TY - JOUR
T1 - Logic regression and its application in predicting diseases
TT - معرفی رگرسیون منطقی و کاربردآن برای پیش بینی بیماری ها
JF - Andishe-_ye-Amari
JO - Andishe-_ye-Amari
VL - 16
IS - 1
UR - http://andisheyeamari.irstat.ir/article-1-128-en.html
Y1 - 2011
SP - 34
EP - 46
KW - Annaeling Algorithm
KW - Boolean Logic
KW - interaction effects
KW - Logic Regression.
N2 - Regression is one of the most important statistical tools in data analysis and study of the relationship between predictive variables and the response variable. in most issues, regression models and decision tress only can show the main effects of predictor variables on the response and considering interactions between variables does not exceed of two way and ultimately three-way, due to complexity of such interactions. To consider such interactions in the regression models, instead of individual variables in the model, we can construct a combination of them and use this combination as a new independent variable into the model Logic regression is a generalized regression and classification method that in this model, predictive variables are Boolean combinations that are made of the original binary variables. Annealing algorithm is used to find such combinations and their coefficients. randomization test or “null model test” is an overall test for signal in the data.also, cross-validation test can be used to determine the size of the logic tree model with the best predictive capability. As an example, we applied Logic Regression to predict diabetes in TLGS study.
M3
ER -