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View Full Version : [SOLVED:] Help Required : Random Sampling of Data



anish.ms
07-19-2021, 01:07 AM
Hi Experts,
I got the attached random sampling code from one of the excel forum. I request your help in customizing the codes so that it be very useful to add it as an excel add-in and use irrespective of the data range. My knowledge to to the below changes is very limited. Any help on this is greatly appreciated.



The code shall work for the entire selection range (currently only 5 columns).
There shall be an option to select the column basis of which the sampling has to be work (currently based on column A). Preferably a user form which loads the headers from the first row of the selection and then the user choose the column header basis of which sampling has to be done.
Options for the results to be copied in to a new worksheet/workbook/add the word "sample" in the column next to the the selection range.


Thanks in advance



Option Explicit
Sub ClearData()
[H6].ClearContents
Sheet3.UsedRange.Offset(1).ClearContents
End Sub
Sub RandSample()
Dim arOrig, x, Key, Key1, iSubset, arRes()
Dim i As Long, j As Long
Dim dicRnd As Object, dicSorted As Object, dicUnq As Object, dicRes As Object

iSubset = InputBox("Enter a sample size ", "Sample Size")

If Not IsNumeric(iSubset) Then
MsgBox "Oops! Please enter a valid sample size.", vbCritical, "Wrong Entry"
Exit Sub
End If

arOrig = Selection.Value

Set dicRnd = CreateObject("Scripting.Dictionary")
Set dicUnq = CreateObject("Scripting.Dictionary")
For i = 1 To UBound(arOrig)
Do
x = Rnd
Loop Until Not dicRnd.Exists(x)
dicUnq(arOrig(i, 1)) = dicUnq.Count
dicRnd(x) = Join(Application.Index(arOrig, i, 0), "~")
Next
Set dicSorted = dictKeySortAscending(dicRnd)
For Each Key In dicRnd.Keys
dicSorted(Key) = dicRnd(Key)
Next

Set dicRes = CreateObject("Scripting.Dictionary")

For Each Key In dicUnq.Keys
i = 0
Do While i < iSubset
For Each Key1 In dicSorted.Keys
If CStr(Key) = Split(dicSorted(Key1), "~")(0) Then
dicRes(dicUnq(Key) & "," & i) = dicSorted(Key1)
dicSorted.Remove Key1
Exit For
End If
Next
i = i + 1
Loop
Next

ReDim arRes(dicRes.Count, 5)
i = 0
For Each Key In dicRes.Keys
x = Split(dicRes(Key), "~")
For j = 0 To 4
arRes(i, j) = x(j)
Next
i = i + 1
Next

Sheet3.Range("A2").Resize(dicRes.Count, 5) = arRes
MsgBox "Record Count: " & dicRes.Count & vbNewLine & "Unique Names: " & dicUnq.Count & vbNewLine & "Record/Name: " & iSubset

End Sub
Public Function dictKeySortAscending(dictList As Object) As Object
Dim curKey As Variant
Dim sortArray As Object
Dim i As Integer
Set sortArray = CreateObject("System.Collections.ArrayList")
If dictList.Count > 1 Then
With sortArray
For Each curKey In dictList.Keys
.Add curKey
Next curKey
.Sort

Set dictKeySortAscending = CreateObject("Scripting.Dictionary")

For i = 0 To .Count - 1
dictKeySortAscending.Add .Item(i), 1
Next
End With
Else
dictKeySortAscending = dictList
End If

Set sortArray = Nothing
End Function

snb
07-19-2021, 02:24 AM
Do not use redundant code.
The simpler the code the easier to adapt.
But: never use code you do not fully understand.

