Title
Combining decision trees and transformation-based learning to correct transferred linguistic representations.
Abstract
We present a hybrid machine learning approach to correcting features in transferred linguistic representations in machine translation. The hybrid approach combines decision trees and transformation-based learning. Decision trees serve as a filter on the intractably large search space of possible interrelations among features. Transformation-based learning results in a simple set of ordered rules that can be compiled and executed after transfer and before sentence realization in the target language. We measure the reduction in noise in the linguistic representations and the results of human evaluations of end-to- end English-German machine translation.
Year
Venue
Keywords
2003
MTSummit
search space,decision tree,machine learning,machine translation
DocType
Citations 
PageRank 
Conference
3
0.68
References 
Authors
11
2
Name
Order
Citations
PageRank
Simon Corston-Oliver134925.25
Michael Gamon2148489.50