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Diagnosis of Thyroid Disorders using Decision Tree Splitting Rules
Author(s) -
J. JacqulinMargret,
B. Lakshmipathi,
Sanjeev Kumar
Publication year - 2012
Publication title -
international journal of computer applications
Language(s) - English
Resource type - Journals
ISSN - 0975-8887
DOI - 10.5120/6287-8474
Subject(s) - computer science , decision tree , tree (set theory) , thyroid , artificial intelligence , operations research , data mining , medicine , endocrinology , mathematics , combinatorics
gland secretes thyroid hormones to control the body's metabolic rate. The malfunction of thyroid hormone will leads to thyroid disorders. The under-activity and over-activity of thyroid hormone causes hypothyroidism and hyperthyroidism. This paper describes the diagnosis of thyroid disorders using decision tree attribute splitting rules. Since, decision tree attempts to follow one decision, it helps to classify the data in dataset according to aforesaid disorders. This method provides five different splitting criteria for the construction of decision tree. The splitting criteria are Information Gain, Gain Ratio, Gini Index, Likelihood Ratio Chi-Squared Statistics, Distance Measure. Among, the aforementioned splitting rules three rules belong to Impurity based splitting criteria and other two are Normalized Impurity based splitting criteria. As a result, the decision tree classifies the thyroid data-set into three classes of thyroid disorders.

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