Saturday, October 31, 2020

Big Data analytics methods

 

SOurce: file:///C:/PHD/NOV%20DATA%20AI%20SCIENCE/Literature_Review_on_Big_Data_Analytics_Methods.pdf

1.CNN

 inspired from neural network model as a type of deep learning algorithm has a “convolutional layer” and “subsampling layer” architecture. Multi-instance data is deployed as a bag of instances in which each data point is a set of instances. CNN has been known with three features namely “local field,” “subsampling,” and “weight sharing” and comprised of three layers, which are input, hidden that consists of “convolutional layer” and “subsampling layer” and output layer. In hidden layer, each “convolutional layer” comes after “subsampling layer.” 

2. Deep neural network (DNN) 

A deep architecture in supervised data has been introduced with advances in computation algorithm and method, which is called deep neural network (DNN) [3]. It originates from shallow artificial neural networks (SANN) that are related to artificial intelligence (AI). DNN deploys a layered architecture with complex function to deal with complexity and high number of layers

3. Recurrent neural network (RNN) RNN

a network of nodes that are similar to neurons, was developed in 1980s. Each neuron-like node is interconnected with each other, and it can be divided into categories of input, hidden, and output neurons. The data will receive, transform, and generate results in this triple process.




Tuesday, October 20, 2020

Can we outgrow ASD?

 https://www.sciencedaily.com/releases/2019/03/190312075923.htm#:~:text=Summary%3A,require%20therapeutic%20and%20educational%20support.

Clinical Utility of the Rorschach Inkblot Method: Reframing the Debate

  Phase   Period     1 1921- 1950s The unbridled optimism period ...