4 research outputs found
Improvement of Cluster Importance Algorithm with Sentence Position for News Summarization
Text summarization is one of the ways to reduce
large document dimension to obtain important information from
the document. News is one of information which usually has
several sub-topics from a topic. In order to get the main
information from a topic as fast as possible, multi-document
summarization is the solution, but sometimes it can create
redundancy. In this study, we used cluster importance algorithm
by considering sentence position to overcome the redundancy.
Stages of cluster importance algorithm are sentence clustering,
cluster ordering, and selection of sentence representative which
will be explained in the subsections below. The contribution of this
research was to add the position of sentence in the selection phase
of representative sentence. For evaluation, we used 30 topics of
Indonesian news tested by using ROUGE-1, there were 2 news
topics that had different ROUGE-1 score between using cluster
importance algorithm by considering sentence position and using
cluster importance. However, those 2 news topics which used
cluster importance by considering sentence position have a greater
score of Rouge-1 than the one which only used cluster importance.
The use of sentence position had an effect on the order of sentence
on each topic, but there were only 2 news topics that affected the
outcome of the summary
Improvement of Cluster Importance Algorithm with Sentence Position for News Summarization
Text summarization is one of the ways to reduce large document dimension to obtain important information from the document. News is one of information which usually has several sub-topics from a topic. In order to get the main information from a topic as fast as possible, multi-document summarization is the solution, but sometimes it can create redundancy. In this study, we used cluster importance algorithm by considering sentence position to overcome the redundancy. Stages of cluster importance algorithm are sentence clustering, cluster ordering, and selection of sentence representative which will be explained in the subsections below. The contribution of this research was to add the position of sentence in the selection phase of representative sentence. For evaluation, we used 30 topics of Indonesian news tested by using ROUGE-1, there were 2 news topics that had different ROUGE-1 score between using cluster importance algorithm by considering sentence position and using cluster importance. However, those 2 news topics which used cluster importance by considering sentence position have a greater score of Rouge-1 than the one which only used cluster importance. The use of sentence position had an effect on the order of sentence on each topic, but there were only 2 news topics that affected the outcome of the summary
MULTI-CLASS REGION MERGING FOR INTERACTIVE IMAGE SEGMENTATION USING HIERARCHICAL CLUSTERING ANALYSIS
In interactive image segmentation, distance calculation between regions and sequence of region merging is being an important thing that needs to be considered to obtain accurate segmentation results. Region merging without regard to label in Hierarchical Clustering Analysis causes the possibility of two different labels merged into a cluster and resulting errors in segmentation. This study proposes a new multi-class region merging strategy for interactive image segmentation using the Hierarchical Clustering Analysis. Marking is given to regions that are considered as objects and background, which are then referred as classes. A different label for each class is given to prevent any classes with different label merged into a cluster. Based on experiment, the mean value of ME and RAE for the results of segmentation using the proposed method are 0.035 and 0.083, respectively. Experimental results show that giving the label on each class is effectively used in multi-class region merging