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What's the best way to implement real time operant conditioning (supervised reward/punishment-based learning) for an agent? Should I use a neural network (and what type)? Or something else?

I want the agent to be able to be trained to follow commands like a dog. The commands would be in the form of gestures on a touchscreen. I want the agent to be able to be trained to follow a path (in continuous 2D space), make behavioral changes on command (modeled by FSM state transitions), and perform sequences of actions.

The agent would be in a simulated physical environment.

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What's the best way.. in the field of AI is seldom a good question. There are a LOT into it, and usually what fits perfectly for one problem is bad for a different one. What exactly are you trying to achieve? What is the agent exactly? What algorithm does it use? ... –  amit Nov 24 '12 at 21:00
    
Thanks amit, I've edited my question. –  Ken Nov 24 '12 at 21:12

1 Answer 1

up vote 2 down vote accepted

Reinforcement Learning is a good machine learning algorithm for your problem.

The basic reinforcement learning model consists of:

  • a set of environment states S (you have a 2d space discretized in some way, which is the dog's current position, if you want to do continuous 2d-space, you might need a neural network to serve as the value function mapper.)
  • a set of actions A ( you mentioned the dog performs sequences of actions, e.g., move, rotate)
  • rules of transitioning between states ( your dog's position transition can be modeled by FSM)
  • rules that determine the scalar immediate reward r of a transition (When reaching the target position, you might want to give the dog a big reward, while small rewards are also welcomed at intermediate milestones)
  • rules that describe what the agent observes. (the dog might have a limited view, for example, only the 4 or 8 neighboring cells are viewable, below figure is an example showing the dog's current position P and the 4 neighboring cells that are viewable to the dog.)

enter image description here

To find the optimal policy, you can start with the model-free technique - q-learning.

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-1 RF is not an algorithm. It's a very general problem definition. Thus it cannot be the answer to this question. –  ziggystar Nov 24 '12 at 22:31
    
Yes, you can say RL is not an algorithm. It's a model, or problem definition. What I am trying to point out is that the OP can use the value-function approach to derive an online algorithm in order to train the agent to learn what are the best actions under various states. This is the core idea of RL, right? –  greeness Nov 24 '12 at 23:11
    
Okay, in that case I should probably use an LSTM neural network. I did a little reading and came across temporal difference learning (en.wikipedia.org/wiki/Temporal_difference), which is a type of reinforcement learning that seems to be what I'm looking for. Thanks! –  Ken Dec 2 '12 at 19:39

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