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rxGetFuzzyKeys: Fuzzy keys for a character vector

Description

EXPERIMENTAL: Get fuzzy keys for a character vector

Usage

  rxGetFuzzyKeys(stringsIn, data = NULL, outFile = NULL, varsToKeep = NULL,
          matchMethod = c("lv", "j", "jw", "bag", "exact","none"),
          keyType = c( "all", "alphanum", "alpha", "mphone3", "soundex", "soundexNum", 
              "soundexAll", "soundexAm", "mphone3Vowels", "mphone3Exact"),
          ignoreCase = FALSE, ignoreSpaces = NULL, ignoreNumbers = TRUE, ignoreWords = NULL,
          minDistance = 0.7, dictionary = NULL, keyVarName = NULL,
          costs = c(insert = 1, delete = 1, subst = 1),
          hasMatchVarName = NULL, matchDistVarName = NULL, numMatchVarName = NULL, noMatchNA = FALSE,
          overwrite = FALSE
          )

Arguments

stringsIn

Character vector of strings to process or name of character variable.

data

NULL or data frame or RevoScaleR data source containing the variable to process.

outFile

NULL or RevoScaleR data source in which to put output.

varsToKeep

NULL or character vector of variables from the input 'data' to keep in the output data set. If NULL, all variables are kept. Ignored if data is NULL.

matchMethod

Method for matching to dictionary: 'none' for no matching, 'lv' for Levenshtein; 'j' for Jaro, 'jw' for JaroWinkler, 'bag' for bag of words, 'exact' for exact matching. The default matchMethod is 'lv'.

keyType

Transformation type in creating keys: 'all' to retain all characters, 'alphanum' for alphanumeric characters only, 'alpha' for letters only", 'mphone3' for Metaphone3 phonetic transformation, 'soundex' for Soundex phonetic transformation, 'mphone3Vowels' for Metaphone3 encoding more than initial vowels, 'mphone3Exact' for Metaphone3 with more exact consonants, 'soundexNum' for Soundex with numbers only, 'soundexAll' for Soundex not truncated at 4 characters, and 'soundexAm' for the American variant of Soundex.

ignoreCase

A logical specifying whether or not to ignore case when comparing strings to the dictionary

ignoreSpaces

A logical specifying whether or not to ignore spaces. If FALSE, for phonetic conversions each word in the string is processed separately and then concatenated together.

ignoreNumbers

A logical. If FALSE, numbers are converted to words before phonetic processing. If TRUE, numbers are ignored or removed.

ignoreWords

An optional character vector containing words to ignore when matching.

noMatchNA

A logical. If TRUE, if a match is not found an empty string is returned. Only applies when dictionary is provided.

minDistance

Minimum distance required for a match; applies only to distance metric algorithms (Levenshtein, Jaro, JaroWinkler). One is a perfect match. Zero is no similarity.

dictionary

Character vector containing the dictionary for string comparisons. Used for distance metric algorithms. from strings before processing.

keyVarName

NULL or a character string specifying the name to use for the newly created key variable. If NULL, the new variable name will be constructed using the stringsIn variable name and .key. Ignored if data is NULL.

costs

A named numeric vector with names insert, delete, and subst giving the respective costs for computing the Levenshtein distance. The default uses unit cost for all three. Ignored if Levenshtein distance not being used.

hasMatchVarName

NULL or a character string specifying the name to use for a logical variable indicating whether word was matched to dictionary or not. If NULL, no variable will be created.

matchDistVarName

NULL or a character string specifying the name to use for a numeric variable containing the distance of the match. If NULL, no variable will be created.

numMatchVarName

NULL or a character string specifying the name to use for an integer variable containing the number of alternative matches were found that satisfied minDistance criterion . If NULL, no variable will be created.

overwrite

A logical. If TRUE and the specified outFile exists, it will be overwritten.

Details

Two basic algorithms are provided, Soundex and Metaphone 3, with variations on both of them.
The rxGetFuzzyKeys function can process a character vector of data, a character column in a data frame, or a string variable in a RevoScaleR data source.

The simplified Soundex algorithm creates a 4-letter code: the first letter of the word as is, followed by 3 numbers representing consonants in the word, or zeros if necessary to fill out the four characters. Non-alphabetical characters are ignored. The Soundex method is used widely, and is available, for example, on the RootsWeb web site http://searches.rootsweb.ancestry.com/cgi-bin/Genea/soundex.sh .

American Soundex differs slightly from standard simplified Soundex in its treatment of 'H' and 'W', which are treated differently when present between two other consonants. This is described by the U.S. National Archives http://www.archives.gov/research/census/soundex.html .

Another variant of Soundex is to code the first letter in the same way that all letters are coded, giving the first letter less importance.
Using soundexNums as the keyType provides this variant.

