Using R, I am trying match on people's names in a dataset structured by year and city. Due to some spelling mistakes, exact matching is not possible, so I am trying to use agrep() to fuzzy match names.

A sample chunk of the dataset is structured as follows:

```
df <- data.frame(matrix( c("1200013","1200013","1200013","1200013","1200013","1200013","1200013","1200013", "1996","1996","1996","1996","2000","2000","2004","2004","AGUSTINHO FORTUNATO FILHO","ANTONIO PEREIRA NETO","FERNANDO JOSE DA COSTA","PAULO CEZAR FERREIRA DE ARAUJO","PAULO CESAR FERREIRA DE ARAUJO","SEBASTIAO BOCALOM RODRIGUES","JOAO DE ALMEIDA","PAULO CESAR FERREIRA DE ARAUJO"), ncol=3,dimnames=list(seq(1:8),c("citycode","year","candidate")) ))
```

The neat version:

```
citycode year candidate
1 1200013 1996 AGUSTINHO FORTUNATO FILHO
2 1200013 1996 ANTONIO PEREIRA NETO
3 1200013 1996 FERNANDO JOSE DA COSTA
4 1200013 1996 PAULO CEZAR FERREIRA DE ARAUJO
5 1200013 2000 PAULO CESAR FERREIRA DE ARAUJO
6 1200013 2000 SEBASTIAO BOCALOM RODRIGUES
7 1200013 2004 JOAO DE ALMEIDA
8 1200013 2004 PAULO CESAR FERREIRA DE ARAUJO
```

I'd like to check in each city separately, whether there are candidates appearing in several years. E.g. in the example,

PAULO CEZAR FERREIRA DE ARAUJO

PAULO CESAR FERREIRA DE ARAUJO

appears twice (with a spelling mistake). Each candidate across the entire data set should be assigned a unique numeric candidate ID. The dataset is fairly large (5500 cities, approx. 100K entries) so a somewhat efficient coding would be helpful. Any suggestions as to how to implement this?

EDIT: Here is my attempt (with help from the comments thus far) that is very slow (inefficient) in achieving the task at hand. Any suggestions as to improvements to this?

```
f <- function(x) {matches <- lapply(levels(x), agrep, x=levels(x),fixed=TRUE, value=FALSE)
levels(x) <- levels(x)[unlist(lapply(matches, function(x) x[1]))]
x
}
temp <- tapply(df$candidate, df$citycode, f, simplify=TRUE)
df$candidatenew <- unlist(temp)
df$spellerror <- ifelse(as.character(df$candidate)==as.character(df$candidatenew), 0, 1)
```

EDIT 2: Now running at good speed. Problem was the comparison to many factors at every step (Thanks for pointing that out, Blue Magister). Reducing the comparison to only the candidates in one group (i.e. a city) runs the command in 5 seconds for 80,000 lines - a speed I can live with.

```
df$candidate <- as.character(df$candidate)
f <- function(x) {x <- as.factor(x)
matches <- lapply(levels(x), agrep, x=levels(x),fixed=TRUE, value=FALSE)
levels(x) <- levels(x)[unlist(lapply(matches, function(x) x[1]))]
as.character(x)
}
temp <- tapply(df$candidate, df$citycode, f, simplify=TRUE)
df$candidatenew <- unlist(temp)
df$spellerror <- ifelse(as.character(df$candidate)==as.character(df$candidatenew), 0, 1)
```

`agrep`

to match or doing it efficiently? – Ari B. Friedman Oct 21 '12 at 16:41