Stack Overflow is a community of 4.7 million programmers, just like you, helping each other.

Join them; it only takes a minute:

Sign up
Join the Stack Overflow community to:
  1. Ask programming questions
  2. Answer and help your peers
  3. Get recognized for your expertise

I am using the fts4 extension of sqlite3 to enable full-text indexing and searching of text data. This it working great, but I've noticed that the results are not relevance-ranked at all. I guess I am too used to Lucene. I've seen some brief suggestions to write a custom rank method using the matchinfo() results, but it's not clear to me how this is done, or whether there are any sophisticated examples out there. How have others dealt with this?

share|improve this question
up vote 7 down vote accepted

There's a complete example in the documentation, look at the end of appendix a. You'll need to do slightly more work to get a good relevance ranking as the function provided is good only for getting started. For example, with matchinfo(table,'pcnalx') there's enough information to implement Okapi BM25.

share|improve this answer
    
Are there any public implementations of Okapi BM25 from matchinfo? – tofutim Jun 26 '12 at 16:55
1  
I don't know of any. I've implemented it myself, but the code isn't public. – ergosys Jun 26 '12 at 17:23
    
Is it licenseable? – tofutim Jun 26 '12 at 17:25
1  
In case anyone runs into this, there are some tutorials on BM25/BM25F - irthoughts.wordpress.com/2011/08/03/… – tofutim Jun 26 '12 at 17:29
    
It is, but it's not really the quality I'd want on something public. It's not that difficult though, basically a 1:1 translation of the wikipedia equation, which looks worse than it is. I did find flooring the summand at zero was best for my case, YMMV. – ergosys Jun 26 '12 at 18:15

There seems to be a distinct lack of documentation on how to implement Okapi BM25 in C and it seems it is an unspoken thing that the implementation is left as an exercise for the user.

Well I found the bro of a programmer "Radford 'rads' Smith" who chucked this up on GitHub

https://github.com/rads/sqlite-okapi-bm25

It only implements BM25 although I'm looking into BM25F tweaks now....

....and here it is.

https://github.com/neozenith/sqlite-okapi-bm25

share|improve this answer

Here is an implementation of Okapi BM25. Using this in combination with the suggestions at SQLite.org will help you generate a relevance-ranked MATCH query. This was written all in VB.Net and the query was called using System.Data.SQLite functions. The custom SQLiteFunction at the end can be called from the SQL code without issue, as long as the SQL code is called using System.Data.SQLite functions.

Public Class MatchInfo
    Property matchablePhrases As Integer
    Property userDefinedColumns As Integer
    Property totalDocuments As Integer
    Private _int32HitData As List(Of Integer)
    Private _longestSubsequencePhraseMatches As New List(Of Integer)
    Private _tokensInDocument As New List(Of Integer)
    Private _averageTokensInDocument As New List(Of Integer)

    Private _max_hits_this_row As Integer?
    Public ReadOnly Property max_hits_this_row As Integer
        Get
            If _max_hits_this_row Is Nothing Then
                _max_hits_this_row = 0
                For p = 0 To matchablePhrases - 1
                    For c = 0 To userDefinedColumns - 1
                        Dim myHitsThisRow As Integer = hits_this_row(p, c)
                        If myHitsThisRow > _max_hits_this_row Then
                            _max_hits_this_row = myHitsThisRow
                        End If
                    Next
                Next
            End If

            Return _max_hits_this_row
        End Get
    End Property

    Private _max_hits_all_rows As Integer?
    Public ReadOnly Property max_hits_all_rows As Integer
        Get
            If _max_hits_all_rows Is Nothing Then
                _max_hits_all_rows = 0
                For p = 0 To matchablePhrases - 1
                    For c = 0 To userDefinedColumns - 1
                        Dim myHitsAllRows As Integer = hits_all_rows(p, c)
                        If myHitsAllRows > _max_hits_all_rows Then
                            _max_hits_all_rows = myHitsAllRows
                        End If
                    Next
                Next
            End If

