We investigate to what extent a hundred publicly available, popular neural language models capture meaning systematically. Sentence embeddings obtained from pretrained or fine-tuned language models can be used to perform particular tasks, such as paraphrase detection, semantic textual similarity assessment or natural language inference. Common to all of these tasks is that paraphrastic sentences, that is, sentences that carry (nearly) the same meaning, should have (nearly) the same embeddings regardless of surface form.We demonstrate that performance varies greatly across different language models when a specific type of meaning-preserving transformation is applied: two sentences should be identified as paraphrastic if one of them contains ...
Paraphrases are textual expressions that convey the same meaning using different surface forms. Capt...
Syntactically controlled paraphrase generation has become an emerging research direction in recent y...
The task of paraphrase identification has been applied to diverse scenarios in Natural Language Proc...
In this paper, we investigate whether multilingual neural translation models learn stronger semantic...
In this paper, we present an evaluation of sentence representation models on the paraphrase detectio...
Models of lexical semantics are a key component of natural language understanding. The bulk of work ...
Models of lexical semantics are a key component of natural language understanding. The bulk of work ...
This paper presents FISKMÖ, a project that focuses on the development of resources and tools for cro...
Paraphrase detection and generation are important natural language processing (NLP) tasks. Yet the t...
Full-Text PDF Title: Are Neural Language Models Good Plagiarists? A Benchmark for Neural Paraphrase ...
We describe a novel approach to generate high-quality lexical word embeddings from an Enhanced Neura...
Natural languages are known for their expressive richness. Many sentences can be used to represent t...
We present PARABANK, a large-scale English paraphrase dataset that surpasses prior work in both quan...
Natural language processing (NLP) refers to the interaction that happens between humans and computer...
Paraphrase recognition is the task of iden-tifying whether two pieces of natural lan-guage represent...
Paraphrases are textual expressions that convey the same meaning using different surface forms. Capt...
Syntactically controlled paraphrase generation has become an emerging research direction in recent y...
The task of paraphrase identification has been applied to diverse scenarios in Natural Language Proc...
In this paper, we investigate whether multilingual neural translation models learn stronger semantic...
In this paper, we present an evaluation of sentence representation models on the paraphrase detectio...
Models of lexical semantics are a key component of natural language understanding. The bulk of work ...
Models of lexical semantics are a key component of natural language understanding. The bulk of work ...
This paper presents FISKMÖ, a project that focuses on the development of resources and tools for cro...
Paraphrase detection and generation are important natural language processing (NLP) tasks. Yet the t...
Full-Text PDF Title: Are Neural Language Models Good Plagiarists? A Benchmark for Neural Paraphrase ...
We describe a novel approach to generate high-quality lexical word embeddings from an Enhanced Neura...
Natural languages are known for their expressive richness. Many sentences can be used to represent t...
We present PARABANK, a large-scale English paraphrase dataset that surpasses prior work in both quan...
Natural language processing (NLP) refers to the interaction that happens between humans and computer...
Paraphrase recognition is the task of iden-tifying whether two pieces of natural lan-guage represent...
Paraphrases are textual expressions that convey the same meaning using different surface forms. Capt...
Syntactically controlled paraphrase generation has become an emerging research direction in recent y...
The task of paraphrase identification has been applied to diverse scenarios in Natural Language Proc...