Create unique random numbers:

Sub M_snb()
[A1:A1000].Name = "snb"
[snb] = "=rand()"
[snb] = [index(rank(snb,snb),)]
End Sub

anish.ms
07-19-2021, 07:04 AM
Thanks snb for your time!
Actually I don't have any programming background and I'm a finance person trying to learn VBA to help in my analytics.
array codes are little difficult for me to understand as I'm just a beginner to VBA. Appreciate if you can further support me on the above request

snb
07-19-2021, 07:23 AM
You can start testing the code in your own workbook.

anish.ms
07-20-2021, 01:23 PM
I have prepared a sample tool basis of my little knowledge, but it requires the first two columns to be kept blank for sampling calculations
I also need help on stratified random sampling section, if the option selected is Proportional to stratum size.
Request your help and support
Thanks in advance!
28764
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Paul_Hossler
07-20-2021, 01:42 PM
1. ID 1031 has "National Insurance Company, UAE" in the Quarter column

2. It seems that it's either "Simple" XOR "Stratified". Might be less confusing to use a 2 page MultiPage control, one page for each

3. Better expand on the details of the Stratified sampling, and how each field is used

anish.ms
07-20-2021, 09:43 PM
1. ID 1031 has "National Insurance Company, UAE" in the Quarter column

2. It seems that it's either "Simple" XOR "Stratified". Might be less confusing to use a 2 page MultiPage control, one page for each

3. Better expand on the details of the Stratified sampling, and how each field is used

Thanks Paul for your response!
1. For a testing purpose I mentioned "National Insurance Company, UAE" in Quarter and then forgot to remove
2. Moved into a MultiPage control as you suggested
3. I have explained below the details of Stratified sampling and request your help on this

Stratum Variable : This list box will have the names of the variables in the data range. First row of the range contains the variable names/column headers, then these names appear in this list box.

#Strata : This text box will show the number unique values from the above selected Stratum Variable. And next to this there is an option to view those unique values.

Stratified Random Sampling

Equal from each stratum - On specifying the number of records, it highlights sample with same number of records from each stratum.
For example: if “Quarter” is the selected Stratum Variable and 1 as #Each Records, it will highlight total 4 samples 1 each from each quarters (Q1 to Q4)

Proportional to stratum size - On specifying the number of records (total samples), it shall highlight samples proportionate to total count of each stratum.
For example: if “Quarter” is the selected Stratum Variable and 10 as #Total Records, it will highlight total 10 samples based on each quarter count(Q1 to Q4)



Quarter
Count
Sample Size



Q1
57
2
ROUNDUP(10/301*57,0)


Q2
73
3



Q3
68
3



Q4
103
4



Total
301
12




In this case the total sample size cannot be less than the #Strata. In the above example if the total sample size is 1, there shall be total 4 samples – 1 each from each strata based on the roundup formula.

1. Currently Simple Random Sampling and Stratified Random Sampling with Proportional to stratum size method are working based on the RANDBETWEEN formula in column B. Request your help if this can be done without the support of a column AND

2. Stratified Random Sampling with Proportional to stratum size method is not coded/working

Thanks in advance.

anish.ms
07-21-2021, 04:47 AM
Please consider the above formula to round instead of roundup
attached a workbook with Sampling formula

anish.ms
07-21-2021, 09:28 PM
Hoping your help Paul!

anish.ms
07-23-2021, 11:59 AM
Hi snb,

I have replaced my codes with the one you suggested for simple random sampling. And now I understand how simple and short is the code you suggested.



Public LR As Long 'Last Row
Public LC As Long ' Last Column
Public SS As Long 'Sample Size

SS = Me.txtRandomCount.Text
With ActiveSheet
.Cells(1, LC + 1) = "Sample"
.Range(Cells(2, LC + 1), Cells(LR, LC + 1)).Name = "Sample"
[Sample] = "=rand()"
[Sample] = [index(rank(Sample,Sample),)]
Set myrange = [Sample]
For Each mycell In myrange
If mycell.Value <= SS Then
mycell.Value = "Yes"
Else
mycell.Value = Empty
End If
Next mycell
End With


For the stratified sampling - Could you please guide me, how to apply rand() and rank based on each unique values in the filed selected both for equal and proportionate methods?

anish.ms
07-25-2021, 02:28 AM
Can anybody help me in throwing some light - how to use the above simple random sampling codes for stratified sampling-
Based on the values in a selected field - both equal and proportionate methods

Paul_Hossler
07-26-2021, 03:11 PM
Look at version 3a and see if it's what you were thinkin

I only did the Equal case

I'll have to think on the proportional

I'll probably (if I have time) look at the random case also

Paul_Hossler
07-26-2021, 08:41 PM
Look at this version

Random, and the 2 strata seem to work

anish.ms
07-26-2021, 09:34 PM
Thanks a Ton Paul!
Yes, the equal one is exactly the same what I was looking for.

