Title: STATISTICAL SAMPLING FOR AUDITORS
1STATISTICAL SAMPLING FOR AUDITORS
Jeanne H. Yamamura CPA, MIM, PHD
2OBJECTIVES
- Review of sampling concepts
- Types of sampling
- Attribute sampling
- Steps
- Nonstatistical attribute sampling
- Compliance auditing
- Monetary unit sampling
- Steps
- Nonstatistical monetary unit sampling
- Classical sampling
- Ratio estimation
- Difference estimation
3AUDIT SAMPLING
- Application of an audit procedure to less than
100 of the items in a population - Account balance
- Class of transactions
- Examination on a test basis
- Key Sample is intended to be representative of
the population.
4SAMPLING RISK
- Possibility that the sample is NOT representative
of the population - As a result, auditor will reach WRONG conclusion
- Decision errors
- Type I Risk of incorrect rejection
- Type II Risk of incorrect acceptance
5TYPE I RISK OF INCORRECT REJECTION
- Internal control Risk that sample supports
conclusion that control is NOT operating
effectively when it really is - AKA Risk of underreliance, risk of assessing
control risk too high - Substantive testing Risk that sample supports
conclusion that balance is NOT properly stated
when it really is
6TYPE II RISK OF INCORRECT ACCEPTANCE
- Internal control Risk that sample supports
conclusion that control is operating effectively
when it really isnt - AKA Risk of overreliance, risk of assessing
control risk too low - Substantive testing Risk that sample supports
conclusion that balance is properly stated when
it really isnt
7WHICH RISK POSES THE GREATER DANGER TO AN AUDITOR?
- Risk of incorrect rejection
- Efficiency
- Risk of incorrect acceptance
- Effectiveness
- Auditor focus on Type II
- Also provides coverage for Type I
8NONSAMPLING RISK
- Risk of auditor error
- Sample wrong population
- Fail to detect a misstatement when applying audit
procedure - Misinterpret audit result
- Controlled through
- Adequate training
- Proper planning
- Effective supervision
9SAMPLE SIZE FACTORS
- Desired level of assurance (confidence level)
- Acceptable defect rate (tolerable error)
- Historical defect rate (expected error)
10CONFIDENCE LEVEL
- Complement of sampling risk
- 5 sampling risk, 95 confidence level
- How much reliance will be placed on test results
- The greater the reliance and the more severe the
consequences of Type II error, the higher the
confidence level needed - Sample size increases with confidence level
(decreases with sampling risk)
11TOLERABLE ERROR AND EXPECTED ERROR
- Precision the gap between tolerable error and
expected error - AKA Allowance for sampling risk
- Sample size increases as precision decreases
12WHEN DO YOU SAMPLE?
- Inspection of tangible assets, e.g., inventory
observation - Inspection of records or documents, e.g.,
internal control testing - Reperformance, e.g., internal control testing
- Confirmation, e.g., verification of AR balances
13WHEN IS SAMPLING INAPPROPRIATE?
- Selection of all items with a particular
characteristic, e.g., all disbursements gt
100,000 - Testing only one or a few items, e.g., automated
IT controls, walk throughs - Analytical procedures
- Scanning
- Inquiry
- Observation
14WALKTHROUGHS
- Designed to provide evidence regarding the design
and implementation of controls - Can provide some assurance of operating
effectiveness BUT - Depends on nature of control (automated or
manual) - Depends on nature of auditors procedures to test
control (also includes inquiry and observation
combined with strong control environment and
adequate monitoring) - Walkthough sample of 1
15STATISTICAL VS NONSTATISTICAL SAMPLING
- Statistical sampling
- Statistical computation of sample size
- Statistical evaluation of results
- Nonstatistical sampling
- Sample sizes should be approximately the same (AU
350.22) - Sample sizes must be sufficient to support
reliance on controls and assertions being tested
16WHEN IS SAMPLING NONSTATISTICAL?
