| Literature DB >> 35845927 |
Fahima Hajjej1, Manal Abdullah Alohali1, Malek Badr2,3, Md Adnan Rahman4.
Abstract
By comparing the performance of various tree algorithms, we can determine which one is most useful for analyzing biomedical data. In artificial intelligence, decision trees are a classification model known for their visual aid in making decisions. WEKA software will evaluate biological data from real patients to see how well the decision tree classification algorithm performs. Another goal of this comparison is to assess whether or not decision trees can serve as an effective tool for medical diagnosis in general. In doing so, we will be able to see which algorithms are the most efficient and appropriate to use when delving into this data and arrive at an informed decision.Entities:
Mesh:
Year: 2022 PMID: 35845927 PMCID: PMC9283053 DOI: 10.1155/2022/9449497
Source DB: PubMed Journal: Biomed Res Int Impact factor: 3.246
Figure 1Decision tree structure.
Figure 2WEKA main screen.
Figure 3Classification trees (audiology exam): J48.
Figure 4Analysis statistics for the best case.
Figure 5Analysis statistics for the best case.
Figure 6Analysis statistics for the best case.
Figure 7Analysis statistics for the best case.
Figure 8Analysis statistics for the best case.
Figure 9Analysis statistics for the best case.
Figure 10Analysis statistics for the best case.