I tested the code for a data with 100,000 rows and 25 columns, your equal code got completed in 1 minute and 13 seconds.
but my simple random sampling code made excel stuck and completed in 13 minutes and 20 seconds. Request if you can look at this whenever you get time.
There was a mistake in my code in loading the column headers

colStrataPicked = WorksheetFunction.Match(combx_Fields.Value, .Range(.Cells(1, 1), .Cells(1, colLast)), 0) ' it was rowLast by mistake
Once again, many thanks for your time and help Paul

anish.ms
07-27-2021, 12:16 AM
Thanks Paul! Its working perfectly

May I request my last 2 modifications on this -

(1) To add the count and % of each unique values in the list box



Quarter
Count
%


Q1
57
19%


Q2
73
24%


Q3
68
23%


Q4
103
34%


Total
301
100%



(2) Second one, I know this is an over loaded request
If the select filed (stratum variable) has number values. For example Revenue, then the number of strata and the list box shall have 10 slabs based on the max amount. And the equal and proportionate samples shall be based on the slab count and weightage respectively.



range 1
range 2
count
%


0
500
79
26%


501
1000
103
34%


1001
1500
54
18%


1501
2000
22
7%


2001
2500
16
5%


2501
3000
8
3%


3001
3500
10
3%


3501
4000
9
3%


4001
4500
2
1%


4501
5000
0
0%

Paul_Hossler
07-27-2021, 10:05 AM
You'll need to adjust the formatting to get something that you like

anish.ms
07-27-2021, 11:40 AM
Thanks Paul!
You have helped on the major part; I will try to fit it as per my requirement. And if I need any further help on any specific sub, I will open a new thread.
Just a small comment - The simple random sampling takes more time than the stratified codes. I just copy pasted the same data up to 50,000 rows and tested for 20 samples. Following are the time taken for each method-
Simple sampling took 03M:47S
stratified (equal) sampling took 00M:59S
stratified (proportionate) took 01M:05S

Paul_Hossler
07-27-2021, 12:47 PM
Try this

I changed the sort algorithm from a bubble sort, which is simple but slow, to quick sort, which is more complicated, but faster

anish.ms
07-27-2021, 02:26 PM
Thanks Paul!
Its running very fast now

anish.ms
08-01-2021, 12:51 PM
Hi Paul, in the proportionate method if I choose the column revenue with a sample size of 40 and proceed, it gives me 200 samples?
Will you be able to look into this?

if I remove the below line, I'm getting 7 samples



If n < numRecordsProportional Then
For iStrata = 1 To numStrata
If aryStrataSamples(iStrata) = 0 Then aryStrataSamples(iStrata) = 1
Next iStrata
End If

How can I make it at least nearest to the sample size?

Paul_Hossler
08-01-2021, 04:31 PM
If you have a large number data points with only one or two instances of each, proportionate really isn't going to work

Example - look at the yellow columns. There are 20 data points with 12 different values. Assuming that you want to get a proportionate random sample of 10, many of the values (like '2') need .5 of a sample data point

That was why the lines that you deleted were there, so that if the number of occurrences of a sample value size was so small that no data of that value would be selected, I forced at least 1

The only alternative I can think of (again this is outside my range) would be to use percentiles and proportionately sample within a percentile (the orange columns)

28809

anish.ms
08-01-2021, 09:30 PM
Understood Paul.
Yes, if the values are numbers then the samples haves to be picked based on the weightage in the ranges as per the list box

What do you think if I do the below code to proportionate again the shortfall in samples. I hope I will get some more samples



If n < numRecordsProportional Then
d = numRecordsProportional - n ' shortfall
s = WorksheetFunction.Sum(aryStrataSamples)
For iStrata = 1 To numStrata
If aryStrataSamples(iStrata) = 0 Then
Else
aryStrataSamples(iStrata) = aryStrataSamples(iStrata) + Round(d * aryStrataSamples(iStrata) / s, 0)
End If
Next iStrata
End If

anish.ms
08-02-2021, 03:01 AM
Also to consider/giving importance to amount columns in picking samples, I have added a checkbox to select the column which has numbers/amounts to pick the highest values from each numStrata for both equal and proportionate methods.

