One of the most important research area in Natural Language Processing concerns the modeling of semantics expressed in text. Since foundational work in Natural Language Understanding has shown that a deep semantic approach is still not feasible, current research is focused on shallow methods combining linguistic models and machine learning techniques. The latter aim at learning semantic models, like those that can detect the entailment between the meaning of two text fragments, by means of training examples described by specific features. These are rather difficult to design since there is no linguistic model that can effectively encode the lexico-syntactic level of a sentence and its corresponding semantic models. Thus, the adopted solutio...
In this paper, we describe an approach based on off-the-shelf parsers and semantic resources for the...
The problem of recognizing textual entailment (RTE) has been recently addressed using syntactic and ...
Semantic dependency parsing is the task of mapping natural language sentences into representations o...
One of the most important research area in Natural Language Processing concerns the modeling of sema...
In this paper, we provide a statistical ma-chine learning representation of textual en-tailment via ...
In this paper, we propose a novel class of graphs, the tripartite directed acyclic graphs (tDAGs), t...
In this paper, we define a family of syntactic kernels for automatic relational learning from pairs ...
Thesis (Ph. D.)--University of Rochester. Department of Computer Science, 2018.In recent years, ther...
In this paper we present a novel similarity between pairs of co-indexed trees to auto-matically lear...
In this work, we present a novel type of graphs for natural language processing (NLP), namely textua...
In this paper, we define a family of syntactic kernels for automatic relational learning from pairs ...
This paper devises a novel kernel function for structured natural language data. In the field of Nat...
This paper presents a robust textual entailment system using the principle of just noticeable dif-fe...
In this paper, we describe an approach based on off-the-shelf parsers and semantic re-sources for th...
Over the last few years, a number of ar-eas of natural language processing have begun applying graph...
In this paper, we describe an approach based on off-the-shelf parsers and semantic resources for the...
The problem of recognizing textual entailment (RTE) has been recently addressed using syntactic and ...
Semantic dependency parsing is the task of mapping natural language sentences into representations o...
One of the most important research area in Natural Language Processing concerns the modeling of sema...
In this paper, we provide a statistical ma-chine learning representation of textual en-tailment via ...
In this paper, we propose a novel class of graphs, the tripartite directed acyclic graphs (tDAGs), t...
In this paper, we define a family of syntactic kernels for automatic relational learning from pairs ...
Thesis (Ph. D.)--University of Rochester. Department of Computer Science, 2018.In recent years, ther...
In this paper we present a novel similarity between pairs of co-indexed trees to auto-matically lear...
In this work, we present a novel type of graphs for natural language processing (NLP), namely textua...
In this paper, we define a family of syntactic kernels for automatic relational learning from pairs ...
This paper devises a novel kernel function for structured natural language data. In the field of Nat...
This paper presents a robust textual entailment system using the principle of just noticeable dif-fe...
In this paper, we describe an approach based on off-the-shelf parsers and semantic re-sources for th...
Over the last few years, a number of ar-eas of natural language processing have begun applying graph...
In this paper, we describe an approach based on off-the-shelf parsers and semantic resources for the...
The problem of recognizing textual entailment (RTE) has been recently addressed using syntactic and ...
Semantic dependency parsing is the task of mapping natural language sentences into representations o...