choice matrices (MADM) are a helpful methodology for evaluating a number of options and choosing the selection that most closely fits your wants and funds. By evaluating a set of standards for every choice, you may be assured that you’ve got a transparent understanding of the choice house.
They’re, nonetheless, usually misinterpreted or misapplied. This text explains how one can make the most of multi-attribute choice matrices and keep away from pitfalls generally related to their use. It additionally lays the groundwork for a unique technique that borrows essential ideas from MADM with out falling into its implicit traps.
A Motivating Instance: Tent Choice
My household is out there for a brand new tent. As such, we did what we normally do: we googled “finest tent for automobile tenting.” One of many first outcomes was a GearLab article referred to as “The Best Camping Tents | Tested and Ranked.”
Within the article, GearLab charges 16 tents on a scale of 1 to 10 throughout 5 attributes. They weigh these attributes, after which rank the tents 1-16 primarily based on the weighted scores. This can be a simple instance of a multi-attribute choice matrix.
The Goal of MADM
MADM is commonly handled as a means for information to decide on behalf of a stakeholder. Within the GearLab article, they advocate the only “finest” tent primarily based on their MADM findings. I wish to emphasize that MADM doesn’t make the choice; it informs it.
It could possibly finest be understood as a great tool for structuring comparisons throughout all options, eliminating clearly inferior choices, and revealing the highest contenders. Used appropriately, it helps decision-makers see the panorama of accessible decisions moderately than pointing them to a single “right” selection.
When misused, it could actually steer a choice into the bottom and depart the choice maker with a foul style of their mouth about “data-driven” decision-making.
Briefly, MADM’s function is to offer decision-makers a greater grasp of their choices, remove poor choices, and current worth propositions, to not automate the choice.
How one can Correctly Use MADM
Right here is my primary information to MADM:
- Establish the decision-maker, choice house, and attributes.
- Outline the weights for every attribute.
- Acquire the info and calculate the weighted scores.
- Plot the merchandise towards the worth and discover the environment friendly frontier.
- Current the findings and suggestions to the choice maker.
Briefly, I’ll describe every in a bit of extra element.
First, decide who the choice maker is. Are you doing this evaluation for another person’s choice, or in your personal? For this instance, let’s assume that it’s in your personal choice.
Defining the choice house is mostly pretty simple. You want to know the kind of merchandise (corresponding to a tent) being thought-about and determine the highest n choices. Make sure you pretty pattern all choices, not simply those that come to thoughts first.
Then, assign a number of attributes. Give you a listing of issues which may make the product extra helpful or useful.
After you outline the attributes, I like to recommend talking with the decision-maker. When you begin speaking to the decision-maker, make sure you use their priorities, not yours.
Rank the attributes by significance, and contemplate the tradeoffs. Tradeoff questions like “Would I commerce an inch of headspace from 71 inches to 70 inches for a tent that is a bit more wind-proof?” Then, assign attribute weights in accordance with these responses and place them in a desk for later use. These won’t ever be good, even when the evaluation is in your personal use.
Now you might have one thing that appears like this.
| Standards | Weight |
| Area and Consolation | 35% |
| Climate Resistence | 25% |
| Ease of Use | 15% |
| Household Friendliness | 15% |
| High quality | 10% |
Gathering the info can differ in problem. On this scenario, it’s comparatively simple. Seek for every tent, go to “tech specs” to search out most data, and opinions to search out the remainder. Report that information in your choice matrix. If it’s not simple, you could have to subjectively assign a worth to every attribute, however be sure you outline your criterion, or at the very least your normal pondering, if you happen to do that.
For the tents on GearLab, they rated every attribute on a scale of 1 to 10, as proven under.
Now, your choice matrix seems to be like this. Observe that to maintain the chart readable, I’ve omitted the “high quality” attribute.
| Area | Climate Resistance | Ease of Use | Household Pleasant | |
| Zampire | 9.5 | 9 | 6 | 9 |
| Wawona | 9 | 8 | 7 | 9 |
| Base Camp | 9 | 8 | 6.5 | 8 |
| Aurora | 9 | 7 | 7 | 8 |
| Tungsten 4 | 7 | 8.5 | 9 | 7 |
| Bunkhouse 6 | 8 | 7 | 8 | 7 |
| Skydome 8 | 9 | 6 | 6 | 9 |
| Limestone | 7 | 9 | 8 | 5 |
| Alpha Breeze | 7 | 9 | 6 | 7 |
| T4 Hub | 7.5 | 7 | 8 | 7.5 |
| Wonderland | 7 | 8 | 7 | 7 |
| Wi-fi 6 | 7 | 7 | 8 | 8 |
| Zeta C6 | 8 | 6 | 10 | 6 |
| Sundome | 7 | 7 | 6 | 5 |
| TallBoy 4 | 6 | 7 | 7 | 5 |
| Coleman Cabin | 5 | 7 | 9 | 3 |
All that continues to be is to calculate the weighted scores. To do that, take the sum product of the weights and the values for every merchandise. You now have your accomplished choice matrix. I’ve additionally included the worth for reference.
