Factor matrix text filtering and clustering
β Scribed by Ronald N. Kostoff; Joel A. Block
- Publisher
- John Wiley and Sons
- Year
- 2005
- Tongue
- English
- Weight
- 228 KB
- Volume
- 56
- Category
- Article
- ISSN
- 1532-2882
No coin nor oath required. For personal study only.
β¦ Synopsis
Abstract
The presence of trivial words in text databases can affect record or concept (words/phrases) clustering adversely. Additionally, the determination of whether a word/phrase is trivial is contextβdependent. Our objective in the present article is to demonstrate a contextβdependent trivial word filter to improve clustering quality. Factor analysis was used as a contextβdependent trivial word filter for subsequent term clustering. Medline records for Raynaud's Phenomenon were used as the database, and words were extracted from the record abstracts. A factor matrix of these words was generated, and the words that had low factor loadings across all factors were identified, and eliminated. The remaining words, which had high factor loading values for at least one factor and therefore were influential in determining the theme of that factor, were input to the clustering algorithm. Both quantitative and qualitative analyses were used to show that factor matrix filtering leads to higher quality clusters and subsequent taxonomies.
π SIMILAR VOLUMES
objective reference for users and applications alike in terms Automatic temporal segmentation and visual summary gen-of absolute frame numbers or time codes. The lack of such eration methods that require minimal user interaction are key well-defined generic segments is one of the reasons higher requ