2019
DOI: 10.1109/access.2019.2908032
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Enhancing Predictive Power of Cluster-Boosted Regression With Text-Based Indexing

Abstract: Clustering prior to regression analysis improves the accuracy of prediction in clinical decision making. However, most previously described methods focused on numerical data only. This paper investigated how well textual features can improve the accuracy of regression predictions. Preliminary diagnosis, diagnosis summary, and drug names used in prescriptions as provided in the MIMIC II dataset were used to derive textual features. We proposed the bag-of-entities indexing method, which relies on named entity re… Show more

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Cited by 2 publications
(1 citation statement)
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“…In SGs, a large number of texts related to the operation and control of power grids are widely accumulated, including trouble and defect records, operating tickets, logs of operation and maintenance and so on. Text mining [43][44][45] plays a vital role in extracting critical information from electric power texts, such as equipment name, equipment type, location, the logical connection of equipment. Particularly, Chinese texts possess the general characteristics of obscure, ambiguous, and hardly segmenting [46].…”
Section: Power Text Data Miningmentioning
confidence: 99%
“…In SGs, a large number of texts related to the operation and control of power grids are widely accumulated, including trouble and defect records, operating tickets, logs of operation and maintenance and so on. Text mining [43][44][45] plays a vital role in extracting critical information from electric power texts, such as equipment name, equipment type, location, the logical connection of equipment. Particularly, Chinese texts possess the general characteristics of obscure, ambiguous, and hardly segmenting [46].…”
Section: Power Text Data Miningmentioning
confidence: 99%