A Corpus of 21st Century Scots Texts

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Levenshtein Distance

Enter a word to find nearest neighbouring words, for example ahint

- basic concord - pre-sorted concord - post-sorted concord - map and chronology - chronogrid - fine-grain concord -

Similar words to tosses in Corpus

Levenshtein Double Levenshtein SoundEx MetaPhone Manually curated
tosses (0) - 3 freq
tossed (1) - 20 freq
losses (1) - 15 freq
bosses (1) - 9 freq
mosses (1) - 6 freq
tossel (1) - 1 freq
tossels (1) - 1 freq
tossers (1) - 7 freq
dosses (1) - 2 freq
tosser (1) - 2 freq
fosse (2) - 1 freq
hoses (2) - 1 freq
dosser (2) - 1 freq
lossen (2) - 1 freq
mosset (2) - 2 freq
tenses (2) - 7 freq
fesses (2) - 1 freq
poses (2) - 2 freq
possess (2) - 10 freq
bosies (2) - 18 freq
towes (2) - 6 freq
houses (2) - 25 freq
vossis (2) - 2 freq
ross's (2) - 3 freq
yisses (2) - 2 freq
tosses (0) - 3 freq
tossers (2) - 7 freq
tosser (2) - 2 freq
tossels (2) - 1 freq
tassies (2) - 3 freq
dosses (2) - 2 freq
tossel (2) - 1 freq
losses (2) - 15 freq
bosses (2) - 9 freq
mosses (2) - 6 freq
tossed (2) - 20 freq
tresses (3) - 1 freq
masses (3) - 12 freq
toss (3) - 27 freq
tosst (3) - 1 freq
pusses (3) - 6 freq
passes (3) - 68 freq
casses (3) - 1 freq
kisses (3) - 29 freq
fisses (3) - 1 freq
basses (3) - 2 freq
wisses (3) - 4 freq
teases (3) - 6 freq
tossin (3) - 18 freq
pisses (3) - 4 freq
SoundEx code - T220
takes - 125 freq
teases - 6 freq
tyke's - 2 freq
taxis - 9 freq
theses - 4 freq
thighs - 14 freq
taxes - 24 freq
toxic - 7 freq
tosses - 3 freq
tykes - 7 freq
tigowk - 1 freq
takeaways - 4 freq
taxi's - 1 freq
touches - 21 freq
teaches - 3 freq
tokes - 1 freq
theseus - 25 freq
tesco's - 5 freq
toshie's - 1 freq
this-is - 1 freq
taiches - 1 freq
texes - 3 freq
twae-jags' - 1 freq
tikes - 1 freq
thighs' - 1 freq
thickish - 1 freq
tighes - 1 freq
tagisie - 1 freq
tussocky - 1 freq
tassies - 3 freq
tizes - 1 freq
tagus - 1 freq
takkis - 1 freq
togas - 3 freq
thesis - 3 freq
teacosy - 2 freq
'tcyauch - 1 freq
texas - 2 freq
thuggees - 1 freq
thuswyss - 1 freq
twageos - 1 freq
teacake - 1 freq
€œtheseus - 1 freq
techies - 2 freq
tussock - 3 freq
€˜takes - 1 freq
tsig - 1 freq
tchocky - 6 freq
takeawayÂ’s - 1 freq
takawas - 1 freq
txqok - 1 freq
teechis - 1 freq
tescos - 8 freq
take-aways - 1 freq
ttqwj - 1 freq
thickos - 1 freq
MetaPhone code - TSS
daisies - 20 freq
teases - 6 freq
dousie's - 1 freq
taz's - 3 freq
daises - 1 freq
disease' - 3 freq
disease - 44 freq
disuiss - 1 freq
tosses - 3 freq
daisy's - 9 freq
disays - 1 freq
doses - 9 freq
disaise - 2 freq
desses - 1 freq
tassies - 3 freq
days's - 1 freq
tizes - 1 freq
dosses - 2 freq
daseis - 1 freq
dazzies - 1 freq
dyce's - 2 freq
dizzies - 1 freq
dasies - 1 freq
TOSSES
Time to execute Levenshtein function - 0.190330 milliseconds
The Levenshtein distance is the number of characters you have to replace, insert or delete to transform one word into another, its useful for detecting typos and alternative spellings
Time to execute Double Levenshtein function - 0.369109 milliseconds
In a stroke of genius, this runs the Levenshtein function twice, once without vowels and adds the distance together, giving double weight to consonants.
Time to execute SoundEx function - 0.027219 milliseconds
Soundex is a phonetic algorithm for indexing names by sound, as pronounced in English. The goal is for homophones to be encoded to the same representation so that they can be matched despite minor differences in spelling.
Time to execute MetaPhone function - 0.037623 milliseconds
Metaphone is a phonetic algorithm, published by Lawrence Philips in 1990, for indexing words by their English pronunciation.[1] It fundamentally improves on the Soundex algorithm by using information about variations and inconsistencies in English spelling and pronunciation to produce a more accurate encoding, which does a better job of matching words and names which sound similar.
Time to execute Manually curated function - 0.000798 milliseconds
Manual Curation uses a lookup table / lexicon which has been created by hand which links words to their lemmas, and includes obvious typos and spelling variations. Not all words are covered.