> Implicit in this definition is avoiding the destruction of business value by misapplying ML/statistics
This is an incredibly important point.
I'm working as a fundraising and marketing analyst for a non-profit, but my background is in biology. The skill-set needed for analysis is pretty similar between marketing and population ecology. If you ask someone in either field what the biggest barrier to analysis is, getting data would almost certainly be the most common answer for both fields. However, data is treated very differently between the two fields.
On the scientific side, I find that most of the frustration occurs because there isn't enough data to make a conclusion. Peers will criticize conclusions made with insufficient information.
On the business side, I find that I'm often pressured to make claims that are much more confident that the data is capable of being. As a scientist, I am always very aware of the limitations of my data, but in business I feel like I'm pressured to make conclusions, and that people are waiting to make decisions based on any information they can get out of me.
I spend more time on my write-ups than I do planning my experiments, collecting data, and performing my analysis combined. In a business setting time "moves faster" and the stakeholders in a project expect results no matter what. In these cases, communicating what the limitations are in a concrete way is really important. Expressing risk in terms of money, or probability in terms of coin-flips makes a pretty substantial difference, and can really help people relate to the information you are presenting.
Speaking as a business person: often the biggest challenge is to make ANY decision and actually DO something. The perfect is the enemy of the good. So to continue the cliches the business critique of your objections would be "analysis paralysis."
I tell you this just to help you understand what you describe. But in my observations of failure modes in business, it is rarely because one follows the wrong analysis, but more because most are unwilling to make any changes unless confronted with overwhelming evidence. (And that hurdle always gets higher no matter how much evidence you give.)
>most are unwilling to make any changes unless confronted with overwhelming evidence.
That's probably the second most common problem. I'd say 80% of my job is just fighting confirmation bias. So if someone thinks something needs to be changed, they'll take any sign that it should be changed. If someone thinks something should stay the same way, they'd argue with god about it.
I probably propose changes more often than I propose keeping things the same way, if only because testing an idea and gathering information requires making a change somewhere. I have a lot of conversations with people who are pressuring me to make a conclusion that the current way is best as soon as possible, so they can throw a lot of money at their pet project.
I'd say that most of the claims I'm being asked to make with limited evidence would be supporting the status quo, which is in line with your assessment.
This is an incredibly important point.
I'm working as a fundraising and marketing analyst for a non-profit, but my background is in biology. The skill-set needed for analysis is pretty similar between marketing and population ecology. If you ask someone in either field what the biggest barrier to analysis is, getting data would almost certainly be the most common answer for both fields. However, data is treated very differently between the two fields.
On the scientific side, I find that most of the frustration occurs because there isn't enough data to make a conclusion. Peers will criticize conclusions made with insufficient information.
On the business side, I find that I'm often pressured to make claims that are much more confident that the data is capable of being. As a scientist, I am always very aware of the limitations of my data, but in business I feel like I'm pressured to make conclusions, and that people are waiting to make decisions based on any information they can get out of me.
I spend more time on my write-ups than I do planning my experiments, collecting data, and performing my analysis combined. In a business setting time "moves faster" and the stakeholders in a project expect results no matter what. In these cases, communicating what the limitations are in a concrete way is really important. Expressing risk in terms of money, or probability in terms of coin-flips makes a pretty substantial difference, and can really help people relate to the information you are presenting.