,FOR3705 Assignment 1 (COMPLETE ANSWERS)
Semester 1 2025 - DUE 29 March 2025
QUESTION 1 1.1 Analyse the relationship between data mining
and data analysis in financial crime investigation. (5)
1.2 Assess how these two processes complement each other in
detecting financial crimes. (5) [10]
QUESTION 1
1.1 The Relationship Between Data Mining and
Data Analysis in Financial Crime Investigation
Data mining and data analysis are closely linked
processes in financial crime investigations, each
playing a crucial role in detecting fraudulent
activities:
Data Mining: This involves extracting and
identifying patterns, anomalies, and
relationships in large datasets using algorithms,
artificial intelligence, and machine learning
techniques. It helps uncover hidden trends that
may indicate financial crime.
Data Analysis: This refers to systematically
examining, interpreting, and presenting data to
derive meaningful insights. It uses statistical
, tools and analytical techniques to validate
findings obtained through data mining.
The relationship between the two is symbiotic—
data mining discovers potential risks and anomalies,
while data analysis verifies, refines, and
contextualizes the findings to support legal and
investigative conclusions.
1.2 How These Two Processes Complement Each
Other in Detecting Financial Crimes
Identifying Suspicious Transactions: Data
mining detects unusual transaction patterns,
while data analysis confirms whether they are
fraudulent.
Improving Predictive Capabilities: Data mining
helps predict future fraudulent activities, and
data analysis refines these predictions by
examining past cases.
Enhancing Investigation Efficiency: Data mining
automates the detection process, while data
analysis ensures that findings are accurately
interpreted.
Semester 1 2025 - DUE 29 March 2025
QUESTION 1 1.1 Analyse the relationship between data mining
and data analysis in financial crime investigation. (5)
1.2 Assess how these two processes complement each other in
detecting financial crimes. (5) [10]
QUESTION 1
1.1 The Relationship Between Data Mining and
Data Analysis in Financial Crime Investigation
Data mining and data analysis are closely linked
processes in financial crime investigations, each
playing a crucial role in detecting fraudulent
activities:
Data Mining: This involves extracting and
identifying patterns, anomalies, and
relationships in large datasets using algorithms,
artificial intelligence, and machine learning
techniques. It helps uncover hidden trends that
may indicate financial crime.
Data Analysis: This refers to systematically
examining, interpreting, and presenting data to
derive meaningful insights. It uses statistical
, tools and analytical techniques to validate
findings obtained through data mining.
The relationship between the two is symbiotic—
data mining discovers potential risks and anomalies,
while data analysis verifies, refines, and
contextualizes the findings to support legal and
investigative conclusions.
1.2 How These Two Processes Complement Each
Other in Detecting Financial Crimes
Identifying Suspicious Transactions: Data
mining detects unusual transaction patterns,
while data analysis confirms whether they are
fraudulent.
Improving Predictive Capabilities: Data mining
helps predict future fraudulent activities, and
data analysis refines these predictions by
examining past cases.
Enhancing Investigation Efficiency: Data mining
automates the detection process, while data
analysis ensures that findings are accurately
interpreted.