I need to think of how this can be addressed in the existing codes. Can you help me in this
I have made few cosmetic changes in the codes and attached the version here

Paul_Hossler
08-02-2021, 10:02 AM
Also to consider/giving importance to amount columns in picking samples, I have added a checkbox to select the column which has numbers/amounts to pick the highest values from each numStrata for both equal and proportionate methods.

I need to think of how this can be addressed in the existing codes. Can you help me in this
I have made few cosmetic changes in the codes and attached the version here

I didn't like some of your changes, especially the part about using Selection

Don't understand the purpose or use of Checkbox.

Using Revenue and Sample Size = 40 with 300 Data Points, one way would be to

1. Sort the data
2. Break it into Sample Size = 40 bins
3. Pick 1 random sample from each bin

That way you get your 40 samples, and by sorting the data points with the same values will most likely be in the same bins

In the picture then, you'd have a random pick from the Green, one from the Yellow, one from the blue, .... and one from the Gray

28811


It'll take a while to do this, but it's do-able

anish.ms
08-02-2021, 10:27 AM
Hi Paul, thanks for your response

I changed it to selection because finally this will go as an add-in into my excel and it is not necessary to be the data range always starts from row 1 and column 1 and the number of columns also will vary.

I added check box to give an option to pick samples from the highest values in the strata. For example if Quarter is the selected variable and with equal/proportionate method
With checkbox false - sample selection as per the current random method
With checkbox true - the samples shall be picked in the order of highest to lowest values in the selected column (combx_SelHVField)

attached another sample with 50000 rows data (normally the data range is almost 100k to 200K rows)

Can you add your above example of 'sort and sample size bins' as a third method in addition to the current proportionate and equal methods

Can you also check the possibility of picking samples from the highest to lowest values with reference to my check box option.

Paul_Hossler
08-04-2021, 04:11 PM
Have not forgotten


Can you also check the possibility of picking samples from the highest to lowest values with reference to my check box option.

Don't understand. Can you give simple example

anish.ms
08-04-2021, 07:45 PM
Have not forgotten


Don't understand. Can you give simple example

28818
As per the above screenshot if the checkbox is ticked and for example if revenue is the filed selected, then it shall pick samples in the order of highest to lowest values from revenue for each strata (Q1 to Q4). The result would be like below-
28819
Same for proportionate method, if checkbox is ticked
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Paul_Hossler
08-13-2021, 01:35 PM
Did not do anything with the check box

Enter the number of bins

Macro sorts Strata in order

Divides sorted list into number of bins

picks one randomly from each bins


28834

anish.ms
08-13-2021, 08:07 PM
Thanks a Ton Paul!

anish.ms
08-24-2021, 12:03 PM
Hi Paul, Please find attached the latest version.
Request your help on the checkbox option to pick highest value samples.

Paul_Hossler
08-24-2021, 02:18 PM
Not clear as to the results you're expecting

With no changes, I did this ...

28874



... and got this

28875


What would be the 'Highest Values' from Facility Name?

anish.ms
08-24-2021, 06:46 PM
Hi Paul, sorry for not making it very clear.
combx_SelHVField was showing all column headers. I have now changed it to show only those column headers which has numeric values.
In the above case, if the field selected is either SubAmt or TAT, then the samples should be the highest 20 values from the filed selected in each Category.
Hope it is clear now.
Maybe by ranking the values for each stratum and then sort and mark Yes for first 20 in each stratum
Thanks in advance!

Paul_Hossler
08-25-2021, 02:10 PM
I marked the major changes in the code with ' <<<<<<<<<<<<<<<<<

28877

anish.ms
08-25-2021, 08:49 PM
Thanks a lot Paul!
But the samples are limited to the number of strata

Paul_Hossler
08-26-2021, 10:00 AM
The 190 is ignored

There are 19 strata in "Facility Name" and the check box to pick highest from "SubAmt" is checked

So the highest SubAmt from each of the 19 "Facility Name" gets the "YES"

28880

anish.ms
08-26-2021, 10:29 AM
Hi Paul,
Sorry for the confusion again.
I wanted the sample size to be considered like how it was working previously. And if the check box is checked, it shall pick in the order of highest to lowest values instead of random pick.
If the checkbox is unchecked, then random pick, the way it was working previously
Thanks for you time.

