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Political Science and International Relations, The SAGE Encyclopedia of Social Science Research Methods, https://dx.doi.org/10.4135/9781412950589.n239, Quantitative and Qualitative Research, Debate About, Creative Analytical Practice (CAP) Ethnography, Biographic Narrative Interpretive Method (BNIM), LOG-LINEAR MODELS (CATEGORICAL DEPENDENT VARIABLES), Conceptualization, Operationalization, and Measurement, CCPA – Do Not Sell My Personal Information. (2002) described the application of ANN in medical science and epidemiology and how it can be used to replace LR models.
Determining the value for c (the learning rate) was complex. The hidden layer was made of either five or six neurons depending on the number of neurons in the input layer. All the required computations for ANN analysis were performed using MATLAB version 7.2.0.232 (R2006a). TERL: classification of transposable elements by convolutional neural networks. Tables 2–4 represent the age distribution of the sample, the years of experience of subjects in construction, and the ethnicity distribution of the sample, respectively. Artificial neural network (ANN) models are another method of predicting outcomes, which are gradually finding their way into the safety field.