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Automatic Extraction of Examples for Word Sense Disambiguation

Automatic Extraction of Examples for Word Sense Disambiguation

BIBLIOGRAPHY 91 NEB

BIBLIOGRAPHY 91 NEB Named Entity before (0-param). The first Named Entity found before the AW. - Notation: NEB - References: (Mihalcea, 2002) NEA Named Entity after (0-param). The first Named Entity found after the AW. - Notation: NEA - References: (Mihalcea, 2002) PB Preposition before (0-param). The first prepo- sition found before the AW. - Notation: PB - References: (Mihalcea, 2002), (Dinu and Kübler, 2007), (Usabaev, 2008) PA Preposition after (0-param). The first prepo- sition found after the AW. - Notation: PA - References: (Mihalcea, 2002), (Dinu and Kübler, 2007), (Usabaev, 2008) PRB Pronoun before (0-param). The first pro- noun found before the AW. - Notation: PRB - References: (Mihalcea, 2002) PRA Pronoun after (0-param). The first pro- noun found after the AW. - Notation: PRA - References: (Mihalcea, 2002) DT Determiner (0-param). The determiner, if any, found before the AW. - Notation: DT - References: (Mihalcea, 2002) PPT Parse path (1-param) Maximum K parse components found on the path to the top of the parse tree (sentence top). - Notation: PPT[=K], default=10 - For in- stance, the value of this feature for the word school, given a parse tree (S (NP (JJ big) (NN house))), is NN, NP, S - References: (Mihalcea, 2002) - described but not used SPC Same parse phrase components (1-param). Maximum K parse components found in the same phrase as the AW. - Notation: SPC[=K], default=3 - For the example in the PPT feature, this feature would be set to JJ, NN. - References: (Mihalcea, 2002)

BIBLIOGRAPHY 92 C Training and Test Set (Senseval-3 English Lexical Sample Task) Lexical unit Training size Test size activate.v 228 114 add.v 263 132 appear.v 265 133 argument.n 221 111 arm.n 266 133 ask.v 261 131 atmosphere.n 161 81 audience.n 200 100 bank.n 262 132 begin.v 181 79 climb.v 133 67 decide.v 122 62 degree.n 256 128 difference.n 226 114 different.a 98 50 difficulty.n 46 23 disc.n 200 100 eat.v 181 87 encounter.v 130 65 expect.v 156 78 express.v 110 55 hear.v 63 32 hot.a 86 43 image.n 146 74 important.a 36 19 interest.n 185 93 judgment.n 62 32 lose.v 71 36 mean.v 80 40 Lexical unit Training size Test size miss.v 58 30 note.v 132 67 operate.v 35 18 organization.n 112 56 paper.n 232 117 party.n 230 116 performance.n 172 87 plan.n 166 84 play.v 104 52 produce.v 186 94 provide.v 136 69 receive.v 52 27 remain.v 139 70 rule.v 59 30 shelter.n 196 98 simple.a 36 18 smell.v 108 55 solid.a 58 29 sort.n 190 96 source.n 64 32 suspend.v 128 64 talk.v 146 73 treat.v 112 57 use.v 26 14 wash.v 66 34 watch.v 100 51 win.v 78 39 write.v 44 23 Total 7860 3944

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