Paul_Hossler
08-26-2021, 11:43 AM
So for example

High Value NOT Checked

Strata = "Facility Name" , 19 values
option = Equal from each
# = 10

There are 190 total sample picked, 10 randomly from each Facility Name


High Value Checked, pick from "SubAmt"

Strata = "Facility Name" , 19 values

There are 19 samples picked, each the largest SubAmt in each Facility Name

anish.ms
08-26-2021, 08:23 PM
Hi Paul,
Thanks for your time!

For example

High Value NOT Checked

Strata = "Facility Name" , 19 values
Option = Equal from each
# = 10

There are 190 total sample picked, 10 randomly from each Facility Name


High Value Checked, pick from "SubAmt"

Strata = "Facility Name" , 19 values
Option = Equal from each
# = 10

There shall be 190 samples picked, 10 each from highest to lowest in SubAmt for each Facility Name.
Given below the sample for facility 3
http://www.vbaexpress.com/forum/image/png;base64,iVBORw0KGgoAAAANSUhEUgAAAi8AAAEACAYAAAB7xpY6AAAgAElEQVR4Ae29Xcss QXImdn5XX sn6M6sFgzuYeULY2QMhr1d2MsWi5nFBq13kb0ayTtoZfNKIAkby2N7MQO6P8zNwmrvBo/m 7NMRGRkRkRmRmVmVXXV250HzunMyoyvJ57MjKru0/1lmX8mAhOBicBEYCIwEZgIfCIEvnwiX6erE4GJwERgIjARmAhMBJZZvFRI8Cf/9s8rI/PyRGAiMBGYCEwEJgJnIjCLlwr6ULz88le/wtFf/ Y3S89fEGLZivp5eSIwEZgITAQmAhOBQQRm8VIBDouXX/5qWX6zLL/ 9W 6/oLML0F2/pkITAQmAhOBicBEYHcEZvFSgRSKl1/84pdYtPzqV79eev5CsQOy889EYCIwEZgITAQmAvsjcGzx8h/ YvnGb//u8lu//7fLEtrf PZ/pCjk2A5xfef3f3f5rd/ 3SXq36gTipef/ KXyy9//Zvll7/6dd/fX/8GZTe64Ij/x WPfi/gamf9uz9AHBBzOzb7E4GJwERgIjAReAEETPHyt8s/hWJD/f2D5TujgcoCxS1ewmH8e3 x/PteW2xD jyix9iF4uWnP/vF8otf/nr5 S9 hX9/4bwVBGNp3q9R1qjcpyvjhaIw/gkYShx e0Puot7ZmAhMBCYCE4GJwLUQKBcvOxz WZi2eFETthQvf7t85z wMi6 /snyR/Eaj/W9QvHyk5/ HAuSn/38l1jE/OjHP12 /af/y/KtP/n28j9/ 98u3/rjf7P8i3/1h8u//Fd/uPzwRz/BOTAXihiQ3f9PiO/3/4CKTFm8GHz//bf/ya5PovaPZWqcCEwEJgITgYnAGAIdxQsXBunJjHqLht uCHf 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28885

Similarly for the the other pick options. Hope I was able to make it clear this time.

I think the latest version is not picking high values

Paul_Hossler
08-27-2021, 06:57 AM
So if the High Values checkbox is check, then

From the 200 "Facility1" pick 10 randomly, and THEN only selected the highest from the 10?

Repeat for 10 from Facility2, etc. ???

anish.ms
08-27-2021, 07:15 AM
Hi Paul,
Sorry, what is 200 here? :think:
No, there is no random picking if the High Values checkbox is checked. 10 highest values from the entire data range for each facility.
Yes, for all facilities (all Strata)
Thanks!

Paul_Hossler
08-27-2021, 09:09 AM
Sorry - 200 was just a guess for howmany Facility1 lines there were

I made "High Values" a fourth option button since it's logic (as I understand) has nothing to do with the Equal or Proportional random sampling

28888


28889

anish.ms
08-27-2021, 10:47 AM
Thanks a lot Paul for your time and extended help! :bow:
I agree picking high values doesn't match with the word random in the page heading itself "Stratified Random Sampling".
So, I will try to understand your codes and try to make a fifth option for high values based on the proportionate random size. This infract will be duplicating the options, that's the reason I though to have checkbox option.
I think, instead of adding another option, I can keep the original 3 options and call the subs according to the checkbox checked or not.
Next step, I'm also thinking to pick samples only for the strata values selected from the list box.

