Title of article :
Density Measure in Context Clustering for Distributional Semantics of Word Sense Induction
Author/Authors :
Ghayoomi ، Masood Faculty of Linguistics - Institute for Humanities and Cultural Studies
Abstract :
Word Sense Induction (WSI) aims at inducing word senses from data without using a prior knowledge. Utilizing no labeled data motivated researchers to use clustering techniques for this task. There exist two types of clustering algorithm: parametric or nonparametric. Although nonparametric clustering algorithms are more suitable for inducing word senses, their shortcomings make them useless. Meanwhile, parametric clustering algorithms show competitive results, but they suffer from a major problem that is requiring to set a predefined fixed number of clusters in advance. The main contribution of this paper is to show that utilizing the silhouette score normally used as an internal evaluation metric to measure the clusters’ density in a parametric clustering algorithm, such as Kmeans, in the WSI task captures words’ senses better than the stateoftheart models. To this end, word embedding approach is utilized to represent words’ contextual information as vectors. To capture the context in the vectors, we propose two modes of experiments: either using the whole sentence, or limited number of surrounding words in the local context of the target word to build the vectors. The experimental results based on Vmeasure evaluation metric show that the two modes of our proposed model beat the stateoftheart models by 4.48% and 5.39% improvement. Moreover, the average number of clusters and the maximum number of clusters in the outputs of our proposed models are relatively equal to the gold data.
Keywords :
Word Sense Induction , Word Embedding , Clustering , Silhouette Score , Unsupervised Machine Learning , Distributional Semantic , Density
Journal title :
Journal of Information Systems and Telecommunication