Detection of fraudulent financial papers by picking a collection of
characteristics using optimization algorithms and classification techniques
based on squirrels
- URL: http://arxiv.org/abs/2211.07747v1
- Date: Wed, 12 Oct 2022 12:34:40 GMT
- Title: Detection of fraudulent financial papers by picking a collection of
characteristics using optimization algorithms and classification techniques
based on squirrels
- Authors: Peyman Mohammadzadeh germi, Mohsen Najarbashi
- Abstract summary: The aim is to develop this method to provide a model for detecting anomalies in financial statements.
Squirrel optimization's meta-exploratory capability, along with the approach's ability to identify abnormalities in financial data, has been shown to be effective in implementing the suggested strategy.
- Score: 0.0
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: To produce important investment decisions, investors require financial
records and economic information. However, most companies manipulate investors
and financial institutions by inflating their financial statements. Fraudulent
Financial Activities exist in any monetary or financial transaction scenario,
whether physical or electronic. A challenging problem that arises in this
domain is the issue that affects and troubles individuals and institutions.
This problem has attracted more attention in the field in part owing to the
prevalence of financial fraud and the paucity of previous research. For this
purpose, in this study, the main approach to solve this problem, an anomaly
detection-based approach based on a combination of feature selection based on
squirrel optimization pattern and classification methods have been used. The
aim is to develop this method to provide a model for detecting anomalies in
financial statements using a combination of selected features with the nearest
neighbor classifications, neural networks, support vector machine, and
Bayesian. Anomaly samples are then analyzed and compared to recommended
techniques using assessment criteria. Squirrel optimization's meta-exploratory
capability, along with the approach's ability to identify abnormalities in
financial data, has been shown to be effective in implementing the suggested
strategy. They discovered fake financial statements because of their expertise.
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