- If sample size determined judgmentally
- If sample selected haphazardly
- If sample results evaluated judgmentally
17TYPES OF SAMPLING
- Attribute sampling
- Monetary unit sampling
- Classical variables sampling
18ATTRIBUTE SAMPLING
- Used to estimate proportion of a population that
possesses a specific characteristic - Most commonly used for T of C
- Can also be used for dual purpose testing (T of C
and Substantive T of T)
19MONETARY-UNIT SAMPLING
- AKA probability proportional to size (PPS)
sampling, cumulative monetary unit sampling - Used to estimate dollar amount of misstatement
20CLASSICAL VARIABLES SAMPLING
- Uses normal distribution theory to identify
amount of misstatement - Useful when large number of differences expected
- Smaller sample size than MUS
- Effective for both overstatements and
understatements - Can easily incorporate zero balances
21IN-CLASS EXERCISE NO. 1
22IN-CLASS EXERCISE NO. 1
Test Involves Sampling? Attribute / Variable / MUS / NA
1 Yes Attribute (ST of T)
2 No NA
3 Yes Attribute (T of C)
4 No NA
5 No NA (Could be MUS if large population)
6 No NA
23IN-CLASS EXERCISE NO. 1
Test Involves Sampling? Attribute / Variable / MUS / NA
7 Yes Attribute (T of C)
8 Yes MUS
9 No NA
10 Yes Attribute (T of C/ST of T)
11 No NA
24STEPS IN STATISTICAL ATTRIBUTE SAMPLING
APPLICATION
- Planning
- Determine the test objectives
- Define the population characteristics
- Determine the sample size
- Performance
- Select sample items
- Perform the auditing procedures
- Evaluation
- Calculate the results
- Draw conclusions
25STEP 1 DETERMINE THE TEST OBJECTIVES
- Objective for T of C To determine the operating
effectiveness of the internal control - Support control risk assessment below maximum
- Identify controls to be tested and understand why
they are to be tested
26TESTS OF CONTROLS
- Concerned primarily with
- Were the necessary controls performed?
- How were they performed?
- By whom were they performed?
- Appropriate when documentary evidence of
performance exists
27STEP 2 DEFINE THE POPULATION CHARACTERISTICS
- Define the sampling population
- Assertion
- Completeness
- Define the sampling unit
- Determined by available records
- Define the control deviation conditions
28STEP 3 DETERMINE THE SAMPLE SIZE
- Determine factors
- Desired confidence level (direct)
- Tolerable deviation rate (inverse)
- Expected population deviation rate (direct)
- Desired confidence level
- If planning to rely on controls, would be 90 to
95 - Significance of account and importance of
assertion affected by control being tested
29STEP 3 DETERMINE THE SAMPLE SIZE
- Tolerable deviation rate
- Maximum deviation rate that auditor willing to
accept and still consider control effective - Control would be relied upon
- Why any errors acceptable?
- Control deviation Misstatement
Assessed importance of control Tolerable deviation rate
Highly important 3-5
Moderately important 6-10
30STEP 3 DETERMINE THE SAMPLE SIZE
- Expected population deviation rate
- Rate expected to exist in population
- Based on prior years results or pilot sample
- If expected population deviation rate gt tolerable
rate, DO NOT TEST - SAMPLE SIZE TABLES
31STEP 3 DETERMINE THE SAMPLE SIZE
- Testing multiple attributes on the same sample
- Select largest sample size and audit all of them
for all attributes - Result is some overauditing BUT may take less
time than trying to remember which sample items
need to be tested for which attribute
32FINITE POPULATION CORRECTION FACTOR
- When population size lt 500
- Apply finite population correction factor
- v1-(n/N)
- Where n sample size from table and N number
of units in population
33STEP 4 SELECT THE SAMPLE ITEMS
- Sample must be selected to be representative of
the population - Each item must have an equal opportunity of being
selected
34STEP 4 SELECT THE SAMPLE ITEMS
- Random number selection
- Unrestricted random sampling without replacement
(once selected cannot be selected again)
35STEP 4 SELECT THE SAMPLE ITEMS
- Random number table
- Need to document
- Correspondence relationship between population
and random number table - Route selection path, e.g., up or down columns,
and right to left (must be consistent) - Starting point starting row, column, digit
- Stopping point to enable adding more sample
items if needed
36RANDOM NUMBER TABLE ILLUSTRATION
- Select a sample of 4 items from prenumbered
canceled checks numbered from 1 to 500. Start at
row 5, column 1, digit starting position 1.
Select three-digit numbers. Items selected are - 145 (sample item 1)
- 516 (discard because checks numbers do not exceed
500) - 032 (sample item 2)
- 246 (sample item 3)
- 840 (discard)181 (sample item 4)
37RANDOM NUMBER TABLE ILLUSTRATION
- To minimize discards, table numbers gt 500 can be
reduced by 500 to produce a sample item within
the population boundary of 1 to 500. The four
sample items selected are - 145 (sample item 1)
- 016 (sample item 2 516 500 016)
- 032 (sample item 2)
- 246 (sample item 3)
- 340 (sample item 4 840 500 340)
38RANDOM NUMBER TABLE ILLUSTRATION
- Select 4 sales invoices numbered from 5000 to
12000. Start at row 21, column 2, digit starting
point 1. Rather than use a 5-digit number, which
produces a large number of discards, add a
constant to get a population with 4 digits. If a
constant of 3000 is used, the usable numbers
selected from 2000 to 9000 are - 6,043 (sample item 1 3043 3000)
- 10,120 (sample item 2 7120 3000)
- 10,212 (sample item 3 7212 3000)
- 5,259 (sample item 4 2259 3000)
39STEP 4 SELECT THE SAMPLE ITEMS - EXCEL
- Excel
- Select Tools
- Select Data Analysis
- Select Sampling
40STEP 4 SELECT THE SAMPLE ITEMS - EXCEL
41STEP 4 SELECT THE SAMPLE ITEMS
- Input Range
- Enter the references for the range of data that
contains the population of values you want to
sample. Microsoft Excel draws samples from the
first column, then the second column, and so on. - Labels
- Select if the first row or column of your input
range contains labels. Clear if your input range
has no labels Excel generates appropriate data
labels for the output table. - Sampling Method
- Click Periodic or Random to indicate the sampling
interval you want. - Period
- Enter the periodic interval at which you want
sampling to take place. The period-th value in
the input range and every period-th value
thereafter is copied to the output column.
