Deal of The Day! Hurry Up, Grab the Special Discount - Save 25% - Ends In 00:00:00 Coupon code: SAVE25
Welcome to Pass4Success

- Free Preparation Discussions

Amazon Exam MLS-C01 Topic 3 Question 81 Discussion

Actual exam question for Amazon's MLS-C01 exam
Question #: 81
Topic #: 3
[All MLS-C01 Questions]

A data scientist is working on a public sector project for an urban traffic system. While studying the traffic patterns, it is clear to the data scientist that the traffic behavior at each light is correlated, subject to a small stochastic error term. The data scientist must model the traffic behavior to analyze the traffic patterns and reduce congestion.

How will the data scientist MOST effectively model the problem?

Show Suggested Answer Hide Answer
Suggested Answer: D

Contribute your Thoughts:

Howard
24 days ago
Hmm, that's a good point. But I'm not sure I trust the data scientist's ability to pull off a multi-agent reinforcement learning solution. Sounds a bit risky, especially for a public sector project. I'd stick with the tried and true supervised learning approach.
upvoted 0 times
...
Felton
25 days ago
But what about the stochastic error term? Shouldn't the data scientist try to account for that somehow? Maybe a combination of supervised learning and some sort of reinforcement learning approach could work better.
upvoted 0 times
...
Malika
26 days ago
I agree. Option C seems like the way to go here. Using historical data to build accurate predictors of traffic flow is a practical and effective solution. Plus, it avoids the complexity of trying to find an equilibrium policy.
upvoted 0 times
...
Elza
27 days ago
Hmm, this is an interesting question. I think the data scientist should definitely use a supervised learning approach to model the traffic patterns. The problem is clearly correlated, so finding equilibrium policies might not be the most effective solution.
upvoted 0 times
...

Save Cancel
az-700  pass4success  az-104  200-301  200-201  cissp  350-401  350-201  350-501  350-601  350-801  350-901  az-720  az-305  pl-300  

Warning: Cannot modify header information - headers already sent by (output started at /pass.php:70) in /pass.php on line 77