Paul_Hossler
08-27-2021, 02:41 PM
In post #36 ...


I wanted the sample size to be considered like how it was working previously.

And if the check box is checked, it shall pick in the order of highest to lowest values instead of random pick.

If the checkbox is unchecked, then random pick, the way it was working previously

I think that is what I have in there now.

It picks the same number (a user input = 5) of highest values of another column (= SubAmt) for each Strata (=Facility Name)

I think it's cleaner and easier to maintain using different Option Buttons for each choice, instead of trying to mix multiple options



Are you thinking that the number selected ( = 5 above) from each Strata (=Facility Name) will vary proportionally?

You'd have to use a percentage figure I think

Example:

Strata = Facility Name
Other = SubAmt

Percentage input = 1%

Facility 1 has 10,000 records so select 100 highest SubAmt
Facility 2 has 1,000 records so select 10 highest SubAmt
Facility 3 has 5,000 records so select 50 highest SubAmt
Facility 4 has 20,000 records so select 200 highest SubAmt

anish.ms
08-27-2021, 07:29 PM
Thanks Paul!
I will try it out

anish.ms
09-05-2021, 11:41 AM
Hi Paul,
Hope all well at your end
Basis of understanding some part of your codes, I could do the coding for proportionate samples from a high value filed. I have also made some cosmetic changes in the selection criteria and related codes. However, there is no change in the main codes.

I'm back again as I have a problem here with the sample file attached. In case if the number of strata is more, the tool is getting stuck as I understand it loops from the first row till last row every time for each strata. Is there any way around to resolve this issue. For example, VENDOR_NAME in the attached file.

I had slowness in viewing the strata values (View Statistics) because of the same looping which was later resolved by replacing for looping with countifs.
Could you please look in to it whenever you have time

Thanks in Advance!

Paul_Hossler
09-10-2021, 04:49 PM
1 skipped the ProgressBar updating and used Application.StatusBar for speed

Try picking VENDOR Equal and Proportional and see if it's faster

anish.ms
09-11-2021, 01:45 AM
Thanks a lot Paul!
Both equal and proportionate are working faster for the random pick method.
I will try the high value pick option by using your above method (storing the entire data range in an array)

anish.ms
09-11-2021, 05:40 AM
One doubt
How can I exclude if there is a heading for the data range without converting to a Table?

28953
For example in the above case, the first row should be 3 not 2. And it has to be dynamic, there may or mayn't be a heading.
Is it possible to consider the first row which has the last used column, something like that?

Paul_Hossler
09-11-2021, 08:22 AM
You could probably make an assumption that if the first row is all Strings and some cell in the second row is NOT a String, then there are headers

Or


Use the Custom Sort approach and get input from the user


28954

anish.ms
09-11-2021, 09:42 AM
Thanks Paul!
I will check out that option

anish.ms
09-11-2021, 11:31 AM
Hi Paul,

I was testing this tool in different work books and I would request your help in the following 2 areas-

(1) How can I sort the strata list based on the count in descending order and show in the list box

UF_StrataList.lbSummary.List = aryList
(2) How can I pick samples only for the selected strata item from the list box. In the attached example, if I select the column "DenialCode", 90% of the line items are "blank". Hence, I want to skip the strata "blank" and pick the samples only from few selected strata items.
If there is a selection, pick samples only from the selected strata or else pick from all

Thanks in advance!

anish.ms
09-17-2021, 09:57 PM
Dear Paul,
Please find attached the revised file as there is some issue with the file attached previously in #51. I have attached the sample data separately here du to the file size.
Thanks in Advance!