Sampling stops when the end of the input range is
reached.
42STEP 4 SELECT THE SAMPLE ITEMS
- Number of Samples
- Enter the number of random values you want in the
output column. Each value is drawn from a random
position in the input range, and any number can
be selected more than once. - Output Range
- Enter the reference for the upper-left cell of
the output table. Data is written in a single
column below the cell. If you select Periodic,
the number of values in the output table is equal
to the number of values in the input range,
divided by the sampling rate. If you select
Random, the number of values in the output table
is equal to the number of samples.
43STEP 4 SELECT THE SAMPLE ITEMS
- Systematic selection
- Determine sampling interval Population / Sample
Size - Ensure population is in random order
- Select random starting number (within first
interval) - Better to use multiple random starting points to
reduce risk of missing systematic deviations - Select every nth item
- Continue sample selection until population is
exhausted - (Last sample selected sampling interval) gt Last
item in population - In other words, dont stop when desired sample
size reached
44STEP 5 PERFORM THE AUDITING PROCEDURES
- Conduct planned audit procedures
- What if?
- Voided documents - if properly voided, not a
deviation replace with new sample item - Unused or inapplicable documents replace with
new sample item - Inability to examine sample item deviation
- Stopping test before completion large number of
deviations detected
45STEP 5 PERFORM THE AUDITING PROCEDURES
- Deviations observed
- Investigate nature, cause, and consequence of
every exception - Unintentional error? Or fraud?
- Monetary misstatement resulted?
- Cause misunderstanding of instructions?
Carelessness? - Effect on other areas?
46STEP 6 CALCULATE RESULTS
- Summarize deviations for each control
- Calculate sample deviation rate and computed
upper deviation rate - Sample deviation rate Allowance for sampling
risk Computed upper deviation rate - Statistical sampling results evaluation tables
47STEP 7 DRAW CONCLUSIONS
- If Computed Upper Deviation Rate gt Tolerable
Rate, control is ineffective and cannot be relied
upon. - If Computed Upper Deviation Rate lt Tolerable
Rate, control is effective
48EVALUATION OF EXPOSURE
- In a sample of 25 manual control operations from
a population of 3,000 control operations, 1
deviation was identified. The sample was designed
with an expectation that 0 deviations would be
found. - Looking up the results (in 90 confidence level
table) Computed upper error limit 14.7
49EVALUATION OF EXPOSURE
- The sample did not meet its design criteria, so
there is a higher than desired risk that the
control will fail to prevent or detect a
misstatement. - To assess the magnitude of the exposure
- Identify the gross exposure of the account or
process. This is based on the volume of dollars
processed through the control. - The upper limit on the control deviations was
14.7. - The adjusted exposure is 735,000 (14.7
5,000,000). - The 735,000 exposure may assist the auditor in
evaluating the severity of the control deficiency.
50IN-CLASS EXERCISES NO. 2 NO. 3
51IN-CLASS EXERCISE NO. 2
Problem 1 Prenumbered sales invoices where the lowest invoice number is 1 and the highest is 6211. Problem 1 Prenumbered sales invoices where the lowest invoice number is 1 and the highest is 6211.
Sampling unit Sales invoice
Population numbering system 1 to 6211
Random number table correspondence Use 4 digits with random start at 0029-05 going down and then right
First 5 items in sample 3553 0081 4429 0484 4881
52IN-CLASS EXERCISE NO. 2
Problem 2 Prenumbered bills of lading where the lowest document number is 21926 and the highest is 28511. Problem 2 Prenumbered bills of lading where the lowest document number is 21926 and the highest is 28511.
Sampling unit Bill of lading
Population numbering system 21926 to 28511
Random number table correspondence Use last 4 digits with random start at 0005-07
First 5 items in sample 7744 7632 8120 3736 4091
53IN-CLASS EXERCISE NO. 2
Problem 3 Accounts Receivable on 10 pages with 60 lines per page except the last page, which has only 36 full lines. Each line has a customer name and an amount receivable. Problem 3 Accounts Receivable on 10 pages with 60 lines per page except the last page, which has only 36 full lines. Each line has a customer name and an amount receivable.
