Please use this identifier to cite or link to this item: http://localhost:8080/xmlui/handle/123456789/203
Title: INFERTILITY PREDICTIVE ANALYSIS ON IVF BASAED ON SIGNIFICANT FEATURE SELECTION USING DATA MINING TECHNIQUES
Authors: S, Deepika
M, Rajeswari
Keywords: Feature Selection Algorithm
Data Mining
Supervised Filter
IVF
Spermatological Data
Issue Date: Dec-2018
Publisher: Speak Foundation-International Journal of Management and Social Sciences(IJMSS)
Abstract: This paper elucidates the process by applying clustering and classification technique to spot major procedures for the infertility couples to decide the success rate of In-vitro Fertilization treatment. There are factors which lead to infertility like age, education, economical backlog, Body Mass Index(BMI) and obesity which causes changes in hormonal levels and heredity etc., for infertility couples. The constraints with high sway factor can be well-known by apply the proper decrease/unrelated algorithm, which destroy the parameters that has a less important role in determining the success rate of particular patients. Data mining plays vital role in its pre-processing techniques to increase prediction accuracy and find which treatment will be perfect for the patient. A FAST-FOIL algorithm, First became the construction of minimum spanning tree, after that the partition the data into each tree by clustering the similar features. Selected features are represented into clusters. Thus, the proposed paper will determine the accuracy of IVF treatment compared with ZIFT and GIFT using MATLAB.
URI: http://localhost:8080/xmlui/handle/123456789/203
ISSN: Online:2349-9761
Print:2249-0191
Appears in Collections:International Journals



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