Paul_Hossler
09-18-2021, 12:36 AM
You can try this

I added 2 pieces of code

I also only used 1700 data rows for the second file

28983



Private Sub cbExit2_Click()
Dim i As Long

'------------------------------------------------------------------------- 9/18/2021
For i = 2 To Me.lbSummary.ListCount - 1
If Me.lbSummary.Selected(i) = True Then
sStrataSelected = Me.lbSummary.List(i)
Exit For
End If
Next i

If sStrataSelected = "" Then
MsgBox "Do All"
Else
MsgBox "Do " & sStrataSelected
End If


Me.lbSummary.Clear
Me.Hide
Unload Me
End Sub







aryList(numStrata + 2, 0) = "Total"
aryList(numStrata + 2, 1) = iTotal
aryList(numStrata + 2, 2) = "100%"

'sort----------------------------------------------------------- 9/18/2021
ReDim arySort(1 To numStrata + 2)
For iStrata = LBound(aryList, 1) To UBound(aryList, 1)
arySort(iStrata) = Format(aryList(iStrata, 1), "000000000000") & Chr(1) & aryList(iStrata, 0) & Chr(1) & aryList(iStrata, 2)
Next iStrata

Call sortQuick(arySort, 2, 32, xlDescending)

For iStrata = LBound(aryList, 1) To UBound(aryList, 1)
vSplit = Split(arySort(iStrata), Chr(1))
aryList(iStrata, 0) = vSplit(1)
aryList(iStrata, 1) = Format(vSplit(0), "0")
aryList(iStrata, 2) = vSplit(2)
Next iStrata

With UF_StrataList.lbSummary
.ColumnCount = UBound(aryList, 2) + 1
.ColumnWidths = "250;50;50"
.List = aryList
End With

anish.ms
09-18-2021, 03:50 AM
Thanks a lot Paul!
I will try it out and let you know.

anish.ms
09-19-2021, 10:29 AM
Hi Paul,
Sorting the list box items is having some issue and I'm unable to trace it out.
It looks like, works fine for lesser number of strata and in case larger number strata items, the initial items are sorted not all.
There are 374 strata items in the list below and this is how it looks like

28986

It also looks like Total is coming first if all the items are sorted
28987
Could you please check and help me?

Paul_Hossler
09-19-2021, 01:01 PM
I left some test code in

Change the marked line and see if it's better



'sort----------------------------------------------------------- 9/18/2021
ReDim arySort(1 To numStrata + 2)
For iStrata = LBound(aryList, 1) To UBound(aryList, 1)
arySort(iStrata) = Format(aryList(iStrata, 1), "000000000000") & Chr(1) & aryList(iStrata, 0) & Chr(1) & aryList(iStrata, 2)
Next iStrata

Call sortQuick(arySort, 2, numStrata - 1, xlDescending) ' <<<<<<<<<<<<<<<<<<<<<<<<<<<<<<<<<<<<<<<<<<<<<<<<

anish.ms
09-19-2021, 07:57 PM
Thanks Paul!
I have changed it to numStrata + 1
numStrata - 1 was resulting an issue in the second last line

Paul_Hossler
09-19-2021, 09:38 PM
You're right -- should have been a +1

anish.ms
09-25-2021, 10:33 AM
Hi Paul!,

It is almost ready after 2 months to share with my team members. Thanks for your continued help so far.
I have made few changes in codes to facilitate the option of picking samples from selected strata in list box by adding the selected values to an another collection called "StrataList2".
I request your help in the following -

View statistics is taking long time if the number of strata values are more. For example, "NetAmt" in the sample file attached. Is there any alternate way other than the currently used countif to load the statistics faster?

cntArray = Application.CountIfs(rRange, StrataList(iStrata))

Thanks in advance!

Paul_Hossler
09-26-2021, 07:25 PM
This seems faster in my tests




Option Explicit


Sub ViewStastistics()
Dim wsTemp As Worksheet
Dim ptTemp As PivotTable
Dim sStrata As String
Dim aryFromData As Variant
Dim i As Long

Application.ScreenUpdating = False

'fill in blanks if any
On Error Resume Next
rData.Columns(colStrataPicked).SpecialCells(xlCellTypeBlanks).Value = "(blank)"
On Error GoTo 0

sStrata = aryStrataHeaders(colStrataPicked)

'new temp sheet
Set wsTemp = Worksheets.Add

'create pivot table
ThisWorkbook.PivotCaches.Create(SourceType:=xlDatabase, SourceData:=rData, Version:=7).CreatePivotTable _
TableDestination:=wsTemp.Cells(1, 1), TableName:="PivotTable2", DefaultVersion:=7


Set ptTemp = wsTemp.PivotTables(1)

