Matchcode Optimization:Vowels: Difference between revisions

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==Vowels==
==Vowels==
===Specifics===
===Specifics===
Only vowels will be compared. Consonants will be removed. ‘Y’ is defined as a vowel in this algorithm.
:Only vowels will be compared. Consonants will be removed. ‘Y’ is defined as a vowel in this algorithm.


===Summary===
===Summary===
This algorithm removes consonants from the string and compares two strings based on their vowels.
:This algorithm removes consonants from the string and compares two strings based on their vowels.


===Returns===
===Returns===
Returns a match if two strings’ vowels match exactly.
:Returns a match if two strings’ vowels match exactly.


===Example Matchcode Component===
===Example Matchcode Component===
Line 34: Line 34:


===Recommended Usage===
===Recommended Usage===
Hybrid Deduper, where a single incoming record can quickly be evaluated independently against each record in an existing large master database.
:Hybrid Deduper, where a single incoming record can quickly be evaluated independently against each record in an existing large master database.


Databases created via real-time data entry where audio likeness errors are introduced.
:Databases created via real-time data entry where audio likeness errors are introduced.


Databases of US and English language origin.
:Databases of US and English language origin.


===Not Recommended For===
===Not Recommended For===
Gather/scatter, survivorship, or record consolidation of sensitive data.
:Gather/scatter, survivorship, or record consolidation of sensitive data.
Quantifiable data or records with proprietary keywords not associated in our knowledgebase tables.
 
:Quantifiable data or records with proprietary keywords not associated in our knowledgebase tables.


===Do Not Use With===
===Do Not Use With===
UTF-8 data. This algorithm was ported to MatchUp with the assumption that a character equals one byte, and therefore results may not be accurate if the data contains multi-byte characters.
:UTF-8 data. This algorithm was ported to MatchUp with the assumption that a character equals one byte, and therefore results may not be accurate if the data contains multi-byte characters.




[[Category:MatchUp Hub]]
[[Category:MatchUp Hub]]
[[Category:Matchcode Optimization]]
[[Category:Matchcode Optimization]]

Latest revision as of 14:32, 27 September 2018

← MatchUp Hub

Matchcode Optimization Navigation
Matchcode Optimization
First Component
Fuzzy Algorithms
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Blank Matching
Advanced Component Types
Algorithms
Accunear
Alphas
Consonants
Containment
Dice's Coefficient
Double Metaphone
Exact
Fast Near
Frequency
Frequency Near
Jaccard Similarity Coefficient
Jaro
Jaro-Winkler
Longest Common Substring (LCS)
MD Keyboard
Needleman-Wunsch
N-Gram
Numeric
Overlap Coefficient
Phonetex
Smith-Waterman-Gotoh
Soundex
UTF8 Near
Vowels


Vowels

Specifics

Only vowels will be compared. Consonants will be removed. ‘Y’ is defined as a vowel in this algorithm.

Summary

This algorithm removes consonants from the string and compares two strings based on their vowels.

Returns

Returns a match if two strings’ vowels match exactly.

Example Matchcode Component

Example Data

STRING1 STRING2 RESULT
Johnson Jhnsn Unique
Lynda Dylan Match
Smith Smith Match
Brian Ian Match



Performance
Slower Faster
Matches
More Matches Greater Accuracy


Recommended Usage

Hybrid Deduper, where a single incoming record can quickly be evaluated independently against each record in an existing large master database.
Databases created via real-time data entry where audio likeness errors are introduced.
Databases of US and English language origin.

Not Recommended For

Gather/scatter, survivorship, or record consolidation of sensitive data.
Quantifiable data or records with proprietary keywords not associated in our knowledgebase tables.

Do Not Use With

UTF-8 data. This algorithm was ported to MatchUp with the assumption that a character equals one byte, and therefore results may not be accurate if the data contains multi-byte characters.