Another popular variant of Soundex is to continue coding all letters rather than stopping at 4.
Extra zeros are not added to fill out the code, so the result may be less than 4 characters. For this variant, use soundexAll as the keyType.
Note that in this case, spaces are treated as vowels in separating consonants.

The Metaphone 3 algorithm was developed by Lawrence Philips, who designed and developed the original Metaphone algorithm in 1990 and the Double Metaphone algorithm in 2000. Metaphone 3 is reported to increase the accuracy of phonetic encoding from the 89 against a database of the most common English words, and names and non-English words familiar in North America.

In Metaphone3, all vowels are encoded to the same value - 'A'. If the mphone3 is used as the keyType, only initial vowels will be encoded at all. If mphone3Vowels is used as the keyType, 'A' will be encoded at all places in the word that any vowels are normally pronounced. 'W' as well as 'Y' are treated as vowels.

The mphone3Exact keyType is a variant of Metaphone3 that allows you to encode consonants as exactly as possible. This does not include 'S' vs. 'Z', since Americans will pronounce 'S' at the at the end of many words as 'Z', nor does it include 'CH' vs. 'SH'. It does cause a distinction to be made between 'B' and 'P', 'D' and 'T', 'G' and 'K', and 'V' and 'F'.

In phonetic matching, all non-alphabetic characters are ignored, so that any strings containing numbers may give misleading results. This is typically handled by removing numbers from strings and handling them separately, but occasionally it is convenient to have the numbers converted to their phonetic equivalent. This is accomplished by setting the ignoreNumbers parameter to FALSE.

Phonetic matching also typically treats the entire string as a single word. Setting the ignoreSpaces argument to TRUE results in each word being processed separately, with the result concatenated into a single (longer) code.

For information on similarity distance measures, see rxGetFuzzyDist.

Value

A character vector containing the fuzzy keys or a data source containing the fuzzy keys in a new variable.

Author(s)

Microsoft Corporation Microsoft Technical Support

See Also

rxGetFuzzyDist, rxDataStep

Examples


 cityDictionary <- c("Aberdeen", "Anacortes", "Arlington", "Auburn",
  "Bellevue", "Bellingham", "Bothell", "Bremerton", "Bothell", "Camas",
  "Des Moines", "Edmonds", "Everett", "Federal Way", "Kennewick",
  "Marysville", "Olympia", "Pasco", "Pullman", "Redmond", "Renton", "Sammamish",
  "Seattle", "Shoreline", "Spokane", "Tacoma", "Vancouver", "Yakima")

 cityNames <- c("Redmond", "Redmonde", "Edmondse", "REDMND", "EDMOnts")

 # The string distance matchMethods require a dictionary
 rxGetFuzzyKeys(stringsIn = cityNames, matchMethod = "lv", dictionary = cityDictionary)
 rxGetFuzzyKeys(stringsIn = cityNames, matchMethod = "jw", dictionary = cityDictionary)

 rxGetFuzzyKeys(stringsIn = cityNames, matchMethod = "lv", dictionary = cityDictionary, ignoreCase = TRUE)
 rxGetFuzzyKeys(stringsIn = cityNames, matchMethod = "jw", dictionary = cityDictionary, ignoreCase = TRUE)

 # Use mphone3 converstion before matching
 rxGetFuzzyKeys(stringsIn = cityNames, matchMethod = "lv", keyType = "mphone3",
     dictionary = cityDictionary)

 # Compare soundex and American soundex    
 origStr <- c("Ashcroft", "FLASHCARD")
 soundexCode <- rxGetFuzzyKeys(stringsIn = origStr, keyType = "soundex")
 soundexAmCode <- rxGetFuzzyKeys(stringsIn = origStr, keyType = "soundexAm")
 # Show the original string, Soundex, and American Soundex codes
 data.frame(origStr, soundexCode, soundexAmCode)

 # Compare Metaphone3 with Metaphone3 with internal vowels
 origStr <- c("Phorensics", "forensics", "Nicholas", "Nicolas", "Nikolas",
      "Knight", "Night", "Stephen", "Steven", "Matthew", "Matt", "Shuan", "Shawn",
      "McDonald", "MacDonald", "Schwarzenegger", "Shwardseneger", "Ellen", "Elena", "Allen")

 mphone3Code <- rxGetFuzzyKeys(stringsIn = origStr, keyType = "mphone3")
 mphone3VowelsCode <- rxGetFuzzyKeys(stringsIn = origStr, keyType = "mphone3Vowels")
 data.frame(origStr, mphone3Code, mphone3VowelsCode)

