John's answer is a good one using the Environment Changing/Changed events to modify your settings without restarts, but I think perhaps a better method is for you to use an exponential back-off policy to make your polling more efficient. By having the code behavior smarter on it's own you will reduce how often you are in there tweaking it. Remember that each time you update these environment settings it has to be rolled out to all of the instances, which can take a little time depending on how many instances you have running. Also, you are putting a step in here that a human has to be involved.
You are using Windows Azure Storage Queues which means each time your GetMessages(s) executes it's making a call to the service and retrieving 0 or more messages (up to your MessageGetLimit). Each time it asks for that you'll get charged a transaction. Now, understand that transactions are really cheap. Even 100,000 transactions a day is $0.01/day. However, don't underestimate the speed of a loop. :) You may get more throughput than that and if you have multiple worker role instances this adds up (though will still be a really small amount of money compared to actually running the instances themselves).
A more efficient path would be to put in an exponential backoff approach to reading your messages off the queue. Check out this post by Maarten on a simple example: http://www.developerfusion.com/article/120619/advanced-scenarios-with-windows-azure-queues/. Couple a back off approach with an auto-scaling of the worker roles based on queue depth and you'll have a solution that relies less on a human adjusting settings. Put in minimum and maximum values for instance counts, adjust the numbers of messages to pull based on how many times a message has been present the very next time you ask for one, etc. There are a lot of options here that will reduce your involvement and have an efficient system.
Also, you might look at Windows Azure Service Bus Queues in that they implement long polling, so it results in much fewer transactions while waiting for work to hit the queue.