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I have a table Persons with personaldata and so on. There are lots of columns but the once of interest here are: addressindex, lastname and firstname where addressindex is a unique address drilled down to the door of the apartment. So if I have 'like below' two persons with the lastname and one the firstnames are the same they are most likely duplicates.

I need a way to list these duplicates.

tabledata:

personid     1
firstname    "Carl"
lastname     "Anderson"
addressindex 1

personid     2
firstname    "Carl Peter"
lastname     "Anderson"
addressindex 1

I know how do this if I were to match exactly on all columns but I need fuzzy match to do the trick with (from the above example) a result like:

Row     personid      addressindex     lastname     firstname
1       2             1                Anderson     Carl Peter
2       1             1                Anderson     Carl
.....

Any hints on how to solve this in a good way?

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2  
BTW way, it is quite likely it is NOT the same person in the case given. Fathers and sons do live together at times you know. –  HLGEM May 28 '09 at 17:21
    
This is always the problem with semi-clever address evaluation algorithms. You can make an assumption, but you can never be sure. –  Tomalak May 28 '09 at 17:24
1  
Good point although The descition is another issue based on the result of the fuzzy match. –  Frederik Jun 6 '09 at 7:07
    
@justSteve: I added a new answer proposing a more up-to-date possibility. –  Valentino Vranken Mar 16 '12 at 9:34
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9 Answers

up vote 27 down vote accepted

You might find this helpful:

http://anastasiosyal.com/archive/2009/01/11/18.aspx

It provides an introduction to SOUNDEX and also gives step by step instructions for setting up an open source plugin that's reported to work a little better.


It appears the link above has gone stale. That article and everything since 2008 on the original web site is no longer available. Here is an internet archive wayback link that will show the original article:

http://web.archive.org/web/20100209050309/http://anastasiosyal.com/archive/2009/01/11/18.aspx

If that also fails, the product referred to in the original link is available here:
http://sourceforge.net/projects/simmetrics/

Note that this product requires you to use .Net CLR functions for your queries in Sql Server, which not every admin will make available.

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+1 for the nice link! –  RedFilter May 28 '09 at 17:01
    
soundex is, I believe, standard and doesn't require any special database setup but isn't all that accurate (IMHO). Full Text Indexing gives you more features but takes more to setup. –  Zack May 28 '09 at 17:21
    
Thanx, this solvesy problem better than my own attempt. Thanx Chris for your thourough explanation of the library and how to functionize it in SQL server. SimMetrics is a great library. –  Frederik Jul 8 '09 at 11:49
    
Soundex really is crap. If you're working with a very small and distinctly unique set of data then it does the job, but anything of even remotely significant size (eg even sorting out my CD collection) will show just how flawed Soundex is. –  nathanchere Feb 24 '11 at 4:36
4  
@Ferre - Note that I did not recommend soundex - I recommended a plugin that improves on soundex. –  Joel Coehoorn Feb 24 '11 at 4:59
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In addition to the other good info here, you might want to consider using the Double Metaphone phonetic algorithm which is much superior to SOUNDEX. There is a Transact-SQL version.

That will assist in matching names with slight misspellings, e.g., Carl vs. Karl.

http://www.sqlmag.com/Articles/ArticleID/26094/pg/1/1.html

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I've found that the stuff SQL Server gives you to do fuzzy matching is pretty clunky. I've had really good luck with my own CLR functions using the Levenshtein distance algorithm and some weighting. Using that algorithm, I've then made a UDF called GetSimilarityScore that takes two strings and returns a score between 0.0 and 1.0. The closer to 1.0 the match is, the better. Then, query with a threshold of >=0.8 or so to get the most likely matches. Something like this:

if object_id('tempdb..#similar') is not null drop table #similar
select a.id, (
    select top 1 x.id
   from MyTable x
   where x.id <> a.id
   order by dbo.GetSimilarityScore(a.MyField, x.MyField) desc
) as MostSimilarId
into #similar
from MyTable a

select *, dbo.GetSimilarityScore(a.MyField, c.MyField)
from MyTable a
join #similar b on a.id = b.id
join MyTable c on b.MostSimilarId = c.id

Just don't do it with really large tables. It's a slow process.

