Forecasting and estimation techniques

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== Abstract ==
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= Abstract =
 
It is very common in any project or program that deviations occur on different scales between what is expected and reality. On many occasions, these deviations could have been reduced by statistical analysis of past examples and their respective forecasts. Throughout this article, we will focus on studying the main statistical methods used when making forecasts and how, by using them, organizations could optimize their supply chain or the management of their projects by forecasting the quantity of units or resources that the market or project in question will demand, based on historical data from previous seasons. As an output, the advanced management of the project will be optimized, resources will be assigned to the tasks or processes that really require them, unnecessary costs will be eliminated, and the time used to complete the project will be reduced.
 
It is very common in any project or program that deviations occur on different scales between what is expected and reality. On many occasions, these deviations could have been reduced by statistical analysis of past examples and their respective forecasts. Throughout this article, we will focus on studying the main statistical methods used when making forecasts and how, by using them, organizations could optimize their supply chain or the management of their projects by forecasting the quantity of units or resources that the market or project in question will demand, based on historical data from previous seasons. As an output, the advanced management of the project will be optimized, resources will be assigned to the tasks or processes that really require them, unnecessary costs will be eliminated, and the time used to complete the project will be reduced.
  
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== Forecasting approaches ==
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= Forecasting approaches =
  
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== Demand classification ==
  
'''Demand classification'''
 
 
Demand can be classified in three ways: stable, trending, or seasonal.
 
Demand can be classified in three ways: stable, trending, or seasonal.
  
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Thirdly, seasonal demand is one that during specific periods of time the market is stronger and experiences an exceptional peak demand. An example of seasonal demand could be the sale of ice cream during summer periods or the increase in demand for bouquets of flowers on Valentine's Day.
 
Thirdly, seasonal demand is one that during specific periods of time the market is stronger and experiences an exceptional peak demand. An example of seasonal demand could be the sale of ice cream during summer periods or the increase in demand for bouquets of flowers on Valentine's Day.
  
'''Forecasting classification (short, middle and long term)'''
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== Forecasting classification (short, middle and long term) ==
 +
 
 +
= Forecasting methods =
  
'''Forecasting methods'''
 
 
It can be projected into the future in two ways: through qualitative methods, in which we rely on past actions or on the implicit knowledge of the subject to intuit future actions. Or through quantitative methods, in which through the use of statistics or mathematical models, historical data are projected into the future.
 
It can be projected into the future in two ways: through qualitative methods, in which we rely on past actions or on the implicit knowledge of the subject to intuit future actions. Or through quantitative methods, in which through the use of statistics or mathematical models, historical data are projected into the future.
  
'''Qualitative methods'''
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== Qualitative methods ==
 +
 
 +
 
 +
== Quantitative methods ==
  
'''Quantitative methods'''
 
  
'''Other factors that can affect forecasts'''
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== Other factors that can affect forecasts==
  
  
== Forecasting problems ==
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= Forecasting problems =
  
  
== Global forecasting process ==
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= Global forecasting process =
  
  
== Benefits and conclusion ==
+
= Benefits and conclusion =
  
  
== Annotated Bibliography ==
+
= Annotated Bibliography =
  
  
== References ==
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= References =

Revision as of 12:46, 16 February 2021

Contents

Abstract

It is very common in any project or program that deviations occur on different scales between what is expected and reality. On many occasions, these deviations could have been reduced by statistical analysis of past examples and their respective forecasts. Throughout this article, we will focus on studying the main statistical methods used when making forecasts and how, by using them, organizations could optimize their supply chain or the management of their projects by forecasting the quantity of units or resources that the market or project in question will demand, based on historical data from previous seasons. As an output, the advanced management of the project will be optimized, resources will be assigned to the tasks or processes that really require them, unnecessary costs will be eliminated, and the time used to complete the project will be reduced.

The term "forecast" can be associated with different fields, such as business, engineering, politics, project management ... In this article we will approach the term forecast from an operations management perspective, defining the term as an accurate prediction of the future, based on past events and whose objective is to give the company valuable time to face future events and thus be able to respond ot the market demand.

From the beginning of the 20th century to the present day, the importance of forecasts has grown exponentially, since it allows to anticipate events, coordinate the team and thus better plan resources, raw materials, personnel, work shifts, etc. when carrying out a project. (Prepare to adapt capacity of production to fluctuations in demand.)

The forecasting process is summarized in taking historical data and launching future forecasts.


Forecasting approaches

Demand classification

Demand can be classified in three ways: stable, trending, or seasonal.

In the first place, stable demand is characterized by following a common sales or production needs pattern during the time analyzed. That is, even with maximums and minimums, it can be assumed that during the set period the level of sales (and therefore production) will not fluctuate from the expected standards, that is, it will have a constant average.

Secondly, a trending demand pattern is defined as a constant or systematic increase or decrease in demand as time progresses. An example of trending demand could be the sale of electric scooters, whose demand has increased day by day in recent years.


Thirdly, seasonal demand is one that during specific periods of time the market is stronger and experiences an exceptional peak demand. An example of seasonal demand could be the sale of ice cream during summer periods or the increase in demand for bouquets of flowers on Valentine's Day.

Forecasting classification (short, middle and long term)

Forecasting methods

It can be projected into the future in two ways: through qualitative methods, in which we rely on past actions or on the implicit knowledge of the subject to intuit future actions. Or through quantitative methods, in which through the use of statistics or mathematical models, historical data are projected into the future.

Qualitative methods

Quantitative methods

Other factors that can affect forecasts

Forecasting problems

Global forecasting process

Benefits and conclusion

Annotated Bibliography

References

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