Demand
forecasting is an essential part of inventory management. Many organizations
use methods based on past experience, either of the organization or the manager
responsible for that prediction. Often, even basics like time-series models are used
inappropriately.[1] This all amounts to a lot
of money spent on infrastructure, technical systems and human capital to keep
what can be a relatively inefficient supply chain running.
However, in the world of ‘Big Data’ and advanced
analytics, many wonder whether larger forecasting models couldn’t be made using
machine learning techniques. The hypothesis is that particularly for industries
with high variability and volatility of demand, advanced machine learning and
large data sets can do what current forecasters cannot. (Or, at least what
current forecasting methods cannot do very well.)
The chart below describes 4 different machine
learning techniques and in which situation they are most applicable[2]:
Overall, many of the uses above
correspond to the fashion industry. As outlined by Nenni, Giustiniano and
Pirolo,[3]
the fashion industry is marked by:
- · High impulse shopping
- · High volatility
- · Low predictability
- · Large product variety
- · Large variance in demand
This suggests supply chains of
fashion companies could be improved by machine learning techniques, as opposed
to just modifying the supply chain to be more responsive and agile. However, as
far as I can tell very few companies are significantly using these techniques.
Certainly, one reason for this is
lack of adequate human capital. Machine learning is a specialized skill and
employing a team of engineers for the task is expensive. Additionally,
computation time of many of the aforementioned methods is high- at least now,
perhaps too high to consider operationally practical, especially in a highly
volatile industry like fashion. Finally, translating a model’s data into an
actionable forecast can prove difficult.
Additionally, I would bring up a
more philosophical point: while machine learning is certainly cool- and has
some really interesting real-world applications- many people and many
organizations are not quite ready to turn everything over to complicated black
boxes and algorithms. Despite statistical viability, humans often believe their
own experiences to be more accurate, and handing multi-million dollar decisions
to a statistical method is easily dismissed.
What do you think: Is it only a
matter of time before advanced machine learning is integrated into supply
chains within high-volatility industries? Or is the computational time and
uncertainty too much to be feasible in the near future when simple methods
(like a highly responsive supply chain) seem to work?
[1] Cleaning the Crystal Ball, Tim Laseter,
Casey Lichtendahl, and Yael Grushka-Cockayne: http://www.strategy-business.com/article/10202?pg=all
[2] Demystifying Machine Learning in Forecasting,
Shiv Kunderu: http://www.mu-sigma.com/analytics/thought_leadership/decision-sciences-Demystifying-Machine-learning-in-forecasting.html
[3] Demand Forecasting in the Fashion Industry:
A Review, Nenni, Giustiniano, and Pirolo: http://www.intechopen.com/download/get/type/pdfs/id/45565
Additional Source: Supply Chain Visibility & Artificial Intelligence, Jonah Saint McIntire: http://www.supply-chain-visibility.com/2011/05/09/supply-chain-visibility-artificial-intelligence/
No comments:
Post a Comment
Note: Only a member of this blog may post a comment.