In satisfying an information need by a Question Answering (QA) system, there are text understanding approaches which can enhance the performance of final answer extraction. Exploiting the FrameNet lexical resource in this process inspires analysis of the levels of semantic representation in the automated practice where the task of semantic class and role labeling takes place. In this paper, we analyze the impact of different levels of semantic parsing on answer extraction with respect to the individual sub-tasks of frame evocation and frame element assignment
The Frametagger is a semantic pattern matching software designed to identify the actors in short bus...
Abstract In order to respond correctly to a free form factual question given a large collection of t...
In this paper, the effect of using semantic class overlap evidence in enhancing the passage retrieva...
The impact of frame semantic enrichment of texts on the task of factoid question answering (QA) is s...
This paper introduces the task of question-answer driven semantic role labeling (QA-SRL), where ques...
We report on results of combining graphical modeling techniques with Information Extraction resource...
In this paper, we consider two aspects which affect the performance of factoid FrameNet-based Questi...
Abstract. Determining the semantic role of sentence constituents is a key task in determining senten...
In this paper we introduce the semantic approach of the answer extraction component of a question an...
We present a question answering system that combines information at the lexical, syntactic, and sema...
As intelligent virtual assistant scales to the mass market, traditional validation techniques for qu...
An ontological extension on the frames in FrameNet is presented in this paper. The general conceptua...
Semantic Link Network plays an important role in representing and understanding text. This paper inv...
Frame Semantic Role Labeling (FSRL) identifies arguments and labels them with frame semantic roles d...
In this demo, we will present QASR- a question answering system that uses semantic role labeling. Gi...
The Frametagger is a semantic pattern matching software designed to identify the actors in short bus...
Abstract In order to respond correctly to a free form factual question given a large collection of t...
In this paper, the effect of using semantic class overlap evidence in enhancing the passage retrieva...
The impact of frame semantic enrichment of texts on the task of factoid question answering (QA) is s...
This paper introduces the task of question-answer driven semantic role labeling (QA-SRL), where ques...
We report on results of combining graphical modeling techniques with Information Extraction resource...
In this paper, we consider two aspects which affect the performance of factoid FrameNet-based Questi...
Abstract. Determining the semantic role of sentence constituents is a key task in determining senten...
In this paper we introduce the semantic approach of the answer extraction component of a question an...
We present a question answering system that combines information at the lexical, syntactic, and sema...
As intelligent virtual assistant scales to the mass market, traditional validation techniques for qu...
An ontological extension on the frames in FrameNet is presented in this paper. The general conceptua...
Semantic Link Network plays an important role in representing and understanding text. This paper inv...
Frame Semantic Role Labeling (FSRL) identifies arguments and labels them with frame semantic roles d...
In this demo, we will present QASR- a question answering system that uses semantic role labeling. Gi...
The Frametagger is a semantic pattern matching software designed to identify the actors in short bus...
Abstract In order to respond correctly to a free form factual question given a large collection of t...
In this paper, the effect of using semantic class overlap evidence in enhancing the passage retrieva...