First, we find the rows with similarity score of 1. Call them perfect matches.

```
// Input example data
input Identifier str1 Variable_B str1 Variable_C Similarity_Score
1 "A" "X" 0.4
1 "A" "Y" 0.6
1 "A" "Z" 1
1 "B" "Y" 0.2
1 "B" "X" 0.7
1 "B" "Z" 0.8
end
// Find rows with a similarity score of 1
preserve
keep if Similarity_Score == 1
tempfile perfect_match
save "`perfect_match'", replace
```

`"`perfect_match'"`

looks like:

Identifier |
Variable_B |
Variable_C |
Similarity_Score |

1 |
A |
Z |
1 |

Then we get all values of `Variable C`

in those perfect matches.

```
// Find which `Variable C` has a similarity score of 1
keep Variable_C
duplicates drop
tempfile temp
save "`temp'", replace
```

`"`temp'"`

looks like:

We don't want those values in `"`temp'"`

to be matched with anything else, so drop them in the rawdata.

```
// Drop those `Variable C` above from the rawdata, so a perfectly matched
// `Variable C` will no longer be there
restore
merge m:1 Variable_C using "`temp'"
drop if _merge == 3
drop _merge
```

The remaining data look like:

Identifier |
Variable_B |
Variable_C |
Similarity_Score |

1 |
B |
X |
.7 |

1 |
A |
X |
.4 |

1 |
A |
Y |
.6 |

1 |
B |
Y |
.2 |

In the rest of data, find the best match.

```
// Find the best match in the remaining data
gsort Variable_B -Similarity_Score
collapse (firstnm) Identifier Variable_C Similarity_Score, by(Variable_B)
```

Now the data looks like:

Variable_B |
Identifier |
Variable_C |
Similarity_Score |

A |
1 |
Y |
.6 |

B |
1 |
X |
.7 |

Please note that the current match for `Variable_B == "A"`

is wrong! This is expected, as we've removed perfect matches in the first step. Now merge them back, and use them replace the wrong matches.

```
// Merge the perfect matches back into the data
merge 1:1 Variable_B using "`perfect_match'", replace update nogen
order Identifier Variable_B Variable_C Similarity_Score
sort Variable_B
```

Here is the final output:

Identifier |
Variable_B |
Variable_C |
Similarity_Score |

1 |
A |
Z |
1 |

1 |
B |
X |
.7 |