 # Compare Metaphone 3 with Metaphone3 with more exact consonants
 origStr <- c("Phorensics", "forensics", "Nicholas", "Nicolas", "Nikolas",
      "Knight", "Night", "Stephen", "Steven", "Matthew", "Matt", "Shuan", "Shawn",
      "McDonald", "MacDonald", "Schwarzenegger", "Shwardseneger", "Ellen", "Elena", "Allen")

 mphone3Code <- rxGetFuzzyKeys(stringsIn = origStr, keyType = "mphone3")
 mphone3ExactCode <- rxGetFuzzyKeys(stringsIn = origStr, keyType = "mphone3Exact")
 data.frame(origStr, mphone3Code, mphone3ExactCode)

 # Including numbers and spaces
 origStr <- c("10 Main Apt 410", "20 Main Apt 300", "20 Main Apt 302")
 mphone3Code <- rxGetFuzzyKeys(stringsIn = origStr, keyType = "mphone3")
 mphone3NumCode <- rxGetFuzzyKeys(stringsIn = origStr, keyType = "mphone3", ignoreNumbers = FALSE)
 mphone3NumSpCode <- rxGetFuzzyKeys(stringsIn = origStr, keyType = "mphone3", ignoreNumbers = FALSE, ignoreSpaces = FALSE)
 data.frame(origStr, mphone3Code, mphone3NumCode, mphone3NumSpCode)

 # Non-phonetic key types
 origStr <- c("10 Main St", "Main St. ", "15 Second  Ave.", "Second 15 Ave.")
 alphaCode <- rxGetFuzzyKeys(stringsIn = origStr, keyType = "alpha")
 alphaNumCode <- rxGetFuzzyKeys(stringsIn = origStr, keyType = "alphaNum")
 data.frame(origStr, alphaCode, alphaNumCode)

 # Use minDistance to correct data
 # Create a small city dictionary
 cityDictionary <- c("Seattle", "Olympia", "Spokane")

 # Create a vector of city names to correct
 cityNames <- c("Seattle", "Seattlee", "Olympa", "SPOKANE", "OLYmpia")

 # Large minimum distance should result in no change
 cityKey1 <- rxGetFuzzyKeys(stringsIn = cityNames, matchMethod = "lv", dictionary = cityDictionary, minDistance = .9)
 # Print results to console
 cityKey1

 # Smaller minimum distance should fix matched cases, but not mixed case issues
 cityKey2 <- rxGetFuzzyKeys(stringsIn = cityNames, matchMethod = "lv", dictionary = cityDictionary, minDistance = .8)
 # Print results to console
 cityKey2

 # Small minimum distance should fix everything, even mixed case issues
 cityKey3 <- rxGetFuzzyKeys(stringsIn = cityNames, matchMethod = "lv", dictionary = cityDictionary, minDistance = .1)
 # Print results to console
 cityKey3

 ## Use with xdf file
 # Create temporary xdf file
 inData <- data.frame(institution = c("Seattle Pacific U", "SEATTLE UNIV", "Seattle Central",
   "U Washingtn", "UNIV WASH BOTHELL", "Puget Sound Univ",
   "ANTIOC U SEATTLE", "North Seattle Univ", "North Seatle U",
   "Seattle Inst Tech", "SeATLE College Nrth", "UNIV waSHINGTON",
   "University Seattle", "Seattle Antioch U",
   "Technology Institute Seattle", "Pgt Sound U",
   "Seattle Central Univ", "Univ North Seattle",
   "Bothell - Univ of Wash", "ANTIOCH SEATTLE"), stringsAsFactors = FALSE)

 tempInFile <- tempfile(pattern = "fuzzyDistIn", fileext = ".xdf")
 rxDataStep(inData = inData, outFile = tempInFile, rowsPerRead = 10)

 uDictionary <- c("Seattle Pacific University", "Seattle University",
   "University of Washington", "Seattle Central College",
   "University of Washington, Bothell", "Puget Sound University",
   "Antioch University, Seattle", "North Seattle College",
   "Seattle Institute of Technology")

 tempOutFile <- tempfile(pattern = "fuzzyDistOut", fileext = ".xdf")

 outDataSource <- rxGetFuzzyKeys(stringsIn = "institution",
     data = tempInFile, outFile = tempOutFile,
     dictionary = uDictionary,
     ignoreWords = c("University", "Univ", 
       "of", "U"),
     ignoreCase = TRUE,
     matchMethod = "bag",  
     ignoreSpaces = FALSE,  
     minDistance = .4, 
     keyType = "mphone3", overwrite = TRUE)     
  rxGetVarInfo(outDataSource) 
  # Read the new data set back into memory
  newData <- rxDataStep(outDataSource)

  # See the 'cleaned-up' institution names in the new institution.key variable
  # Note that one input, Seattle Inst Tech, was not cleaned
  newData 

  # Clean-up
  file.remove(tempInFile)
  file.remove(tempOutFile)