One important subtask of Referring Expression Generation (REG) algorithms is to select the attributes in a definite description for a given object. In this paper, we study how much training data is required for algorithms to do this properly. We compare two REG algorithms in terms of their performance: the classic Incremental Algorithm and the more recent Graph algorithm. Both rely on a notion of preferred attributes that can be learned from human descriptions. In our experiments, preferences are learned from training sets that vary in size, in two domains and languages. The results show that depending on the algorithm and the complexity of the domain, training on a handful of descriptions can already lead to a performance that is not signi...
Acknowledgments We gratefully acknowledge the anonymous reviewers for their very helpful comments.Pu...
We describe a corpus-based evaluation methodology, applied to a number of classic algorithms in the ...
The natural language generation literature provides many algorithms for the generation of referring ...
In this paper we investigate how much data is required to train an algorithm for attribute selection...
We describe a corpus-based evaluation method- ology, applied to a number of classic algorithms in th...
A key characteristic of many existing referring expression generation (REG) algorithms is serial dep...
In this paper, we explore a corpus of human-produced referring expressions to see to what extent we ...
Referring expression generation has recently been the subject of the first Shared Task Challenge in ...
We describe a corpus-based evaluation method-ology, applied to a number of classic algorithmsin the ...
We describe a corpus-based evaluation method-ology, applied to a number of classic algorithmsin the ...
We describe a corpus-based evaluation method-ology, applied to a number of classic algorithmsin the ...
We describe a corpus-based evaluation method-ology, applied to a number of classic algorithmsin the ...
We describe a corpus-based evaluation method-ology, applied to a number of classic algorithmsin the ...
A key characteristic of many existing referring expression generation (REG) algorithms is serial dep...
Thesis (PhD) -- Macquarie University, Faculty of Science, Dept. of Computing, Centre for Language Te...
Acknowledgments We gratefully acknowledge the anonymous reviewers for their very helpful comments.Pu...
We describe a corpus-based evaluation methodology, applied to a number of classic algorithms in the ...
The natural language generation literature provides many algorithms for the generation of referring ...
In this paper we investigate how much data is required to train an algorithm for attribute selection...
We describe a corpus-based evaluation method- ology, applied to a number of classic algorithms in th...
A key characteristic of many existing referring expression generation (REG) algorithms is serial dep...
In this paper, we explore a corpus of human-produced referring expressions to see to what extent we ...
Referring expression generation has recently been the subject of the first Shared Task Challenge in ...
We describe a corpus-based evaluation method-ology, applied to a number of classic algorithmsin the ...
We describe a corpus-based evaluation method-ology, applied to a number of classic algorithmsin the ...
We describe a corpus-based evaluation method-ology, applied to a number of classic algorithmsin the ...
We describe a corpus-based evaluation method-ology, applied to a number of classic algorithmsin the ...
We describe a corpus-based evaluation method-ology, applied to a number of classic algorithmsin the ...
A key characteristic of many existing referring expression generation (REG) algorithms is serial dep...
Thesis (PhD) -- Macquarie University, Faculty of Science, Dept. of Computing, Centre for Language Te...
Acknowledgments We gratefully acknowledge the anonymous reviewers for their very helpful comments.Pu...
We describe a corpus-based evaluation methodology, applied to a number of classic algorithms in the ...
The natural language generation literature provides many algorithms for the generation of referring ...