A Novel Framework for Gauging Information Extracted from Smartphones Using Neutrosophic Logic.

Autor: Abou alzahab, R. M., Ismail, Amr, Abd Elkhalik, S. H., Shams, M. Y., El-Bakry, H. M., Salama, A. A.
Předmět:
Zdroj: Neutrosophic Sets & Systems; 2025, Vol. 76, p154-171, 18p
Abstrakt: Smartphones contain a vast amount of information about their users, which can be used as evidence in criminal cases. However, the sheer volume of data can make it challenging for forensic investigators to identify and use the most relevant information. Neutrosophic logic is a generalization of fuzzy logic that allows for uncertainty and vagueness, making it a more potent tool for dealing with the ambiguity of real-world data. The proposed framework aims to identify and utilize the most relevant information for forensic investigators, making it easier to solve criminal cases using Neutrosophic logic. This novel approach provides a more powerful tool for dealing with the ambiguity of smartphone data, ultimately improving the accuracy and effectiveness of forensic investigations. Our research has utilized Neutrosophic logic to evaluate the degree of truth, falsity, or Indeterminacy of this information. Additionally, this study analyzes conversations between individuals using Excel's fuzzy lookup add-in to determine the percentage of truth and false in each conversation. The results were compiled into a dataset and utilized a Neutrosophic Python code to evaluate the information. The results indicate the percentage of truth, false, and Indeterminacy in each conversation and which can be used to determine its admissibility as evidence and which not. [ABSTRACT FROM AUTHOR]
Databáze: Complementary Index