Modeling Consensus: Classifier Combination for Word Sense Disambiguation
نویسندگان
چکیده
This paper demonstrates the substantial empirical success of classifier combination for the word sense disambiguation task. It investigates more than 10 classifier combination methods, including second order classifier stacking, over 6 major structurally different base classifiers (enhanced Naïve Bayes, cosine, Bayes Ratio, decision lists, transformationbased learning and maximum variance boosted mixture models). The paper also includes in-depth performance analysis sensitive to properties of the feature space and component classifiers. When evaluated on the standard SENSEVAL1 and 2 data sets on 4 languages (English, Spanish, Basque, and Swedish), classifier combination performance exceeds the best published results on these data sets.
منابع مشابه
Theme: A Study of Classifier Combination and Semi-Supervised Learning for Word Sense Disambiguation
1. Aims Word Sense Disambiguation (WSD) involves the association of a polysemous word in a text or discourse with a particular sense among numerous potential senses of that word. In my thesis, we present a study of classifier combination and semi-supervised learning for WSD, which aim to boost supervised WSD and improve accuracy of WSD. In addition, we also work on context representation and fe...
متن کاملCombining Classifiers for word sense disambiguation
Classifier combination is an effective and broadly useful method of improving system performance. This article investigates in depth a large number of both well-established and novel classifier combination approaches for the word sense disambiguation task, studied over a diverse classifier pool which includes feature-enhanced Näıve Bayes, Cosine, Decision List, Transformation-based Learning and...
متن کاملAdaptively entropy-based weighting classifiers in combination using Dempster-Shafer theory for word sense disambiguation
In this paper we introduce an evidential reasoning based framework for weighted combination of classifiers for word sense disambiguation (WSD). Within this framework, we propose a new way of defining adaptively weights of individual classifiers based on ambiguity measures associated with their decisions with respect to each particular pattern under classification, where the ambiguity measure is...
متن کاملTrajectory Based Word Sense Disambiguation
Classifier combination is a promising way to improve performance of word sense disambiguation. We propose a new combinational method in this paper. We first construct a series of Naïve Bayesian classifiers along a sequence of orderly varying sized windows of context, and perform sense selection for both training samples and test samples using these classifiers. We thus get a sense selection tra...
متن کاملSupervised Word Sense Disambiguation using Python
In this paper, we discuss the problem of Word Sense Disambiguation (WSD) and one approach to solving the lexical sample problem. We use training and test data from SENSEVAL-3 and implement methods based on Naı̈ve Bayes calculations, cosine comparison of word-frequency vectors, decision lists, and Latent Semantic Analysis. We also implement a simple classifier combination system that combines the...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
دوره شماره
صفحات -
تاریخ انتشار 2002