'Count of goes first
With ptTemp
.AddDataField .PivotFields(sStrata), "Count of " & sStrata, xlCount
With .PivotFields(sStrata)
.Orientation = xlRowField
.Position = 1
End With

.RowAxisLayout xlTabularRow
.ColumnGrand = True
.RowGrand = False

.PivotFields(sStrata).AutoSort xlDescending, "Count of " & sStrata

aryFromData = .TableRange2.Value
End With

'delete PT worksheet
Application.DisplayAlerts = False
wsTemp.Delete
Application.DisplayAlerts = True

ReDim Preserve aryFromData(LBound(aryFromData, 1) To UBound(aryFromData, 1), LBound(aryFromData, 2) To UBound(aryFromData, 2) + 1)

'put in column heders
aryFromData(LBound(aryFromData, 1), 1) = "Strata Values"
aryFromData(LBound(aryFromData), 2) = "Count"
aryFromData(LBound(aryFromData), 3) = "Percentage"


'put in totals
aryFromData(UBound(aryFromData, 1), 1) = "Total"
aryFromData(UBound(aryFromData, 1), 2) = numRowsOfData
aryFromData(UBound(aryFromData, 1), 3) = "100%"

'put in percentage
For i = LBound(aryFromData, 1) + 1 To UBound(aryFromData, 1) - 1
aryFromData(i, 3) = Format(aryFromData(i, 2) / numRowsOfData, "0.00%")
Next i

Load UF_StrataList

With UF_StrataList.lbSummary
.ColumnCount = UBound(aryFromData, 2) + 1
.ColumnWidths = "250;50;50"
.List = aryFromData
End With


Erase aryFromData


Application.ScreenUpdating = True
End Sub

anish.ms
09-26-2021, 07:43 PM
Thanks Paul!
I'm getting a run time error '5': Invalid procedure call or argument with create pivot table code
Could you please check and help me

anish.ms
09-26-2021, 08:02 PM
It is working when I changed the version from 7 to 15. Hope that is fine


ThisWorkbook.PivotCaches.Create(SourceType:=xlDatabase, SourceData:=rData, Version:=xlPivotTableVersion15).CreatePivotTable _
TableDestination:=wsTemp.Cells(1, 1), TableName:="PivotTable2", DefaultVersion:=xlPivotTableVersion15

Paul_Hossler
09-27-2021, 03:03 AM
Yea, I forgot to mention that the PT version seems to be dependent on different users

Glad you sorted it out. I never really figured out what was the best way to handle it since the macro recorder always put in



DefaultVersion:=7




https://docs.microsoft.com/en-us/office/vba/api/excel.xlpivottableversionlist



Specifies the version of a PivotTable or a PivotCache. Creating PivotTables with a specific version ensures that tables created in Excel behave in the same manner as they did in the corresponding version of Excel.



Name
Value
Description


xlPivotTableVersion2000
0
Excel 2000


xlPivotTableVersion10
1
Excel 2002


xlPivotTableVersion11
2
Excel 2003


xlPivotTableVersion12
3
Excel 2007


xlPivotTableVersion14
4
Excel 2010


xlPivotTableVersion15
5
Excel 2013


xlPivotTableVersionCurrent
-1
Provided only for backward compatibility

anish.ms
01-19-2022, 11:56 AM
Hi Paul,
Hope all is well at your end.
I recently added this tool as an excel add-in and added it to my Quick Access Toolbar (QAT). And then if I'm using it from the QAT/Add-in, I'm getting the error as mentioned in #61 with the below code. It is working fine in the normal version/other than add-in version.


ThisWorkbook.PivotCaches.Create(SourceType:=xlDatabase, SourceData:=rData, Version:=xlPivotTableVersion15).CreatePivotTable _
TableDestination:=wsTemp.Cells(1, 1), TableName:="Stastistics", DefaultVersion:=xlPivotTableVersion15


I'm not sure what is the issue here. Could you please help me on this?
I'm unable to attach the 'xlam' version of the file here
Thanks,

Paul_Hossler
01-19-2022, 02:04 PM
Try replacing "ThisWorkbook" with "ActiveWorkbook" and let me know

There might be other instances of "ThisWorkbook" that need to be changed

anish.ms
01-19-2022, 08:34 PM
Thanks Paul, it is working now