This paper proposes a new architecture for textual inference in which finding a good alignment is separated from evaluating entailment. Current approaches to semantic inference in question answering and textual entailment have approximated the entailment problem as that of computing the best alignment of the hypothesis to the text, using a locally decomposable matching score. While this formulation is adequate for representing local (word-level) phenomena such as synonymy, it is incapable of representing global interactions, such as that between verb negation and the addition/removal of qualifiers, which are often critical for determining entailment. We propose a pipelined approach where alignment is followed by a classification step, in wh...
Semantic entailment is the problem of determining if the meaning of a given sentence entails that of...
We present a new dataset and model for textual entailment, derived from treating multiple-choice que...
In this paper we study a graph-based approach to the task of Recognizing Textual Entailment between ...
This paper proposes a new architecture for textual inference in which finding a good alignment is se...
This paper advocates a new architecture for textual inference in which finding a good alignment is s...
While semantic inference has always been a major focus in Computational Linguistics, the topic has b...
We present an approach to textual entailment recog-nition, in which inference is based on a shallow ...
The goal of identifying textual entailment – whether one piece of text can be plausibly inferred fr...
To prepare an evaluation dataset for textual entailment (TE) recognition, human annotators label ric...
We present the architecture and the evaluation of a new system for recognizing textual entailment (R...
ii This thesis introduces the applied notion of textual entailment as a generic empiri-cal task that...
Textual entailment among sentences is an important part of applied semantic inference. In this paper...
Textual Entailment is a directional relation between two text fragments. The relation holds whenever...
Abstract. We use logical inference techniques for recognising textual entailment, with theorem provi...
Abstract. This paper discusses the recognition of textual entailment in a text-hypothesis pair by ap...
Semantic entailment is the problem of determining if the meaning of a given sentence entails that of...
We present a new dataset and model for textual entailment, derived from treating multiple-choice que...
In this paper we study a graph-based approach to the task of Recognizing Textual Entailment between ...
This paper proposes a new architecture for textual inference in which finding a good alignment is se...
This paper advocates a new architecture for textual inference in which finding a good alignment is s...
While semantic inference has always been a major focus in Computational Linguistics, the topic has b...
We present an approach to textual entailment recog-nition, in which inference is based on a shallow ...
The goal of identifying textual entailment – whether one piece of text can be plausibly inferred fr...
To prepare an evaluation dataset for textual entailment (TE) recognition, human annotators label ric...
We present the architecture and the evaluation of a new system for recognizing textual entailment (R...
ii This thesis introduces the applied notion of textual entailment as a generic empiri-cal task that...
Textual entailment among sentences is an important part of applied semantic inference. In this paper...
Textual Entailment is a directional relation between two text fragments. The relation holds whenever...
Abstract. We use logical inference techniques for recognising textual entailment, with theorem provi...
Abstract. This paper discusses the recognition of textual entailment in a text-hypothesis pair by ap...
Semantic entailment is the problem of determining if the meaning of a given sentence entails that of...
We present a new dataset and model for textual entailment, derived from treating multiple-choice que...
In this paper we study a graph-based approach to the task of Recognizing Textual Entailment between ...