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What is Time Series Forecasting

Handbook of Research on Applied Data Science and Artificial Intelligence in Business and Industry
Deals with the estimation of future values using a model that was fit on observations collected over time (time series).
Published in Chapter:
Time Series Forecasting in Retail Sales Using LSTM and Prophet
Clony Junior (IEETA, University of Aveiro, Portugal), Pedro Gusmão (IEETA, University of Aveiro, Portugal), José Moreira (DETI, University of Aveiro, Portugal), and Ana Maria M. Tome (DETI, University of Aveiro, Portugal)
DOI: 10.4018/978-1-7998-6985-6.ch011
Abstract
Data science highlights fields of study and research such as time series, which, although widely explored in the past, gain new perspectives in the context of this discipline. This chapter presents two approaches to time series forecasting, long short-term memory (LSTM), a special kind of recurrent neural network (RNN), and Prophet, an open-source library developed by Facebook for time series forecasting. With a focus on developing forecasting processes by data mining or machine learning experts, LSTM uses gating mechanisms to deal with long-term dependencies, reducing the short-term memory effect inherent to the traditional RNN. On the other hand, Prophet encapsulates statistical and computational complexity to allow broad use of time series forecasting, prioritizing the expert's business knowledge through exploration and experimentation. Both approaches were applied to a retail time series. This case study comprises daily and half-hourly forecasts, and the performance of both methods was measured using the standard metrics.
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More Results
Studying Individualized Transit Indicators Using a New Low-Cost Information System
The use of a model to predict future values based on previously observed values.
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A Comparison of Deep Learning Models in Time Series Forecasting of Web Traffic Data From Kaggle
Using historical data in a period to predict the future. The input and output format of time series forecasting is similar to regression problems in supervised learning, but with time dependence, i.e., if the order of the data is changed, all data patterns and relations are likely to undergo huge changes affecting the prediction results.
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