In this paper a methodology for learning the complex agglutinative morphology of some Indian languages using Adaptor Grammars and morphology rules is presented. Adaptor grammars are a compositional Bayesian framework for grammatical inference, where we define a morphological grammar for agglutinative languages and morphological boundaries are inferred from a plain text corpus. Once morphological segmentations are produce, regular expressions for sandhi rules and orthography are applied to achieve the final segmentation. We test our algorithm in the case of two complex languages from the Dravidian family. The same morphological model and results are evaluated comparing to other state-of-the art unsupervised morphology learning system
In many languages of the world, the form of individual words can undergo systematic variation in ord...
This paper presents an algorithm for the unsuper-vised learning of a simple morphology of a nat-ural...
This article reviews research on the unsupervised learning of morphology, that is, the induction of ...
In this paper an automatic morphology learning system for complex and agglutinative languages is pre...
In this paper we describe a method to morphologically segment highly agglutinating and inflectional ...
Morph length is one of the indicative feature that helps learning the morphology of languages, in pa...
Unsupervised learning of morphology is used for automatic affix identification, morphological segmen...
This paper contributes an approach for expressing non-concatenative morphological phenomena, such as...
This paper explores the use of Adaptor Grammars, a nonparametric Bayesian modelling framework, for m...
The Dravidian family is one of the most widely spoken set of languages in the world, yet there are v...
This paper contributes an approach for expressing non-concatenative morphological phenomena, such as...
<p>We present a morphology-aware nonparametric Bayesian model of language whose prior distribution u...
This work is aimed at building an adaptable frame-based system for processing Dravidian languages. T...
Morphological analysis is of fundamental interest in computational linguistics and language processi...
Abstract. This paper introduces a probabilistic model of morphology based on a word-based morphologi...
In many languages of the world, the form of individual words can undergo systematic variation in ord...
This paper presents an algorithm for the unsuper-vised learning of a simple morphology of a nat-ural...
This article reviews research on the unsupervised learning of morphology, that is, the induction of ...
In this paper an automatic morphology learning system for complex and agglutinative languages is pre...
In this paper we describe a method to morphologically segment highly agglutinating and inflectional ...
Morph length is one of the indicative feature that helps learning the morphology of languages, in pa...
Unsupervised learning of morphology is used for automatic affix identification, morphological segmen...
This paper contributes an approach for expressing non-concatenative morphological phenomena, such as...
This paper explores the use of Adaptor Grammars, a nonparametric Bayesian modelling framework, for m...
The Dravidian family is one of the most widely spoken set of languages in the world, yet there are v...
This paper contributes an approach for expressing non-concatenative morphological phenomena, such as...
<p>We present a morphology-aware nonparametric Bayesian model of language whose prior distribution u...
This work is aimed at building an adaptable frame-based system for processing Dravidian languages. T...
Morphological analysis is of fundamental interest in computational linguistics and language processi...
Abstract. This paper introduces a probabilistic model of morphology based on a word-based morphologi...
In many languages of the world, the form of individual words can undergo systematic variation in ord...
This paper presents an algorithm for the unsuper-vised learning of a simple morphology of a nat-ural...
This article reviews research on the unsupervised learning of morphology, that is, the induction of ...