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APICS CPIM-8.0 Exam - Topic 1 Question 14 Discussion

Actual exam question for APICS's CPIM-8.0 exam
Question #: 14
Topic #: 1
[All CPIM-8.0 Questions]

A company with stable demand that uses exponential smoothing to forecast demand would typically use a:

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Suggested Answer: A

Exponential smoothing is a forecasting method that uses weighted averages of past observations to predict future values. The weights decrease exponentially as the observations get older, giving more importance to recent data. Exponential smoothing can be applied to data with different patterns, such as level, trend, or seasonality. Depending on the pattern, different exponential smoothing models and parameters are used. Two common parameters are alpha () and beta ():

Alpha is the smoothing parameter for the level component of the forecast. The level component is the average or typical value of the data. Alpha can range from 0 to 1, not inclusive. A low alpha value gives more weight to older observations and produces a smoother forecast. A high alpha value gives more weight to recent observations and produces a more responsive forecast.

Beta is the smoothing parameter for the trend component of the forecast. The trend component is the direction and rate of change of the data over time. Beta can also range from 0 to 1, not inclusive. A low beta value gives more weight to older trends and produces a smoother forecast. A high beta value gives more weight to recent trends and produces a more responsive forecast.

A company with stable demand that uses exponential smoothing to forecast demand would typically use a low alpha value. Stable demand means that the data do not have significant variations, fluctuations, or patterns over time. In this case, a simple exponential smoothing model that estimates only the level component is sufficient. A low alpha value would produce a smooth and stable forecast that reflects the average demand level and does not react to random noise or outliers. The other options are not correct, as they either refer to a different parameter (beta) or a different scenario (high alpha value):

A low beta value would be used for data with a trend component, but a stable demand does not have a trend component. A low beta value would produce a smooth and stable trend forecast that does not react to random noise or outliers.

A high beta value would also be used for data with a trend component, but a stable demand does not have a trend component. A high beta value would produce a responsive and dynamic trend forecast that reflects the recent changes in the data.

A high alpha value would be used for data with a high variability or uncertainty, but a stable demand does not have these characteristics. A high alpha value would produce a responsive and dynamic level forecast that reflects the recent changes in the data.Reference:

[CPIM Part 2 - Section A - Topic 3 - Demand Management]

Exponential Smoothing for Time Series Forecasting

What is alpha and beta in exponential smoothing?

Value of alpha and beta in Holt's exponential smoothing method


Contribute your Thoughts:

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Hildred
2 months ago
Low alpha is the way to go, no doubt!
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Lavonda
2 months ago
Wait, isn't a high alpha better for stable demand?
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Golda
2 months ago
I agree, low alpha smooths out the fluctuations.
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Daren
3 months ago
Surprised to see people questioning the low alpha approach!
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Marisha
3 months ago
Definitely a low alpha value for stable demand.
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Margurite
3 months ago
I feel like high alpha values are for situations with more variability, so low alpha seems right for stable demand.
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Jani
4 months ago
I’m a bit confused about the terms; I thought beta was more related to trend forecasting, not demand.
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Yun
4 months ago
I remember practicing a question like this, and I think low alpha is correct because it smooths out fluctuations.
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Deonna
4 months ago
I think we learned that stable demand usually means using a low alpha value in exponential smoothing, but I'm not completely sure.
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Karma
4 months ago
A low alpha value, got it. That makes sense for a stable demand scenario where you don't want your forecast jumping around too much. I'm pretty confident in this one.
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Harrison
4 months ago
Okay, I've got this. For a company with stable demand, you want to use a low alpha value so the forecast puts more emphasis on past data rather than reacting too quickly to the latest observation. The high/low beta part is throwing me off though - I'll have to double-check that part.
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Maricela
4 months ago
Hmm, I'm a little unsure about this one. I know exponential smoothing is used for forecasting, but I can't quite recall the relationship between the alpha/beta values and the stability of the demand. I'll have to think this through carefully.
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Cristen
5 months ago
This seems like a straightforward question about exponential smoothing. I think the key is to remember that a low alpha value means the forecast puts more weight on past data, which is appropriate for a company with stable demand.
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Carissa
5 months ago
I disagree, I think the answer is C) high beta value.
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Stephaine
5 months ago
I've got a gut feeling that the answer is a low alpha value. Gotta trust the instincts, you know?
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Arlette
2 months ago
Exactly, low alpha smooths out the fluctuations.
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Marsha
2 months ago
But what about the high alpha value? Isn't that for rapid changes?
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Gianna
2 months ago
Yeah, stable demand needs less sensitivity.
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Quentin
3 months ago
I think you're right about the low alpha value.
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Elmer
5 months ago
I agree with Roxane, because stable demand requires less weight on recent data.
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Polly
6 months ago
Haha, high beta? What is this, an action movie? We're talking about forecasting, not explosions!
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Roxane
6 months ago
I think the answer is A) low alpha value.
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Elly
7 months ago
High alpha? Are you kidding me? That's for volatile demand, not stable. Try again, my friend.
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Sharita
5 months ago
A) low alpha value.
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Melissa
7 months ago
A low alpha value makes sense for stable demand, as it gives more weight to past data and smooths out fluctuations. Solid choice!
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Daniel
5 months ago
C) high beta value.
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Cathrine
5 months ago
Yes, a low alpha value is ideal for stable demand.
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Kasandra
6 months ago
A) low alpha value.
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Kimbery
7 months ago
A) low alpha value.
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