Here's the CLR UDFs:

''' <summary>
''' Compute the distance between two strings.
''' </summary>
''' <param name="s1">The first of the two strings.</param>
''' <param name="s2">The second of the two strings.</param>
''' <returns>The Levenshtein cost.</returns>
<Microsoft.SqlServer.Server.SqlFunction()> _
Public Shared Function ComputeLevenstheinDistance(ByVal string1 As SqlString, ByVal string2 As SqlString) As SqlInt32
    If string1.IsNull OrElse string2.IsNull Then Return SqlInt32.Null
    Dim s1 As String = string1.Value
    Dim s2 As String = string2.Value

    Dim n As Integer = s1.Length
    Dim m As Integer = s2.Length
    Dim d As Integer(,) = New Integer(n, m) {}

    ' Step 1
    If n = 0 Then Return m
    If m = 0 Then Return n

    ' Step 2
    For i As Integer = 0 To n
        d(i, 0) = i
    Next

    For j As Integer = 0 To m
        d(0, j) = j
    Next

    ' Step 3
    For i As Integer = 1 To n
        'Step 4
        For j As Integer = 1 To m
            ' Step 5
            Dim cost As Integer = If((s2(j - 1) = s1(i - 1)), 0, 1)

            ' Step 6
            d(i, j) = Math.Min(Math.Min(d(i - 1, j) + 1, d(i, j - 1) + 1), d(i - 1, j - 1) + cost)
        Next
    Next
    ' Step 7
    Return d(n, m)
End Function

''' <summary>
''' Returns a score between 0.0-1.0 indicating how closely two strings match.  1.0 is a 100%
''' T-SQL equality match, and the score goes down from there towards 0.0 for less similar strings.
''' </summary>
<Microsoft.SqlServer.Server.SqlFunction()> _
Public Shared Function GetSimilarityScore(string1 As SqlString, string2 As SqlString) As SqlDouble
    If string1.IsNull OrElse string2.IsNull Then Return SqlInt32.Null

    Dim s1 As String = string1.Value.ToUpper().TrimEnd(" "c)
    Dim s2 As String = string2.Value.ToUpper().TrimEnd(" "c)
    If s1 = s2 Then Return 1.0F ' At this point, T-SQL would consider them the same, so I will too

    Dim flatLevScore As Double = InternalGetSimilarityScore(s1, s2)

    Dim letterS1 As String = GetLetterSimilarityString(s1)
    Dim letterS2 As String = GetLetterSimilarityString(s2)
    Dim letterScore As Double = InternalGetSimilarityScore(letterS1, letterS2)

    'Dim wordS1 As String = GetWordSimilarityString(s1)
    'Dim wordS2 As String = GetWordSimilarityString(s2)
    'Dim wordScore As Double = InternalGetSimilarityScore(wordS1, wordS2)

    If flatLevScore = 1.0F AndAlso letterScore = 1.0F Then Return 1.0F
    If flatLevScore = 0.0F AndAlso letterScore = 0.0F Then Return 0.0F

    ' Return weighted result
    Return (flatLevScore * 0.2F) + (letterScore * 0.8F)
End Function

Private Shared Function InternalGetSimilarityScore(s1 As String, s2 As String) As Double
    Dim dist As SqlInt32 = ComputeLevenstheinDistance(s1, s2)
    Dim maxLen As Integer = If(s1.Length > s2.Length, s1.Length, s2.Length)
    If maxLen = 0 Then Return 1.0F
    Return 1.0F - Convert.ToDouble(dist.Value) / Convert.ToDouble(maxLen)
End Function

''' <summary>
''' Sorts all the alpha numeric characters in the string in alphabetical order
''' and removes everything else.
''' </summary>
Private Shared Function GetLetterSimilarityString(s1 As String) As String
    Dim allChars = If(s1, "").ToUpper().ToCharArray()
    Array.Sort(allChars)
    Dim result As New StringBuilder()
    For Each ch As Char In allChars
        If Char.IsLetterOrDigit(ch) Then
            result.Append(ch)
        End If
    Next
    Return result.ToString()
End Function

