Word Prediction via a Clustered Optimal Binary Search Tree

Word Prediction via a Clustered Optimal Binary Search Tree

Eyas El-Qawasmeh

Computer Science Department, Jordan University of Science and Technology, Jordan 

Abstract: Word prediction methodologies depend heavily on the statistical approach that uses the unigram, bigram, and the trigram of words. However, the construction of the N-gram model requires a very large size of memory, which is beyond the capability of many existing computers. Beside this, the approximation reduces the accuracy of word prediction. In this paper, we suggest to use a cluster of computers to build an Optimal Binary Search Tree (OBST) that will be used for the statistical approach in word prediction. The OBST will contain extra links so that the bigram and the trigram of the language will be presented. In addition, we suggest the incorporation of other enhancements to achieve optimal performance of word prediction. Our experimental results showed that the suggested approach improves the keystroke saving.

 Keywords: Bigram, cluster computing, N-gram, unigram, trigram, word frequency, word prediction. 

Received April 21, 2003; accepted July 29, 2003

Full Text

                                            

Read 10961 times Last modified on Thursday, 23 June 2011 04:29
Share

Upcoming courses

  • Diploma Courses
  • Business and Enterprise
  • Digital Literacy & IT
  • Health Literacy
  • Business Literacy

Free courses

Starting from Jun. 14 2016

the degree finder

in 3 easy steps
Top
We use cookies to improve our website. By continuing to use this website, you are giving consent to cookies being used. More details…