Difference between revisions of "Forecasting"

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<b>Forecasting with Neural Networks: Part A
 
</b><br>Galit Shmueli What is a neural network, neural network terminology, and setting up a  network for time series forecasting  This video supports the textbook Practical Time Series Forecasting. http://www.forecastingbook.com  http://www.galitshmueli.com
 
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* Continuous [[Restricted Boltzmann Machine (RBM)]]
 
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= Demand Forecasting =
 
= Demand Forecasting =

Revision as of 19:16, 12 September 2020

...Google search Youtube search...

Introduction to Forecasting in Machine Learning and Deep Learning
Forecasts are critical in many fields, including finance, manufacturing, and meteorology. At Uber, probabilistic time series forecasting is essential for marketplace optimization, accurate hardware capacity predictions, marketing spend allocations, and real-time system outage detection across millions of metrics. In this talk, Franziska Bell provides an overview of classical, machine learning and deep learning forecasting approaches. In addition fundamental forecasting best practices will be covered. This video was recorded at QCon.ai 2018: http://bit.ly/2piRtLl If you are a software engineer that wants to learn more about machine learning check our dedicated introductory guide http://bit.ly/2HPyuzY . For more awesome presentations on innovator and early adopter, topics check InfoQ’s selection of talks from conferences worldwide http://bit.ly/2tm9loz

Predicting with a Neural Network explained
In this video, we explain the concept of using an artificial neural network to predict on new data. We also show how to predict in code with Keras.


Time Series Forecasting

Time Series Forecasting - Statistical

Classical time series forecasting methods may be focused on linear relationships, nevertheless, they are sophisticated and perform well on a wide range of problems, assuming that your data is suitably prepared and the method is well configured. 11 Classical Time Series Forecasting Methods in Python (Cheat Sheet) | Jason Brownlee - Machine Learning Mastery

Autoregression (AR)

YouTube search... ...Google search

Moving Average (MA)

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Autoregressive Moving Average (ARMA)

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Autoregressive Integrated Moving Average (ARIMA)

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Seasonal Autoregressive Integrated Moving-Average (SARIMA)

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Seasonal Autoregressive Integrated Moving-Average with Exogenous Regressors (SARIMAX)

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Vector Autoregression (VAR)

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Volume Weighted Moving Average (VWMA)

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Vector Autoregression Moving-Average (VARMA)

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Vector Autoregression Moving-Average with Exogenous Regressors (VARMAX)

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Smoothing

Simple Exponential Smoothing (SES)

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Holt's Exponential Smoothing

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Winter's (Holt-Winter's) Exponential Smoothing (HWES)

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Time Series AutoML



Time Series Forecasting - Deep Learning

Applying deep learning methods like Multilayer Neural Networks and Long Short-Term Memory (LSTM) Recurrent Neural Network models to time series forecasting problems.| Jason Brownlee - Machine Learning Mastery

Forecasting with Neural Networks: Part A
Galit Shmueli What is a neural network, neural network terminology, and setting up a network for time series forecasting This video supports the textbook Practical Time Series Forecasting. http://www.forecastingbook.com http://www.galitshmueli.com

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Demand Forecasting

Demand Forecasting Using AI and Machine Learning (AI For Business Episode 1)
In this video, we will explore how Machine Learning is used for demand forecasting. Enjoy the video and please like, subscribe and turn on the notifications. In this video, I will start with identifying the challenge, followed by exploring the solution, then providing background of the process and the technology behind it, and finally how it can be applied in the enterprise together with some examples.

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