Sampling unit Each line
Population numbering system 9 60 540 36 576 lines Add 2000 (2001 to 2576)
Random number table correspondence Use last 4 digits with random start at 00040-01 going down and then right
First 5 items in sample 2240 2055 2094 2087 2608
54IN-CLASS EXERCISE NO. 2
Problem 4 Prenumbered invoices in a sales journal where each month starts over with number 1. (Invoices for each month are designated by the month and document number.) There is a maximum of 20 pages per month with a total of 185 pages for the year. All pages have 75 invoices except for the last page for each month. Problem 4 Prenumbered invoices in a sales journal where each month starts over with number 1. (Invoices for each month are designated by the month and document number.) There is a maximum of 20 pages per month with a total of 185 pages for the year. All pages have 75 invoices except for the last page for each month.
Sampling unit Page of invoices
Population numbering system Starting with January, first page is 1 (up to 185)
Random number table correspondence Random start at 0008-03 going down then right, subtract random number from next 1000
First 5 items in sample 4000 3982 18 7000 6847 153 5000 - 4956 44 6000 5985 15 5000 4941 59
55IN-CLASS EXERCISE NO. 3
For which of these auditing procedures can attribute sampling be conveniently used? For which of these auditing procedures can attribute sampling be conveniently used?
1 No
2 No
3 No
4 Yes
5a Yes
5b Yes
56IN-CLASS EXERCISE NO. 3
For which of these auditing procedures can attribute sampling be conveniently used? For which of these auditing procedures can attribute sampling be conveniently used?
5c Yes
5d Yes
5e Yes
6 Yes
57IN-CLASS EXERCISE NO. 3
2. Considering the audit procedures to be performed, what is the most appropriate sampling unit for conducting most of the audit sampling tests?
Sales invoice
58IN-CLASS EXERCISE NO. 3
For each T of C or ST of T, identify the attribute being tested and the exception condition. For each T of C or ST of T, identify the attribute being tested and the exception condition.
Attribute Exception Condition
4. Existence of the sales invoice number in the sales journal No record of the sales invoice number in the sales journal
5a. Amount and other data in MF agree with the sales journal entry The amount recorded in the MF differs from the amount recorded in the sales journal.
59IN-CLASS EXERCISE NO. 3
For each T of C or ST of T, identify the attribute being tested and the exception condition. For each T of C or ST of T, identify the attribute being tested and the exception condition.
Attribute Exception Condition
5b. Amount and other data on the duplicate sales invoice agree with the sales journal entry Customer name and account number on the invoice differ from the information recorded in the sales journal
60IN-CLASS EXERCISE NO. 3
For each T of C or ST of T, identify the attribute being tested and the exception condition. For each T of C or ST of T, identify the attribute being tested and the exception condition.
Attribute Exception Condition
5b. Evidence that pricing, extensions, and footings are checked (initials and correct amounts). Lack of initials indicating verification of pricing, extensions, and footings.
61IN-CLASS EXERCISE NO. 3
For each T of C or ST of T, identify the attribute being tested and the exception condition. For each T of C or ST of T, identify the attribute being tested and the exception condition.
Attribute Exception Condition
5c. Quantity and other data on the bill of lading agree with the duplicate sales invoice and sales journal Quantity of goods shipped differs from quantity on sales invoice
62IN-CLASS EXERCISE NO. 3
For each T of C or ST of T, identify the attribute being tested and the exception condition. For each T of C or ST of T, identify the attribute being tested and the exception condition.
Attribute Exception Condition
5d. Quantity and other data on the sales order agree with the duplicate sales invoice Quantity on the sales order differs from quantity on the duplicate sales invoice
5e. Quantity and other data on the customer order agree with the duplicate sales invoice Product number and description on the customer order differ from information on the duplicate sales invoice
63IN-CLASS EXERCISE NO. 3
For each T of C or ST of T, identify the attribute being tested and the exception condition. For each T of C or ST of T, identify the attribute being tested and the exception condition.
Attribute Exception Condition
5e. Credit is approved Lack of initials indicating credit approval
6. For recorded sales in the sales journal, the file of supporting documents includes a duplicate sales invoice, BL, sales order, and customer order. BL is not attached to the duplicate sales invoice and the customer order.
