Basic Concepts

Each neural network (NN) is composed of a number of components (layers) connected together by connections (synapses). Depending on how these components are connected, several neural network architectures can be created (feed forward NN, recurrent NN, etc).
This section deals with feed forward neural networks (FFNN) for simplicity’s sake, but it is possible to build whatever neural network architecture is required with Joone.
A FFNN is composed of a number of consecutive layers, each one connected to the next by a synapse. Recurrent connections from a layer to a previous one are not permitted. Consider the following figure:

This is a sample FFNN with two layers connected with one synapse. Each layer is composed of a certain number of neurons, each of which have the same characteristics (transfer function, learning rate, etc).

A neural net built with Joone can be composed of whatever number of layers of different kinds of layer.
Each layer processes its input signal by applying a transfer function and sending the resulting pattern to the synapses that connect it to the next layer. So a neural network can process an input pattern, transferring it from its input layer to the output layer.
This is the basic concept upon which the entire engine is based.


The Transport Mechanism



To ensure that it is possible to build whatever neural network architecture is required with Joone, a method to transfer the patterns through the net is required without the need of a central point of control.
To accomplish this goal, each layer of Joone is implemented as a Runnable object, so each layer runs independently from the other layers (getting the input pattern, applying the transfer function to it and putting the resulting pattern on the output synapses so that the next layers can receive it, processing it and so on) as depicted by the following basic scheme:


Where for each neuron N:
XN The weighted net input of each neuron = (I1 * WN1) + … + (IP * WNP)
YN – The output value of each neuron = f(XN)
f(X) – The transfer function (depending on the kind of layer’s property)


This transport mechanism is also used to bring the error from the output layers to the input layers during the training phases, allowing the weights and biases to be changed according to the chosen learning algorithm (for example the backprop algorithm).
In other words, the Layer object alternately ‘pumps’ the input signal from the input synapses to the output synapses, and the error pattern from the output synapses to the input synapses.
To accomplish this, each layer has two opposing transport mechanisms, one from the input to the output to transfer the input pattern during the recall phase, and another from the output to the input to transfer the learning error during the training phase, as depicted in the following figure:



Each Joone component (both layers and synapses) has its own pre-built mechanisms to adjust the weights and biases according to the chosen learning algorithm.
Complex neural network architectures can be easily built, either linear or recursive, because there is no necessity for a global controller of the net.
Imagine each layer acts as a pump that ‘pushes’ the signal (the pattern) from its input to its output, where one or more synapses connect it to the next layers, regardless of the number, the sequence or the nature of the layers connected.
This is the main characteristic of Joone, guaranteed by the fact that each layer runs on its own thread, representing the unique active element of a neural network based on the Joone’s core engine.
Look at the following figure (the arrows represent the synapses):



In this manner any kind of neural networks architecture can be built.

To build a neural network, simply connect each layer to another as required using a synapse, and the net will run without problems. Each layer (running in its own thread) will read its input, apply the transfer function, and write the result in its output synapses, to which there are other layers connected running on separate threads, and so on.

Joone allows any kind of net to be built through its modular architecture, like a LEGO© bricks system!


By this means: