When humans encode information into natural language, they do so with the clear assumption that the reader will be able to seamlessly make inferences based on world knowledge. For example, given the sentence ``Mrs. Dalloway said she would buy the flowers herself,'' one can make a number of probable inferences based on event co-occurrences: she bought flowers, she went to a store, she took the flowers home, and so on. Observing this, it is clear that many different useful natural language end-tasks could benefit from models of events as they typically co-occur (so-called script models). Robust question-answering systems must be able to infer highly-probable implicit events from what is explicitly stated in a text, as must robust information...
AbstractEmpirical methods in the field of natural language processing (NLP) are usually based on a p...
Statistical language models estimate the probability of a word occurring in a given context. The mos...
In this paper, we extend current state-of-the art research on unsupervised acquisition of scripts, t...
When humans encode information into natural language, they do so with the clear assumption that the ...
Grammar-based natural language processing has reached a level where it can `understand' language to ...
It is generally believed that incorporation of common sense knowledge about the world would benefit ...
Scripts represent knowledge of stereotyp-ical event sequences that can aid text un-derstanding. Init...
It is generally believed that incorporation of common sense knowledge about the world would benefit ...
Script Knowledge (Schank and Abelson, 1975) has long been recognized as crucial for language underst...
This thesis presents a sequence of practical and conceptual developments in decompositional meaning ...
Statistical script learning is an effective way to acquire world knowledge which can be used for com...
Statistical machine learning has become an integral technology for solving many informatics applicat...
Natural Language Inference (NLI) research involves the development of models that can mimic human in...
Learning from unlabeled data is a long-standing challenge in machine learning. A principled solution...
With the rising amount of available multilingual text data, computational linguistics faces an oppor...
AbstractEmpirical methods in the field of natural language processing (NLP) are usually based on a p...
Statistical language models estimate the probability of a word occurring in a given context. The mos...
In this paper, we extend current state-of-the art research on unsupervised acquisition of scripts, t...
When humans encode information into natural language, they do so with the clear assumption that the ...
Grammar-based natural language processing has reached a level where it can `understand' language to ...
It is generally believed that incorporation of common sense knowledge about the world would benefit ...
Scripts represent knowledge of stereotyp-ical event sequences that can aid text un-derstanding. Init...
It is generally believed that incorporation of common sense knowledge about the world would benefit ...
Script Knowledge (Schank and Abelson, 1975) has long been recognized as crucial for language underst...
This thesis presents a sequence of practical and conceptual developments in decompositional meaning ...
Statistical script learning is an effective way to acquire world knowledge which can be used for com...
Statistical machine learning has become an integral technology for solving many informatics applicat...
Natural Language Inference (NLI) research involves the development of models that can mimic human in...
Learning from unlabeled data is a long-standing challenge in machine learning. A principled solution...
With the rising amount of available multilingual text data, computational linguistics faces an oppor...
AbstractEmpirical methods in the field of natural language processing (NLP) are usually based on a p...
Statistical language models estimate the probability of a word occurring in a given context. The mos...
In this paper, we extend current state-of-the art research on unsupervised acquisition of scripts, t...