64IN-CLASS EXERCISE NO. 3
See Solution
65STEPS IN NONSTATISTICAL ATTRIBUTE SAMPLING
APPLICATION
- Planning
- Determine the test objectives
- Define the population characteristics
- Determine the sample size
- Performance
- Select sample items
- Perform the auditing procedures
- Evaluation
- Calculate the results
- Draw conclusions
66STEP 3 DETERMINE THE SAMPLE SIZE
- Consider desired confidence level, tolerable
deviation rate, and expected population deviation
rate - Judgmentally determine sample size
- NOTE Check against statistical sample size
tables to verify adequacy
67STEP 3 DETERMINE THE SAMPLE SIZE
- Guidelines for nonstatistical sample sizes for
tests of controls - If any errors found, increase sample size or
increase control risk
Desired level of controls reliance Sample size
Low 15-20
Moderate 25-35
High 40-60
68STEP 4 SELECT SAMPLE ITEMS
- Random sample
- Systematic sample (with random start)
- Haphazard selection
- Still desire representative sample
- Avoid unusual, large, first or last
69STEP 6 CALCULATE THE RESULTS
- No computed upper deviation rate
- If sample deviation rate gt expected population
deviation rate, control not effective
70COMPLIANCE AUDITING
- Performance of auditing procedures to determine
whether an entity is complying with specific
requirements of laws, regulations, or agreements - Governmental entities and other recipients of
governmental financial assistance - Compliance with laws and regulations that
materially affect each major federal assistance
program
71COMPLIANCE AUDITING OF FEDERAL ASSISTANCE PROGRAMS
- Definition of population for testing of an
internal control procedure that applies to more
than one program - Define items from each major program as a
separate population, OR - Define all items to which control is applicable
as a single population - Second choice usually more efficient
72COMPLIANCE AUDITING - EXAMPLE
- Federal financial assistance for Island City
- Three major federal financial assistance programs
- Four nonmajor programs
- Control Transaction review to ensure that only
legally allowable costs are charged to each
program
73COMPLIANCE AUDITING - EXAMPLE
- More efficient to select one sample from
population of all transactions (major and
nonmajor programs) - Confidence level 95
- Tolerable deviation rate 9
- Expected population deviation rate 1
- Sample size 51
- 1 allowable deviation
74SMALL POPULATIONS AND INFREQUENTLY OPERATING
CONTROLS
Small Population Sample Size Table Small Population Sample Size Table
Control Frequency and Population Size Sample Size
Quarterly (4) 2
Monthly (12) 2-4
Semimonthly (24) 3-8
Weekly (52) 5-9
75IN-CLASS EXERCISE NO. 4
76IN-CLASS EXERCISE NO. 4
Selected Payroll T of C Selected Payroll T of C
1. Examine the time card for approval of a supervisor Moderately critical affects E/O of S W
2. Account for a sequence of payroll checks in the payroll journal Very critical affects E/O of SW
3. Recompute hours on the time card Moderately critical affects V of SW
77IN-CLASS EXERCISE NO. 4
4. Compare the employee name in the payroll journal to personnel records Very critical affects E/O - affects E/O of S W also an area subject to fraud
5. Review OT charges for approval of a supervisor Moderately critical affects E/O and V of SW
78IN-CLASS EXERCISE NO. 4
Selected Cash Disbursement T of C Selected Cash Disbursement T of C
6. Examine voucher for supporting invoices, receiving reports, etc. Very critical affects E/O of purchase transactions
7. Examine supporting documents for evidence of cancellation (paid) Moderately critical affects validity of purchase transactions and relates to double payment
79IN-CLASS EXERCISE NO. 4
Selected Cash Disbursement T of C Selected Cash Disbursement T of C
8. Ascertain whether cash discounts were taken Least critical affects V of purchase transactions amounts usually minor
9. Review voucher for clerical accuracy Moderately critical affects V of purchase transactions
80IN-CLASS EXERCISE NO. 4
Selected Cash Disbursement T of C Selected Cash Disbursement T of C
10. Agree purchase order price to invoice Moderately critical affects V of purchase transactions
81MONETARY UNIT SAMPLING
- Uses attribute sampling theory to express
conclusions in dollar amounts - Estimates the percentage of monetary units in a
population that might be misstated - Multiples the percentage by an estimate of how
much the dollars are misstated - Developed by auditors
- Assumes little or no misstatements
- Designed primarily to test for overstatements
82ADVANTAGES
- When no misstatements expected, results in
smaller (more efficient) sample size than
classical variables sampling - No need to compute/identify standard deviation
- Automatically stratifies sample
83DISADVANTAGES
- Zero or negative balances must be tested
separately - Assumes audited amount of sample items is not in
error by more than 100 - When more than 1 or 2 misstatements found,
allowance for sampling risk may be overstated - Auditor more likely to reject balance and
overaudit
84STEPS IN MONETARY UNIT SAMPLING APPLICATION
- Planning
- Determine the test objectives
- Define the population characteristics
- Determine the sample size
- Performance
- Select sample items
- Perform the auditing procedures
- Evaluation
- Calculate the results
- Draw conclusions
85STEP 1 DETERMINE THE TEST OBJECTIVES
- Substantive testing To test the reasonableness
of an amount, i.e., that an amount is fairly
stated - To test the assertion that no material
misstatements exist in an account balance, class
of transactions, or disclosure component of the
financial statements
86STEP 2 DEFINE THE POPULATION CHARACTERISTICS
- Define the sampling population
- Monetary value of an account balance
- Verify completeness of population
- Define the sampling unit - Each individual dollar
- Define the logical unit - The account or
transaction that contains the sampling units - Define a misstatement The difference between
the book value and the audited value
87STEP 3 DETERMINE THE SAMPLE SIZE
- Determine factors (effect on sample size)
- Desired confidence level (direct)
- To increase confidence, more work is required!
