Alfio GliozzoClaudio GiulianoCarlo Strapparava
In this paper we present a supervised Word Sense Disambiguation methodology, that exploits kernel methods to model sense distinctions. In particular a combination of kernel functions is adopted to estimate independently both syntagmatic and domain similarity. We defined a kernel function, namely the Domain Kernel, that allowed us to plug "external knowledge" into the supervised learning process. External knowledge is acquired from unlabeled data in a totally unsupervised way, and it is represented by means of Domain Models. We evaluated our methodology on several lexical sample tasks in different languages, outperforming significantly the state-of-the-art for each of them, while reducing the amount of labeled training data required for learning.
Antonio SanfilippoStephen TratzMichelle Gregory
Tinghua WangJian ZhongJunting ChenQi Hu
Kanako KomiyaShota SuzukiMinoru SasakiHiroyuki ShinnouManabu Okumura