To measure the impact and satisfaction level of the proposed system, this study will use both penetration test and users. Penetration testing will establish the effectiveness of the model in discovering and even preventing security threats while user research will determine the ease of use of the application with the implemented security method. The hope is that this research will be of significant value in formulating mobile applications that are more secure while at the same time providing users with a positive experience. In conclusion, this machine learning integrated method of validation seeks to enhance application security as well as satisfaction levels of the users.
URI: https://rda.sliit.lk/handle/123456789/4112
Appears in Collections:2024

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