(larger sample size) - Tolerable misstatement (inverse)
- Expected misstatement (direct)
- Population size (direct)
88STEP 3 DETERMINE THE SAMPLE SIZE
- Computing sample sizes using the attribute
sampling tables - Select desired confidence level
- Compute tolerable misstatement as percentage of
book value - Compute expected misstatement as percentage of
book value - Look up sample size in attribute sampling table
89STEP 4 SELECT THE SAMPLE ITEMS
- Systematic selection approach called probability
proportional to size (PPS) - Calculate sampling interval
- Book value / sample size
- From random start (within first interval), select
every nth dollar - Logical unit included only once even if includes
more than one sample unit
90STEP 5 PERFORM THE AUDITING PROCEDURES
- Conduct planned audit procedures on logical units
- What if?
- Missing document consider to be a misstatement
91STEP 6 CALCULATE RESULTS
- Projected misstatement Projection of the errors
to the population - Upper limit on misstatement Adds an allowance
for sampling risk to the projected misstatement
92STEP 6 CALCULATE RESULTS
- Sort misstatements into two groups
- Group 1 Logical unit equal to or greater than
the sampling interval - Group 2 Logical unit less than the sampling
interval - For Group 2, compute the tainting factor for each
misstatement - Tainting factor Book value Audit value
- Book value
93STEP 6 CALCULATE RESULTS
- Place the Group 2 items in rank order by tainting
factor (from largest to smallest) - Compute the projected misstatement
- Calculate the upper limit increments (using the
Monetary Unit Sampling Confidence Factors for
Sample Evaluation table) - Calculate upper misstatement for each Group 2
item - Add differences for Group 1
- Total Upper misstatement limit
94STEP 6 CALCULATE RESULTS - EXAMPLE
- Book value 3,100,000
- Tolerable misstatement 150,000
- Expected misstatement 25,000
- Desired confidence level 95
- Tolerable misstatement rate 4.8,round to 5
- Expected misstatement rate .8, round to 1
95STEP 6 CALCULATE RESULTS - EXAMPLE
- Sample size 93
- Sampling interval 33,333
- Expected misstatement 25,000
96STEP 6 CALCULATE RESULTS - EXAMPLE
Item Book Value Audited Value Difference
Item 1 12,000 3,120 8,880
Item 2 35,000 32,000 3,000
Item 3 1,400 0 1,400
Item 4 45,200 41,000 4,200
Item 5 740 555 185
97STEP 6 CALCULATE RESULTS - EXAMPLE
Item Book Value Audited Value Difference
Group 1 BV gt SI (33,333) Group 1 BV gt SI (33,333) Group 1 BV gt SI (33,333) Group 1 BV gt SI (33,333)
Item 2 35,000 32,000 3,000
Item 4 45,200 41,000 4,200
7,200
98STEP 6 CALCULATE RESULTS - EXAMPLE
Item Difference Book Value Tainting Factor
Group 2 BV lt SI (33,333) Group 2 BV lt SI (33,333) Group 2 BV lt SI (33,333) Group 2 BV lt SI (33,333)
Item 1 8,880 12,000 .74
Item 3 1,400 1,400 1.0
Item 5 185 740 .25
99STEP 6 CALCULATE RESULTS - EXAMPLE
Item Tainting Factor Sampling Interval Projected Misstatement (Tainting Factor SI)
Item 3 1.0 33,333 33,333
Item 1 .74 33,333 24,666
Item 5 .25 33,333 8,333
100STEP 6 CALCULATE RESULTS - EXAMPLE
Item Projected Misstatement 95 Upper Limit Increment Upper Misstatement
Item 3 33,333 3.0 99,999
Item 1 24,666 1.7 41,932
Item 5 8,333 1.5 12,500
154,431
101STEP 6 CALCULATE RESULTS - EXAMPLE
Item Projected Misstatement 95 Upper Limit Increment Upper Misstatement
Group 2 154,431
Group 1 7,200
Upper Misstatement Limit Upper Misstatement Limit Upper Misstatement Limit 161,631
