SemEval Task 4 Commonsense Validation and Explanation Challenge is to validate whether a system can differentiate natural language statements that make sense from those that do not make sense. Two subtasks, A and B, are focused in this work, i.e., detecting against-common-sense statements and selecting explanations of why they are false from the given options. Intuitively, commonsense validation requires additional knowledge beyond the given statements. Therefore, we propose a system utilising pre-trained sentence transformer models based on BERT, RoBERTa and DistillBERT architectures to embed the statements before classification. According to the results, these embeddings can improve the performance of the typical MLP and LSTM classifiers ...
I will review the main problems concerning commonsense reasoning in machines and I will present rese...
Humans understand language by extracting information (meaning) from sentences, combining it with exi...
Abductive Reasoning is a task of inferring the most plausible hypothesis given a set of observations...
Contextualized representations trained over large raw text data have given remarkable improvements f...
abstract: Significance of real-world knowledge for Natural Language Understanding(NLU) is well-known...
Thesis (Ph.D.)--University of Washington, 2020For machines to understand language, they must intuiti...
Compared to the traditional machine reading comprehension (MRC) with limitation to the information i...
Grasping the commonsense properties of everyday concepts is an important prerequisite to language un...
Previous studies have shown the efficacy of knowledge augmentation methods in pretrained language mo...
While commonsense knowledge acquisition and reasoning has traditionally been a core research topic i...
Programming machines with commonsense reasoning (CSR) abilities is a longstanding challenge in the A...
Models that generate extractive rationales (i.e., subsets of features) or natural language explanati...
abstract: Reasoning with commonsense knowledge is an integral component of human behavior. It is due...
Commonsense question answering requires reasoning about everyday situations and causes and effects i...
It remains an open question whether incorporating external knowledge benefits commonsense reasoning ...
I will review the main problems concerning commonsense reasoning in machines and I will present rese...
Humans understand language by extracting information (meaning) from sentences, combining it with exi...
Abductive Reasoning is a task of inferring the most plausible hypothesis given a set of observations...
Contextualized representations trained over large raw text data have given remarkable improvements f...
abstract: Significance of real-world knowledge for Natural Language Understanding(NLU) is well-known...
Thesis (Ph.D.)--University of Washington, 2020For machines to understand language, they must intuiti...
Compared to the traditional machine reading comprehension (MRC) with limitation to the information i...
Grasping the commonsense properties of everyday concepts is an important prerequisite to language un...
Previous studies have shown the efficacy of knowledge augmentation methods in pretrained language mo...
While commonsense knowledge acquisition and reasoning has traditionally been a core research topic i...
Programming machines with commonsense reasoning (CSR) abilities is a longstanding challenge in the A...
Models that generate extractive rationales (i.e., subsets of features) or natural language explanati...
abstract: Reasoning with commonsense knowledge is an integral component of human behavior. It is due...
Commonsense question answering requires reasoning about everyday situations and causes and effects i...
It remains an open question whether incorporating external knowledge benefits commonsense reasoning ...
I will review the main problems concerning commonsense reasoning in machines and I will present rese...
Humans understand language by extracting information (meaning) from sentences, combining it with exi...
Abductive Reasoning is a task of inferring the most plausible hypothesis given a set of observations...