Chapter 6 - Data-Driven Fraud Protection Flashcards

1
Q

fraud vs errors

A

errors:
unintentional
will be found throughout any data set

fraud:
is intentional
found in very few data sets
is like finding a ‘needle in a haystack’

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2
Q

proactive detection vs reactive detection

A

proactive is seeking it out

reactive is waiting until you have a problem

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3
Q

pros and cons of proactive fraud detection

A

pro - can find frauds that nobody knew about

con-needle in a haystack, can be time-consuming and often not fruitful

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4
Q

pros and cons of reactive detection

A

you dont figure out the fraud until reasons are found, and after it’s been going on for some time

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5
Q

6 steps of proactive fraud detection

A
  1. understanding the business
  2. identify possible frauds that could exist
  3. Catalog possible fraud symptoms
  4. Use technology to gather data about those symptoms
  5. analyze results
  6. investigate symptoms
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6
Q

How to catalog fraud symptoms?

A

divide them into one of the 6 groups…

  1. acct anomalies
  2. internal control weakness
  3. analytical anomalies
  4. extravagant lifestyle
  5. unusual behavior
  6. tips or complaints
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7
Q

if you were to investigate a kickback fraud, classify these symptoms:

  • increasing prices
  • larger order quantities
  • increasing purchases from favored vendor
  • decreasing quality
  • decreasing purchases from other vendors
A

analytical symptoms

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8
Q

classify these symptoms:
buyer is an outsider
buyers work habits change unexpected

A

behavioral sympt-om

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9
Q

classify these symptoms:

  • buy lives beyond means
  • buyer buys an expensive car
  • buyer builds a more expensive home
A

lifestyle symptoms

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10
Q

classify these symptoms:

  • all transactions are with one buyer and one vendor
  • unapproved vendors being used
A

control symptoms

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11
Q

classify these symptoms:

1099 from vendor to one of the buyers relatives

A

document symptom

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12
Q

classify these symptoms:

  • anonymous complaints about the vendor or buyer
  • quality complaints about purchased products
A

tips and complaints

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13
Q

Benford’s Law

A

stout of any given data set, the first and second digit of any given numbers will likely be a 1 or 2. not so true for 3rd digit on

the first digit will be 1 30% of the time, progressing to only being a 9 in 5% of instances

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14
Q

what is digital analysis?

A

the art of analyzing digits that make up numbers in data sets.

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15
Q

what is a strength and weakness of digital analysis?

A

strength - it’s inexpensive

weakness - correlation doesn’t necessarily mean causation and can lead to a waste of time

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