What are the most common strategies for having variable-length input in a feed-forward neural network?
To be more specific, consider the following hypothetical scenario:
- I've got a car with four sensors, two on the left (proximity and color) and two on the right (also proximity and color).
- There are two actuators (suppose left and right).
- I've successfully trained a neural network to correlate two sets of inputs (4 neurons proximity/color) over the set of outputs (2 neurons for direction).
Now the question is, how do I scale it for:
- A fixed upper-bound of same type sensors/actuators (say, 50); or even
- An arbitrary amount of sensors/actuators?
P.S.: My gut-feeling is that I would need a form of making neural-networks to compose, but I don't have the slightest idea of where to start.