The authors acknowledge some of the weaknesses in their tagger, including its speed, its ability to analyze substantive texts, and its inability to process less common constructions in which word order is loose.
Commentary
Oflazer and Kuruz suggest that their tagger would be greatly improved if tagging were not done incrementally but rather, globally. Natural language analysis must take into account real-world language uses, which are frequently loose. However, preliminary results of the Oflazer and Kuruz system seem promising. Combining a rule-based system with a statistics-based one minimizes general tagging errors as well as specifically targeting the morphological ambiguities in specific linguistic subsets. Potentially, the Oflazer and Kuruz could be designed as smart technology that logs correct and incorrect hits to generate new internal rules for tagging.
The authors carried out their research on a...
Our semester plans gives you unlimited, unrestricted access to our entire library of resources —writing tools, guides, example essays, tutorials, class notes, and more.
Get Started Now