| Tent | Worth | Weighted Rating |
| Zampire | $1,200.00 | 8.725 |
| Wawona | $550.00 | 8.45 |
| Base Camp | $569.00 | 8.225 |
| Aurora | $500.00 | 7.95 |
| Tungsten 4 | $399.00 | 7.775 |
| Bunkhouse 6 | $700.00 | 7.6 |
| Skydome 8 | $285.00 | 7.5 |
| Limestone | $429.00 | 7.45 |
| Alpha Breeze | $550.00 | 7.45 |
| T4 Hub | $430.00 | 7.4 |
| Wonderland | $429.00 | 7.35 |
| Wi-fi 6 | $270.00 | 7.3 |
| Zeta C6 | $160.00 | 7.2 |
| Sundome | $154.00 | 6.45 |
| TallBoy 4 | $170.00 | 6.25 |
| Coleman Cabin | $219.00 | 5.8 |
Subsequent, plot the weighted rating of every merchandise towards its value, orient your self to the plot, and plot the environment friendly frontier:
From this, we are able to determine eight tents on the environment friendly frontier. Being on the environment friendly frontier means we can not get a greater weighted rating on the identical or lower cost. That is the important thing perception MADM supplies: figuring out which choices are strictly dominated and which contain significant trade-offs between high quality and value.
If this plot seems to be acquainted, it’s doubtless as a result of you might have seen an analogous plot on a monetary risk-return environment friendly frontier. One axis is one thing you need much less of (value/danger), and the opposite is one thing you need extra of (rating/return).
| Tent | Worth | Weighted Rating |
|---|---|---|
| Sundome | $154.00 | 6.450 |
| Zeta C6 | $160.00 | 7.200 |
| Wi-fi 6 | $270.00 | 7.300 |
| Skydome 8 | $285.00 | 7.500 |
| Tungsten 4 | $399.00 | 7.775 |
| Aurora | $500.00 | 7.950 |
| Wawona | $550.00 | 8.450 |
| Zampire | $1,200.00 | 8.725 |
So which to advocate? If my funds is $600 and I would like the highest-quality tent I can afford, I might go for the North Face Wawona 6.

See right here: I drew a line on the funds, then selected the primary tent to the left of that line on the environment friendly frontier. I may do an analogous factor if I had a “high quality funds” and drew a line, then selected the primary level on the environment friendly frontier above the road.
All that continues to be now could be to current your findings to the decision-maker. When doing this, I like to recommend orienting them to the plot and mentioning and explaining the environment friendly frontier. One thing so simple as “for every of those factors, you can not get a greater score for a similar value” will suffice. Name consideration to the highest-rated choice. If you realize their funds upfront, make the suitable advice.
Observe that if we use a ratio of the weighted rating to cost, we lose loads of data and can’t decide which tent to decide on. It’s acceptable to incorporate this data, however not essential, because it typically tells a deceptive story. For instance, if a tent prices solely $5 at a storage sale and is simply as giant as the perfect competitor, however leaks when it rains, it isn’t an actual contender. Nevertheless, the ratio would doubtless present it because the “finest worth” selection. For the same motive, value must be saved separate from the attributes in MADM and used solely as a constraint or tradeoff.
Conclusion
Now that you just perceive how MADM works, its shortcomings are simpler to see. It tends to miss sure particulars in decision-making by generalizing all the pieces right into a single rating and assuming linearity throughout all attributes (i.e., a rise from 70 inches to 71 inches is handled as equally useful as a rise from 40 inches to 41 inches, which might be not the case).
It’s important to grasp the mechanics of MADM to understand the development achieved by adopting this subsequent technique. Within the second a part of this two-part collection, I’ll suggest an alternative choice to MADM that preserves its strengths whereas yielding suggestions extra carefully aligned with choice makers’ priorities.
Writer Observe
In the event you loved this, I write about analytical reasoning, choice science, optimization, and information science. I additionally share new work and associated ideas on LinkedIn.