            Return _max_hits_all_rows
        End Get
    End Property

    Private _max_docs_with_hits As Integer?
    Public ReadOnly Property max_docs_with_hits As Integer
        Get
            If _max_docs_with_hits Is Nothing Then
                _max_docs_with_hits = 0
                For p = 0 To matchablePhrases - 1
                    For c = 0 To userDefinedColumns - 1
                        Dim myDocsWithHits As Integer = docs_with_hits(p, c)
                        If myDocsWithHits > _max_docs_with_hits Then
                            _max_docs_with_hits = myDocsWithHits
                        End If
                    Next
                Next
            End If

            Return _max_docs_with_hits
        End Get
    End Property

    Private _BM25Rank As Double?
    Public ReadOnly Property BM25Rank As Double
        Get
            If _BM25Rank Is Nothing Then
                _BM25Rank = 0
                'calculate BM25 Rank
                'http://en.wikipedia.org/wiki/Okapi_BM25

                'k1, calibrates the document term frequency scaling. Having k1 as 0 corresponds to a binary model – no term frequency. Increasing k1 will give rare words more boost.
                'b, calibrates the scaling by document length, and can take values from 0 to 1, where having 0 means no length normalization and having 1 corresponds to fully scaling the term weight by the document length.

                Dim k1 As Double = 1.2
                Dim b As Double = 0.75

                For column = 0 To userDefinedColumns - 1
                    For phrase = 0 To matchablePhrases - 1
                        Dim IDF As Double = Math.Log((totalDocuments - hits_all_rows(phrase, column) + 0.5) / (hits_all_rows(phrase, column) + 0.5))
                        Dim score As Double = (IDF * ((hits_this_row(phrase, column) * (k1 + 1)) / (hits_this_row(phrase, column) + k1 * (1 - b + b * _tokensInDocument(column) / _averageTokensInDocument(column)))))
                        If score < 0 Then
                            score = 0
                        End If
                        _BM25Rank += score
                    Next
                Next

            End If

            Return _BM25Rank
        End Get
    End Property

    Public Sub New(raw_pcnalsx_MatchInfo As Byte())
        Dim int32_pcsx_MatchInfo As New List(Of Integer)
        For i = 0 To raw_pcnalsx_MatchInfo.Length - 1 Step 4
            int32_pcsx_MatchInfo.Add(BitConverter.ToUInt32(raw_pcnalsx_MatchInfo, i))
        Next

        'take the raw data and parse it out
        Me.matchablePhrases = int32_pcsx_MatchInfo(0)
        int32_pcsx_MatchInfo.RemoveAt(0)

        Me.userDefinedColumns = int32_pcsx_MatchInfo(0)
        int32_pcsx_MatchInfo.RemoveAt(0)

        Me.totalDocuments = int32_pcsx_MatchInfo(0)
        int32_pcsx_MatchInfo.RemoveAt(0)

        'remember that the columns are 0-based
        For i = 0 To userDefinedColumns - 1
            _averageTokensInDocument.Add(int32_pcsx_MatchInfo(0))
            int32_pcsx_MatchInfo.RemoveAt(0)
        Next

        For i = 0 To userDefinedColumns - 1
            _tokensInDocument.Add(int32_pcsx_MatchInfo(0))
            int32_pcsx_MatchInfo.RemoveAt(0)
        Next

        For i = 0 To userDefinedColumns - 1
            _longestSubsequencePhraseMatches.Add(int32_pcsx_MatchInfo(0))
            int32_pcsx_MatchInfo.RemoveAt(0)
        Next

        _int32HitData = New List(Of Integer)(int32_pcsx_MatchInfo)

    End Sub

    Public Function hits_this_row(phrase As Integer, column As Integer) As Integer
        Return _int32HitData(3 * (column + phrase * userDefinedColumns) + 0)
    End Function

    Public Function hits_all_rows(phrase As Integer, column As Integer) As Integer
        Return _int32HitData(3 * (column + phrase * userDefinedColumns) + 1)
    End Function

    Public Function docs_with_hits(phrase As Integer, column As Integer) As Integer
        Return _int32HitData(3 * (column + phrase * userDefinedColumns) + 2)
    End Function
End Class

<SQLiteFunction("Rank", 1, FunctionType.Scalar)>
Public Class Rank
    Inherits SQLiteFunction

    Public Overrides Function Invoke(args() As Object) As Object
        Return New MatchInfo(args(0)).BM25Rank
    End Function

End Class
share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.