The representation of word meaning in texts is a central problem in Computational Linguistics. Geometrical models represent lexical semantic information in terms of the basic co-occurrences that words establish each other in large-scale text collections. As recent works already address, the definition of methods able to express the meaning of phrases or sentences as operations on lexical representations is a complex problem, and a still largely open issue. In this paper, a perspective centered on Convolution Kernels is discussed and the formulation of a Partial Tree Kernel that integrates syntactic information and lexical generalization is studied. The interaction of such information and the role of different geometrical models is investiga...
In recent years, natural language processing techniques have been used more and more in IR. Among ot...
The hypothesis that word co-occurrence statistics extracted from text corpora can provide a basis fo...
A central topic in natural language process-ing is the design of lexical and syntactic fea-tures sui...
The representation of word meaning in texts is a central problem in Computational Linguistics. Geome...
Language learning systems usually generalize linguistic observations into rules and patterns that ar...
Kernel-based learning has been largely adopted in many semantic textual inference tasks. In particul...
Kernel-based learning has been largely applied to semantic textual inference tasks. In particular, T...
A central topic in Natural Language Processing (NLP) is the design of effective linguistic processor...
This report documents the program and the outcomes of Dagstuhl Seminar 13462 "Computational Models o...
This thesis is about the problem of representing sentential meaning in distributional semantics. Dis...
This thesis makes several contributions towards improved methods for encoding structure in computati...
Distributional Compositional Semantics (DCS) methods combine lexical vectors according to algebraic ...
Distributional semantics is a usage-based model of meaning, based on the assumption that the statis...
Distributional Semantic Models have emerged as a strong theoretical and practical approach to model ...
When we communicate with each other, a large chunk of what we express is conveyed by the words we us...
In recent years, natural language processing techniques have been used more and more in IR. Among ot...
The hypothesis that word co-occurrence statistics extracted from text corpora can provide a basis fo...
A central topic in natural language process-ing is the design of lexical and syntactic fea-tures sui...
The representation of word meaning in texts is a central problem in Computational Linguistics. Geome...
Language learning systems usually generalize linguistic observations into rules and patterns that ar...
Kernel-based learning has been largely adopted in many semantic textual inference tasks. In particul...
Kernel-based learning has been largely applied to semantic textual inference tasks. In particular, T...
A central topic in Natural Language Processing (NLP) is the design of effective linguistic processor...
This report documents the program and the outcomes of Dagstuhl Seminar 13462 "Computational Models o...
This thesis is about the problem of representing sentential meaning in distributional semantics. Dis...
This thesis makes several contributions towards improved methods for encoding structure in computati...
Distributional Compositional Semantics (DCS) methods combine lexical vectors according to algebraic ...
Distributional semantics is a usage-based model of meaning, based on the assumption that the statis...
Distributional Semantic Models have emerged as a strong theoretical and practical approach to model ...
When we communicate with each other, a large chunk of what we express is conveyed by the words we us...
In recent years, natural language processing techniques have been used more and more in IR. Among ot...
The hypothesis that word co-occurrence statistics extracted from text corpora can provide a basis fo...
A central topic in natural language process-ing is the design of lexical and syntactic fea-tures sui...