''' <summary>
''' Removes all non-alpha numeric characters and then sorts
''' the words in alphabetical order.
''' </summary>
Private Shared Function GetWordSimilarityString(s1 As String) As String
    Dim words As New List(Of String)()
    Dim curWord As StringBuilder = Nothing
    For Each ch As Char In If(s1, "").ToUpper()
        If Char.IsLetterOrDigit(ch) Then
            If curWord Is Nothing Then
                curWord = New StringBuilder()
            End If
            curWord.Append(ch)
        Else
            If curWord IsNot Nothing Then
                words.Add(curWord.ToString())
                curWord = Nothing
            End If
        End If
    Next
    If curWord IsNot Nothing Then
        words.Add(curWord.ToString())
    End If

    words.Sort(StringComparer.OrdinalIgnoreCase)
    Return String.Join(" ", words.ToArray())
End Function
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Not having access to MDS and thanking that I'm not working with Big Data - this looks like a great fit. Highly appreciate the details. –  justSteve Mar 18 '12 at 20:30
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I would use SQL Server Full Text Indexing, which will allow you to do searches and return things that not only contain the word but also may have a misspelling.

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here is a nice article on it: developer.com/db/article.php/3446891 –  Russ Bradberry May 28 '09 at 17:01
    
Thand, i have considered it bit se use standard edition and full text search isn't an option here. –  Frederik Jun 6 '09 at 7:12
    
Full Text Search is available in all editions of SQL Server 2005 and 2008 –  Russ Bradberry Jun 12 '09 at 20:17
    
ok, then I will consider it. –  Frederik Jul 10 '09 at 21:02
    
Dead link. ExtraChars –  Christopher Pfohl Nov 28 '12 at 17:51
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Since the first release of Master Data Services, you've got access to more advanced fuzzy logic algorithms than what SOUNDEX implements. So provided that you've got MDS installed, you'll be able to find a function called Similarity() in the mdq schema (MDS database).

More info on how it works: http://blog.hoegaerden.be/2011/02/05/finding-similar-strings-with-fuzzy-logic-functions-built-into-mds/

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I personally use a CLR implementation of the Jaro-Winkler algorithm which seems to work pretty well - it struggles a bit with strings longer than about 15 characters and doesn't like matching email addresses but otherwise is quite good - full implementation guide can be found here

If you are unable to use CLR functions for whatever reasons, maybe you could try running the data through an SSIS package (using the fuzzy transformation lookup) - detailed here

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Regarding de-duping things your string split and match is great first cut. If there are known items about the data that can be leveraged to reduce workload and/or produce better results, it is always good to take advantage of them. Bear in mind that often for de-duping it is impossible to entirely eliminate manual work, although you can make that much easier by catching as much as you can automatically and then generating reports of your "uncertainty cases."

Regarding name matching: SOUNDEX is horrible for quality of matching and especially bad for the type of work you are trying to do as it will match things that are too far from the target. It's better to use a combination of double metaphone results and the Levenshtein distance to perform name matching. With appropriate biasing this works really well and could probably be used for a second pass after doing a cleanup on your knowns.

You may also want to consider using an SSIS package and looking into Fuzzy Lookup and Grouping transformations (http://msdn.microsoft.com/en-us/library/ms345128(SQL.90).aspx).

Using SQL Full-Text Search (http://msdn.microsoft.com/en-us/library/cc879300.aspx) is a possibility as well, but is likely not appropriate to your specific problem domain.

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You can use the SOUNDEX and related DIFFERENCE function in SQL Server to find similar names. The reference on MSDN is here.

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do it this way

         create table person(
         personid int identity(1,1) primary key,
         firstname varchar(20),
         lastname varchar(20),
         addressindex int,
         sound varchar(10)
         )

and later on create a trigger

         create trigger trigoninsert for dbo.person
         on insert 
         as
         declare @personid int;
         select @personid=personid from inserted;
         update person
         set sound=soundex(firstname) where personid=@personid;

now what i can do is i can create a procedure which looks something like this

         create procedure getfuzzi(@personid int)
          as
         declare @sound varchar(10);
         set @sound=(select sound from person where personid=@personid;
         select personid,firstname,lastname,addressindex from person
         where sound=@sound

this will return you all the names that are nearly in match with the names provided by for a particular personid

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