Difference between revisions of "PRIMO.ai"

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(Unsupervised: Probabilistic/Generative)
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==== Unsupervised: Probabilistic/Generative ====
 
==== Unsupervised: Probabilistic/Generative ====
 
A probability distribution over a set of classes for each input sample. Unlabeled data is classified as (1) conditional probability of the target Y, or (2) conditional probability of the observable X given a target Y   
 
A probability distribution over a set of classes for each input sample. Unlabeled data is classified as (1) conditional probability of the target Y, or (2) conditional probability of the observable X given a target Y   
 +
*[[K-Means]]
 
*[[Restricted Boltzmann Machine (RBM)]]
 
*[[Restricted Boltzmann Machine (RBM)]]
 
*[[Deep Belief Network (DBN)]]
 
*[[Deep Belief Network (DBN)]]
 
*[[Variational Autoencoder (VAE)]]
 
*[[Variational Autoencoder (VAE)]]
 +
 
==== Competitive ====
 
==== Competitive ====
 
*[[Generative Adversarial Network (GAN)]]
 
*[[Generative Adversarial Network (GAN)]]

Revision as of 11:38, 27 May 2018

Overview

Background

AI Breakthroughs

AI Fun

How to...

Forward Thinking

Models

Supervised

Labeled (desired solution) data is fed into the algorithm

Convolutional

Deonvolutional

Sequence

Unsupervised

Some uses of Unsupervised Learning are (1) data compression, (2) classification, (3) clustering, and (4) outlier detection

Unsupervised: Probabilistic/Generative

A probability distribution over a set of classes for each input sample. Unlabeled data is classified as (1) conditional probability of the target Y, or (2) conditional probability of the observable X given a target Y

Competitive

Unsupervised: Non-Probabilistic

Unlabeled data is fed into the algorithm with the algorithm seperating the feature space and return the class associated with the space where a sample originates from.

Reinforcement

An 'agent' algorithm receives a delayed reward in the next time step to evaluate its previous action; in combination with Neural Networks it is capable of solving more complex tasks

Hierarchical

Frameworks

TensorFlow

Techniques

Mathematical Background

Datasets & Information Analysis

Algorithms

Bag of Tricks

Coding

Platforms: Machine Learning as a Service (MLaaS)

Amazon AWS

Google Cloud AI

Kaggle

Microsoft Azure

Research & Development

Other