102STEP 7 DRAW CONCLUSIONS
- If Upper Misstatement Limit gt Tolerable
Misstatement, balance is materially misstated. - If Upper Misstatement Limit gt Tolerable
Misstatement, balance is not materially misstated
103IN-CLASS EXERCISES NO. 5 TO NO. 6
104IN-CLASS EXERCISE NO. 5
- Sampling interval 746,237 / 10 74,624
Loan Recorded Amount
1 141,100
3 66,600
5 10,230
11 4,350
20 16,530
24 2,950
26 131,200
27 50,370
32 5,900
105IN-CLASS EXERCISE NO. 5
- Sampling items always included
- The loans gt the sampling interval
- Loan 1 141,100
- Loan 26 131,200
106IN-CLASS EXERCISENO. 6
- Recorded amount of accounts receivable 400,000
- Tolerable misstatement 20,000 20,000 /
400,000 5 - Risk of incorrect acceptance 5
- Expected misstatements 0
- Sample size 59
- Sampling interval 400,000 / 59 6,780
107IN-CLASS EXERCISENO. 6
Error Recorded Amount Audit Amount Difference Tainting
1 400 320 80 20
2 500 0 500 100
3 7,000 6,500 500 NA
108IN-CLASS EXERCISENO. 6
Error Tainting Sampling Interval Projected Misstate-ment Upper Limit Increment Upper Limit Misstate-ment
Logical unit BV lt Sampling Interval Logical unit BV lt Sampling Interval Logical unit BV lt Sampling Interval Logical unit BV lt Sampling Interval Logical unit BV lt Sampling Interval Logical unit BV lt Sampling Interval
2 100 6,780 6,780 1.7 11,526
1 20 6,780 1,356 1.5 2,034
109IN-CLASS EXERCISENO. 6
Error Tainting Sampling Interval Projected Misstate-ment Upper Limit Increment Upper Limit Misstate-ment
Logical unit BV gt Sampling Interval Logical unit BV gt Sampling Interval Logical unit BV gt Sampling Interval Logical unit BV gt Sampling Interval Logical unit BV gt Sampling Interval Logical unit BV gt Sampling Interval
3 NA NA 500 NA 500
Basic Precision 3.0 6,780 20,340 Basic Precision 3.0 6,780 20,340 Basic Precision 3.0 6,780 20,340 Basic Precision 3.0 6,780 20,340 Basic Precision 3.0 6,780 20,340 Basic Precision 3.0 6,780 20,340
110IN-CLASS EXERCISENO. 6
Error Tainting Sampling Interval Projected Misstate-ment Upper Limit Increment Upper Limit Misstate-ment
Logical unit BV lt Sampling Interval Logical unit BV lt Sampling Interval Logical unit BV lt Sampling Interval Logical unit BV lt Sampling Interval Logical unit BV lt Sampling Interval 13,560
Logical unit BV gt Sampling Interval Logical unit BV gt Sampling Interval Logical unit BV gt Sampling Interval Logical unit BV gt Sampling Interval Logical unit BV gt Sampling Interval 500
Basic Precision Basic Precision Basic Precision Basic Precision Basic Precision 20,340
Upper Misstatement Limit Upper Misstatement Limit Upper Misstatement Limit Upper Misstatement Limit Upper Misstatement Limit 34,400
Conclusion The account is materially misstated. The upper misstatement limit of 34,400 exceeds the tolerable misstatement of 20,000. Conclusion The account is materially misstated. The upper misstatement limit of 34,400 exceeds the tolerable misstatement of 20,000. Conclusion The account is materially misstated. The upper misstatement limit of 34,400 exceeds the tolerable misstatement of 20,000. Conclusion The account is materially misstated. The upper misstatement limit of 34,400 exceeds the tolerable misstatement of 20,000. Conclusion The account is materially misstated. The upper misstatement limit of 34,400 exceeds the tolerable misstatement of 20,000. Conclusion The account is materially misstated. The upper misstatement limit of 34,400 exceeds the tolerable misstatement of 20,000.
111NONSTATISTICAL SAMPLING BALANCE TESTING
- Differences in
- Identifying individually significant items
- Determining sample size
- Selecting sample items
- Calculating sample results
112IDENTIFYING INDIVIDUALLY SIGNIFICANT ITEMS
- Selected due to large size
- Tested 100
- Results similar to PPS selection
- For example, selecting all items gt 100,000
113DETERMINING SAMPLE SIZE
- Sample size
- Sampling Population BV Assurance
- (Tolerable Expected Factor
- Misstatement)
-
- where Sampling Population BV excludes
individually significant items
114DETERMINING SAMPLE SIZE
Assessment of RMM Desired Level of Confidence Assurance Factors Desired Level of Confidence Assurance Factors Desired Level of Confidence Assurance Factors Desired Level of Confidence Assurance Factors
Assessment of RMM Maximum Slightly below maximum Moderate Low
Maximum 3.0 2.7 2.3 2.0
Slightly below maximum 2.7 2.4 2.0 1.6
Moderate 2.3 2.1 1.6 1.2
Low 2.0 1.6 1.2 1.0
115DETERMINING SAMPLE SIZE - EXAMPLE
- Book value 3,100,000
- Individually significant items 1,500,000
- Tolerable misstatement 150,000
- Expected misstatement 25,000
- Desired confidence level Maximum
- Risk of MM Maximum
- Sample size 1,600,000 3.0
- (150,000 25,000)
- 38.4, round to 39
116SELECTING SAMPLE ITEMS
- Random selection
- Systematic selection
- Haphazard selection
117CALCULATING SAMPLE RESULTS
- Sample misstatement MUST be projected to
population - Two acceptable methods
- Apply sample misstatement ratio to population
(ratio estimation) - Apply average misstatement of each item in
sample to all items in population (difference
estimation)
118CLASSICAL SAMPLING
- Ratio estimation
- Difference estimation
119RATIO ESTIMATION
- Sample misstatements 19,000
- Sample book value 175,000
- Sample error rate 10.9, round to 11
- Total population BV 1,840,000
- Projected misstatement 1,840,000 11
202,400 - Compare projected misstatement to tolerable
misstatement
120DIFFERENCE ESTIMATION
- Sample misstatements 19,000
- of sample items with misstatements 5
- Average misstatement per sample item 3,800
- items in population 256
- Projected misstatement 3,800 256 972,800
- Compare projected misstatement to tolerable
misstatement
121IN-CLASS EXERCISE NO. 7
122IN-CLASS EXERCISE NO. 7
- Nonstatistical Sample Results
- Errors in accounts gt 10,000 33,000
- Errors in accounts lt 10,000
- Total errors 4,350
- Sample BV 81,500
- Error rate 5.34
- Applied to population
- 2,760,000
- (465,000)
- 2,295,000 5.34 122,553
- Total estimated error 155,553
- Tolerable misstatement 81,500
- Conclusion Account materially misstated
123IN-CLASS EXERCISE NO. 7 - PPS
- PPS Sample Results
- Accounts receivable recorded
- balance 2,760,000
- Accounts gt 10,000 (tested
- separately) (465,000)
- Accounts receivable population
- PPS 2,295,000
- Tolerable misstatement 81,500
124IN-CLASS EXERCISE NO. 7 - PPS
- Sample and sampling interval
- Tolerable rate 81,500 / 2,295,000 3.55,
round to 4 - Expected rate 0
- 5 risk of overreliance (since IR and CR are
both high) - Sample size 74
- Sampling interval 2,295,000 / 74 31,014
125IN-CLASS EXERCISE NO. 7 - PPS
Recorded Value Audited Value Difference Tainting
Item 12 5,120 4,820 300 5.85
Item 19 485 385 100 20.6
Item 33 1,250 250 1,000 80
Item 35 3,975 3,875 100 25.2
Item 51 1,850 1,825 25 1.4
Item 59 4,200 3,780 420 10
Item 74 2,405 0 2,405 100
126IN-CLASS EXERCISE NO. 7 - PPS
of Overstatement Misstatements
of Overstatement Misstatements 5 Upper Limit Increment
0 3.00
1 4.75 1.75
2 6.30 1.55
3 7.76 1.46
4 9.16 1.40
5 10.52 1.36
6 11.85 1.33
7 13.15 1.30
127IN-CLASS EXERCISE NO. 7 - PPS
Tainting Sampling Interval Projected Misstatement Upper Limit Factor Upper Misstatement
Item 74 100 31,014 31,014 1.75 54,275
Item 33 80 31,014 24,811 1.55 38,457
Item 35 25.2 31,014 7,816 1.46 11,411
Item 19 20.6 31,014 6,389 1.40 8,944
Item 59 10 31,014 3,101 1.36 4,218
Item 12 5.85 31,014 1,814 1.33 2,413
Item 51 1.4 31,014 434 1.30 564
120,282
128IN-CLASS EXERCISE NO. 7 - PPS
- Items lt Sampling Interval 120,282
- Items gt Sampling Interval None
- Basic precision 3.0 31,014
93,042 - Upper misstatement limit 213,324
- Conclusion Account is materially misstated.
Upper misstatement limit 213,324 gt tolerable
misstatement 81,500
129RESOURCES
- Audit Sampling An Introduction, 3rd Edition,
Guy, Carmichael Whittington - Audit Guide Audit Sampling, New Edition as of
May 1, 2008, AICPA - Auditing Assurance Services, 6th Edition,
Messier, Glover, Prawitt - Auditing Assurance Services, 12th Edition,
Arens, Elder Beasley
130THE END!