Difference between revisions of "Artificial Neural Networks"
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− | + | '''Artificial Neural Networks'' or more commonly known as '''Artificial Intelligence''' have become the most prominent research topic in modern computer science. As we are entering the golden age of artificial intelligence, machine learning & deep learning are used daily by consumers for practical purposes | |
== Artificial Neural Networks == | == Artificial Neural Networks == | ||
− | + | '''Artificial Neural Networks''' are simple to complex series of data representation within a network that changes according the certain algorithms applied with the phases of the structure. The artificial neural network was initially inspired by biological neural networks and their functions of processing input and output data. Within A.I. the biological 'neurons' are represented as "nodes" within an A.I. | |
which are systems of interconnected points exchanging messages between one another and have numeric weights/constraints applied to them that allow these neural nets to adapt/alter input data thus creating the Artificial Intelligence's ability to 'learn'. | which are systems of interconnected points exchanging messages between one another and have numeric weights/constraints applied to them that allow these neural nets to adapt/alter input data thus creating the Artificial Intelligence's ability to 'learn'. | ||
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Machine Learning Algorithms are the backbone of Artificial Neural Networks as they are what allow the neural network to created 'learned' material through the constraints placed on the data by the algorithms. | Machine Learning Algorithms are the backbone of Artificial Neural Networks as they are what allow the neural network to created 'learned' material through the constraints placed on the data by the algorithms. | ||
− | There are various types of Machine Learning Algorithms which are used to comprise neural nets. The main include | + | There are various types of Machine Learning Algorithms which are used to comprise neural nets. The main include '''Supervised Learning''', '''Unsupervised''' and '''Semi-supervised'''. |
− | + | '''Supervised''' machine learning algorithms consists of target/outcome variables (dependent variables) which is predicted from a given set of predictors (independent variables). This means that by using these sets of variables, we generate a function that maps inputs to desired outputs. In other words, we determine which output or end result data representation. | |
− | The most common types of | + | The most common types of '''Supervised Learning''' algorithms include: |
Regression | Regression | ||
Random Forest | Random Forest | ||
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− | + | '''Semi-Supervised''' or '''Reinforcement Learning''' Algorithms is when the machine is trained to make specific decisions and are exposed to environments where it trains itself continually by using trial and error. These machine learning algorithms learn from past experience and try to capture the best possible knowledge to make accurate business decisions. | |
− | An example of | + | An example of '''Semi-Supervised''' Learning includes: |
Markov Decision Process | Markov Decision Process | ||
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"Unsupervised Learning" Algorithms are algorithms that are applied within a neural network when there is no target or outcome variable to predict/estimated. An example use of these algorithms could be used for clustering population in different groups. | "Unsupervised Learning" Algorithms are algorithms that are applied within a neural network when there is no target or outcome variable to predict/estimated. An example use of these algorithms could be used for clustering population in different groups. | ||
− | Common Examples of | + | Common Examples of '''Unsupervised Learning''' Algorithms include: |
− | + | '''Apriori''' algorithm | |
− | + | '''K-means'''algorithms | |
== Deep Learning Neural Networks == | == Deep Learning Neural Networks == | ||
Revision as of 14:31, 7 December 2016
'Artificial Neural Networks or more commonly known as Artificial Intelligence have become the most prominent research topic in modern computer science. As we are entering the golden age of artificial intelligence, machine learning & deep learning are used daily by consumers for practical purposes
Artificial Neural Networks
Artificial Neural Networks are simple to complex series of data representation within a network that changes according the certain algorithms applied with the phases of the structure. The artificial neural network was initially inspired by biological neural networks and their functions of processing input and output data. Within A.I. the biological 'neurons' are represented as "nodes" within an A.I. which are systems of interconnected points exchanging messages between one another and have numeric weights/constraints applied to them that allow these neural nets to adapt/alter input data thus creating the Artificial Intelligence's ability to 'learn'.
There are a variety of
Machine Learning Algorithms
Machine Learning Algorithms are the backbone of Artificial Neural Networks as they are what allow the neural network to created 'learned' material through the constraints placed on the data by the algorithms.
There are various types of Machine Learning Algorithms which are used to comprise neural nets. The main include Supervised Learning, Unsupervised and Semi-supervised.
Supervised machine learning algorithms consists of target/outcome variables (dependent variables) which is predicted from a given set of predictors (independent variables). This means that by using these sets of variables, we generate a function that maps inputs to desired outputs. In other words, we determine which output or end result data representation.
The most common types of Supervised Learning algorithms include: Regression Random Forest KNN Logistic Regression
Regression Algorithms
Random Forest Algorithms
KNN Algorithms
Logistic Regression Algorithms
Semi-Supervised or Reinforcement Learning Algorithms is when the machine is trained to make specific decisions and are exposed to environments where it trains itself continually by using trial and error. These machine learning algorithms learn from past experience and try to capture the best possible knowledge to make accurate business decisions.
An example of Semi-Supervised Learning includes: Markov Decision Process
"Unsupervised Learning" Algorithms are algorithms that are applied within a neural network when there is no target or outcome variable to predict/estimated. An example use of these algorithms could be used for clustering population in different groups.
Common Examples of Unsupervised Learning Algorithms include: Apriori algorithm K-meansalgorithms
Deep Learning Neural Networks
Developing Data Sets
Developing your own data sets are what allows you to customize neural networks for your own specific needs. Whether gather on your own or by data scientists, the key to having a successfully A.I. lies behind the ability to gather and create optimal data examples.
The best way to gather information is though the abundance of what is available on the internet. Web crawlers are the best way to gather information and you have the option to use pre existing web crawlers/scraping tools or develop your own
The most popular web crawlers available are:
Crawling the Internet
Writing your own code for your neural network
The building blocks of Artificial Neural Networks are "Machine Learning Algorithms" which are algorithms that are explicitly developed to allow computers/hardware to learn without specifically being 'programmed'. The ability of these algorithms to train data is altered by the developer who trains the algorithms based on specified input and output values. The alteration in the input data and output data within the neural network is affected by its' 'constraint'.
Here is a arbitrary example of a input-output node to node alteration within a neural network: