Paraphrase identification is central to many natural language applications. Based on the insight that a successful paraphrase identification model needs to adequately capture the semantics of the language objects as well as their interactions, we present a deep paraphrase identification model interacting semantics with syntax (DPIM-ISS) for paraphrase identification. DPIM-ISS introduces the linguistic features manifested in syntactic features to produce more explicit structures and encodes the semantic representation of sentence on different syntactic structures by means of interacting semantics with syntax. Then, DPIM-ISS learns the paraphrase pattern from this representation interacting the semantics with syntax by exploiting a convolutio...
Automatic paraphrase discovery is an important task in natural language processing. Many systems use...
How to measure the semantic similarity of natural language is a fundamental issue in many tasks, suc...
Paraphrase detection has numerous important applications in natural language processing (such as clu...
Abstract In this paper, we propose a semantic-based paraphrase identification approach. The core co...
In this paper we propose a novel approach to the task of paraphrase identification. The proposed app...
We analyze in this paper a number of data sets proposed over the last decade or so for the task of p...
Paraphrase Generation is one of the most important and challenging tasks in the field of Natural Lan...
Abstract In this paper, we propose a hybrid approach for sentence paraphrase identification. The pr...
The task of paraphrase identification has been applied to diverse scenarios in Natural Language Proc...
The task of paraphrase identification has been applied to diverse scenarios in Natural Language Proc...
Paraphrase identification is a core Natural Language Processing task that involves assessing the sem...
We present in this paper a novel solution to the problem of paraphrase identification based on lexic...
Paraphrase detection and generation are important natural language processing (NLP) tasks. Yet the t...
The Paraphrase identification (PI) task has practical importance for work in Natural Language Proces...
This paper is concerned with paraphrase detection, i.e., identifying sentences that are semantically...
Automatic paraphrase discovery is an important task in natural language processing. Many systems use...
How to measure the semantic similarity of natural language is a fundamental issue in many tasks, suc...
Paraphrase detection has numerous important applications in natural language processing (such as clu...
Abstract In this paper, we propose a semantic-based paraphrase identification approach. The core co...
In this paper we propose a novel approach to the task of paraphrase identification. The proposed app...
We analyze in this paper a number of data sets proposed over the last decade or so for the task of p...
Paraphrase Generation is one of the most important and challenging tasks in the field of Natural Lan...
Abstract In this paper, we propose a hybrid approach for sentence paraphrase identification. The pr...
The task of paraphrase identification has been applied to diverse scenarios in Natural Language Proc...
The task of paraphrase identification has been applied to diverse scenarios in Natural Language Proc...
Paraphrase identification is a core Natural Language Processing task that involves assessing the sem...
We present in this paper a novel solution to the problem of paraphrase identification based on lexic...
Paraphrase detection and generation are important natural language processing (NLP) tasks. Yet the t...
The Paraphrase identification (PI) task has practical importance for work in Natural Language Proces...
This paper is concerned with paraphrase detection, i.e., identifying sentences that are semantically...
Automatic paraphrase discovery is an important task in natural language processing. Many systems use...
How to measure the semantic similarity of natural language is a fundamental issue in many tasks, suc...
Paraphrase detection has numerous important applications in natural language processing (such as clu...