Artificial Neural Networks (ANNs) are based around the backpropagation algorithm. The backpropagation algorithm allows you to perform gradient descent on a network of neurons. When we feed training data through an ANNs, we use the backpropagation algorithm to tell us how the weights should change.
ANNs are good at inference problems. Biological Neural Networks (BNNs) are good at inference too. ANNs are built out of neurons. BNNs are built out of neurons too. It makes intuitive sense that ANNs and BNNs might be running similar algorithms.
There is just one problem: BNNs are physically incapable of running the backpropagation algorithm.
We do not know quite enough about biology to say it is impossible for BNNs to run the backpropagation algorithm. However, "a consensus has emerged that the brain cannot directly implement backprop, since to do so would require biologically implausible connection rules"[1].
The backpropagation algorithm has three steps.
- Flow information forward through a network to compute a prediction.
- Compute an error by comparing the prediction to a target value.
- Flow the error backward through the network to update the weights.
The backpropagation algorithm requires information to flow forward and backward along the network. But biological neurons are one-directional. An action potential goes from the cell body down the axon to the axon terminals to another cell's dendrites. An axon potential never travels backward from a cell's terminals to its body.
Hebbian theory
Predictive coding is the idea that BNNs generate a mental model of their environment and then transmit only the information that deviates from this model. Predictive coding considers error and surprise to be the same thing. Hebbian theory is specific mathematical formulation of predictive coding.
Predictive coding is biologically plausible. It operates locally. There are no separate prediction and training phases which must be synchronized. Most importantly, it lets you train a neural network without sending axon potentials backwards.
Predictive coding is easier to implement in hardware. It is locally-defined; it parallelizes better than backpropagation; it continues to function when you cut its substrate in half. (Corpus callosotomy is used to treat epilepsy.) Digital computers break when you cut them in half. Predictive coding is something evolution could plausibly invent.
Unification
The paper Predictive Coding Approximates Backprop Along Arbitrary Computation Graphs[1:1] "demonstrate[s] that predictive coding converges asymptotically (and in practice rapidly) to exact backprop gradients on arbitrary computation graphs using only local learning rules." The authors have unified predictive coding and backpropagation into a single theory of neural networks. Predictive coding and backpropagation are separate hardware implementations of what is ultimately the same algorithm.
There are two big implications of this.
- This paper permanently fuses artificial intelligence and neuroscience into a single mathematical field.
- This paper opens up possibilities for neuromorphic computing hardware.
Source is available on arxiv. ↩︎ ↩︎
You guys will probably find this Slate Star Codex post interesting:
https://slatestarcodex.com/2017/09/05/book-review-surfing-uncertainty/
Scott summarizes the Predictive Processing theory, explains it in a very accessible way (no math required), and uses it to explain a whole bunch of mental phenomena (attention, imagination, motor behavior, autism, schizophrenia, etc.)
Can someone ELI5/TLDR this paper for me, explain in a way more accessible to a non-technical person?
- How does backprop work if the information can't flow backwards?
- In Scotts post, he says that when lower-level sense data contradicts high-level predictions, high-level layers can override lower-level predictions without you noticing it. But if low-level sensed data has high confidence/precision - the higher levels notice it and you experience "surprise". Which one of those is equivalent to the backdrop error? Is it low-level predictions being overridden, or high-level layers noticing the surprise, or something else, like changing the connections between neurons to train the network and learn from the error somehow?
TLDR for this paper: There is a separate set of 'error' neurons that communicate backwards. Their values converge on the appropriate back propagation terms.
A large error at the top levels corresponds to 'surprise', while a large error at the lower levels corresponds more to the 'override'.