I am using an expert system with an inference engine (forward chaining) and I would like to explain why it is better than a decision tree using very simple concepts. (in one particular situation)
I know there is a similar question on stackoverflow but it's not the answer I'm looking for.
Here is my problem:
For Customer Relation Management, I am using lot of different business rules (that induce dialog rules) to help the customer make a decision on one product. Note: Rules are added frequently (2 per days).
The customer answers a series of questions before getting his answer. The business rules mixed with the dialog rules makes the resulting questionnaire looks like the one that would be generated by a optimal decision Tree. Even though the hidden reasonning is completely different.
I would like to know what are the main arguments in favor (or maybe against) of the inference engine in terms of scalability, robustness, complexity and efficiency compared to a decision tree in such a case.
I already have some ideas, but since I need to convince someone it's like I never have enough arguments.
Thanks in advance for your ideas and I would be happy if you could advise me good papers to read on this subject.