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Improving fraud detection with semi-supervised topic modeling and keyword integration
by
Sánchez, Marco
, Urquiza, Luis
in
Aircraft accidents & safety
/ Algorithms
/ Apexes
/ Aviation
/ Classification
/ Classification methods
/ Computational linguistics
/ Data mining
/ Data Mining and Machine Learning
/ Dirichlet problem
/ Documents
/ Eating disorders
/ Fraud
/ Fraud triangle
/ Human behavior
/ Image retrieval
/ Information retrieval
/ Knowledge
/ Language processing
/ Libraries
/ Machine learning
/ Methods
/ Modelling
/ Natural language interfaces
/ Natural language processing
/ Performance evaluation
/ Rare diseases
/ Security and Privacy
/ Semantics
/ Sensors
/ Social networks
/ Text Mining
/ Topic modeling
/ Tourism
/ Training
/ Wilson, Kim
2024
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Improving fraud detection with semi-supervised topic modeling and keyword integration
by
Sánchez, Marco
, Urquiza, Luis
in
Aircraft accidents & safety
/ Algorithms
/ Apexes
/ Aviation
/ Classification
/ Classification methods
/ Computational linguistics
/ Data mining
/ Data Mining and Machine Learning
/ Dirichlet problem
/ Documents
/ Eating disorders
/ Fraud
/ Fraud triangle
/ Human behavior
/ Image retrieval
/ Information retrieval
/ Knowledge
/ Language processing
/ Libraries
/ Machine learning
/ Methods
/ Modelling
/ Natural language interfaces
/ Natural language processing
/ Performance evaluation
/ Rare diseases
/ Security and Privacy
/ Semantics
/ Sensors
/ Social networks
/ Text Mining
/ Topic modeling
/ Tourism
/ Training
/ Wilson, Kim
2024
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Improving fraud detection with semi-supervised topic modeling and keyword integration
by
Sánchez, Marco
, Urquiza, Luis
in
Aircraft accidents & safety
/ Algorithms
/ Apexes
/ Aviation
/ Classification
/ Classification methods
/ Computational linguistics
/ Data mining
/ Data Mining and Machine Learning
/ Dirichlet problem
/ Documents
/ Eating disorders
/ Fraud
/ Fraud triangle
/ Human behavior
/ Image retrieval
/ Information retrieval
/ Knowledge
/ Language processing
/ Libraries
/ Machine learning
/ Methods
/ Modelling
/ Natural language interfaces
/ Natural language processing
/ Performance evaluation
/ Rare diseases
/ Security and Privacy
/ Semantics
/ Sensors
/ Social networks
/ Text Mining
/ Topic modeling
/ Tourism
/ Training
/ Wilson, Kim
2024
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Improving fraud detection with semi-supervised topic modeling and keyword integration
Journal Article
Improving fraud detection with semi-supervised topic modeling and keyword integration
2024
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Overview
Fraud detection through auditors’ manual review of accounting and financial records has traditionally relied on human experience and intuition. However, replicating this task using technological tools has represented a challenge for information security researchers. Natural language processing techniques, such as topic modeling, have been explored to extract information and categorize large sets of documents. Topic modeling, such as latent Dirichlet allocation (LDA) or non-negative matrix factorization (NMF), has recently gained popularity for discovering thematic structures in text collections. However, unsupervised topic modeling may not always produce the best results for specific tasks, such as fraud detection. Therefore, in the present work, we propose to use semi-supervised topic modeling, which allows the incorporation of specific knowledge of the study domain through the use of keywords to learn latent topics related to fraud. By leveraging relevant keywords, our proposed approach aims to identify patterns related to the vertices of the fraud triangle theory, providing more consistent and interpretable results for fraud detection. The model’s performance was evaluated by training with several datasets and testing it with another one that did not intervene in its training. The results showed efficient performance averages with a 7% increase in performance compared to a previous job. Overall, the study emphasizes the importance of deepening the analysis of fraud behaviors and proposing strategies to identify them proactively.
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