A Multi-word Term Extraction System

Traditional statistical approaches for identifying multi-word terms have to handle a large amount of noisy data and are extremely time consuming. This paper introduces a multi-word term extraction system for extracting multi-word terms from a set of documents based on the co-related text-segments existing in these documents. The system uses a short predefined stoplist as an initial input to segment a set of documents into text-segments, calculates the segment-weights of all text-segments, and then applies the short text-segments to segment the longer text-segments based on the weight values recursively until all text-segments cannot be further divided. The resultant text-segments can thus be identified as terms based on a specified threshold. The initial experimental result on a set of traditional Chinese documents shows that this system can achieve a minimum of 76.39% of recall rate and a minimum of 91.05% of precision rate on retrieving multiple occurrences terms, which include 18.30% of new identified terms.