FOR3705
ASSIGNMENT 1
DUE DATE: MARCH 2026
, FOR3705 ASSIGNMENT 1 2026
MEMO SEMESTER 1 2026
DUE MARCH 2026
QUESTION 1
Explain what is meant by ‘data mining’ and discuss how data mining tools are used to
identify patterns and indicators of fraud in large datasets.
Data mining refers to the systematic process of searching and analysing large volumes of data
to discover hidden patterns, trends, relationships, or anomalies that may not be immediately
apparent (Learning Unit 2). In the context of forensic and fraud investigations, data mining is
used to identify irregular activities that could indicate fraudulent behaviour. According to the
Fraud Examiners Manual (2016), data mining is the science of extracting meaningful patterns
from extensive datasets, particularly where manual analysis would be impractical due to the size
and complexity of the data (Fraud Examiners Manual, 2016: 3.701–3.705).
Data mining tools assist fraud investigators by automatically scanning large electronic datasets
such as financial transactions, vendor records, payroll data, and customer databases. These
tools use algorithms and analytical techniques to detect unusual patterns, such as duplicate
payments, abnormal transaction amounts, inconsistent vendor details, or transactions occurring
outside normal business hours. For example, techniques such as Benford’s Law analysis can
be applied to identify irregular number distributions that may suggest data manipulation or
fabricated transactions (Learning Unit 2; Fraud Examiners Manual, 2016: 3.720–3.725).
Data mining tools enable investigators to link data from multiple sources, including public and
non-public records, to identify relationships between individuals, entities, and transactions.
Eeceptions and anomalies, data mining allows fraud examiners to focus their investigative
ASSIGNMENT 1
DUE DATE: MARCH 2026
, FOR3705 ASSIGNMENT 1 2026
MEMO SEMESTER 1 2026
DUE MARCH 2026
QUESTION 1
Explain what is meant by ‘data mining’ and discuss how data mining tools are used to
identify patterns and indicators of fraud in large datasets.
Data mining refers to the systematic process of searching and analysing large volumes of data
to discover hidden patterns, trends, relationships, or anomalies that may not be immediately
apparent (Learning Unit 2). In the context of forensic and fraud investigations, data mining is
used to identify irregular activities that could indicate fraudulent behaviour. According to the
Fraud Examiners Manual (2016), data mining is the science of extracting meaningful patterns
from extensive datasets, particularly where manual analysis would be impractical due to the size
and complexity of the data (Fraud Examiners Manual, 2016: 3.701–3.705).
Data mining tools assist fraud investigators by automatically scanning large electronic datasets
such as financial transactions, vendor records, payroll data, and customer databases. These
tools use algorithms and analytical techniques to detect unusual patterns, such as duplicate
payments, abnormal transaction amounts, inconsistent vendor details, or transactions occurring
outside normal business hours. For example, techniques such as Benford’s Law analysis can
be applied to identify irregular number distributions that may suggest data manipulation or
fabricated transactions (Learning Unit 2; Fraud Examiners Manual, 2016: 3.720–3.725).
Data mining tools enable investigators to link data from multiple sources, including public and
non-public records, to identify relationships between individuals, entities, and transactions.
Eeceptions and anomalies, data mining allows fraud examiners to focus their investigative