Beyond automated differentiation – Google AI Blog

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Beyond automated differentiation – Google AI Blog


Derivatives play a central function in optimization and machine studying. By domestically approximating a coaching loss, derivatives information an optimizer towards decrease values of the loss. Automatic differentiation frameworks resembling TensorFlow, PyTorch, and JAX are a vital a part of trendy machine studying, making it possible to make use of gradient-based optimizers to coach very complicated fashions.

But are derivatives all we want? By themselves, derivatives solely inform us how a operate behaves on an infinitesimal scale. To use derivatives successfully, we regularly must know greater than that. For instance, to decide on a studying price for gradient descent, we have to know one thing about how the loss operate behaves over a small however finite window. A finite-scale analogue of automated differentiation, if it existed, might assist us make such selections extra successfully and thereby pace up coaching.

In our new paper “Automatically Bounding The Taylor Remainder Series: Tighter Bounds and New Applications“, we current an algorithm known as AutoBound that computes polynomial higher and decrease bounds on a given operate, that are legitimate over a user-specified interval. We then start to discover AutoBound’s functions. Notably, we current a meta-optimizer known as SafeRate that makes use of the higher bounds computed by AutoBound to derive studying charges which might be assured to monotonically scale back a given loss operate, with out the necessity for time-consuming hyperparameter tuning. We are additionally making AutoBound accessible as an open-source library.

The AutoBound algorithm

Given a operate f and a reference level x0, AutoBound computes polynomial higher and decrease bounds on f that maintain over a user-specified interval known as a belief area. Like Taylor polynomials, the bounding polynomials are equal to f at x0. The bounds turn out to be tighter because the belief area shrinks, and method the corresponding Taylor polynomial because the belief area width approaches zero.

Automatically-derived quadratic higher and decrease bounds on a one-dimensional operate f, centered at x0=0.5. The higher and decrease bounds are legitimate over a user-specified belief area, and turn out to be tighter because the belief area shrinks.

Like automated differentiation, AutoBound may be utilized to any operate that may be carried out utilizing normal mathematical operations. In truth, AutoBound is a generalization of Taylor mode automated differentiation, and is equal to it within the particular case the place the belief area has a width of zero.

To derive the AutoBound algorithm, there have been two foremost challenges we needed to handle:

  1. We needed to derive polynomial higher and decrease bounds for varied elementary features, given an arbitrary reference level and arbitrary belief area.
  2. We needed to provide you with an analogue of the chain rule for combining these bounds.

Bounds for elementary features

For quite a lot of commonly-used features, we derive optimum polynomial higher and decrease bounds in closed kind. In this context, “optimum” means the bounds are as tight as potential, amongst all polynomials the place solely the maximum-diploma coefficient differs from the Taylor collection. Our idea applies to elementary features, resembling exp and log, and customary neural community activation features, resembling ReLU and Swish. It builds upon and generalizes earlier work that utilized solely to quadratic bounds, and just for an unbounded belief area.

Optimal quadratic higher and decrease bounds on the exponential operate, centered at x0=0.5 and legitimate over the interval [0, 2].

A brand new chain rule

To compute higher and decrease bounds for arbitrary features, we derived a generalization of the chain rule that operates on polynomial bounds. To illustrate the concept, suppose we’ve a operate that may be written as

and suppose we have already got polynomial higher and decrease bounds on g and h. How will we compute bounds on f?

The key seems to be representing the higher and decrease bounds for a given operate as a single polynomial whose highest-degree coefficient is an interval relatively than a scalar. We can then plug the certain for h into the certain for g, and convert the consequence again to a polynomial of the identical kind utilizing interval arithmetic. Under appropriate assumptions concerning the belief area over which the certain on g holds, it may be proven that this process yields the specified certain on f.

The interval polynomial chain rule utilized to the features h(x) = sqrt(x) and g(y) = exp(y), with x0=0.25 and belief area [0, 0.5].

Our chain rule applies to one-dimensional features, but additionally to multivariate features, resembling matrix multiplications and convolutions.

Propagating bounds

Using our new chain rule, AutoBound propagates interval polynomial bounds by way of a computation graph from the inputs to the outputs, analogous to forward-mode automated differentiation.

Forward propagation of interval polynomial bounds for the operate f(x) = exp(sqrt(x)). We first compute (trivial) bounds on x, then use the chain rule to compute bounds on sqrt(x) and exp(sqrt(x)).

To compute bounds on a operate f(x), AutoBound requires reminiscence proportional to the dimension of x. For this motive, sensible functions apply AutoBound to features with a small variety of inputs. However, as we’ll see, this doesn’t forestall us from utilizing AutoBound for neural community optimization.

Automatically deriving optimizers, and different functions

What can we do with AutoBound that we could not do with automated differentiation alone?

Among different issues, AutoBound can be utilized to robotically derive problem-specific, hyperparameter-free optimizers that converge from any place to begin. These optimizers iteratively scale back a loss by first utilizing AutoBound to compute an higher certain on the loss that’s tight on the present level, after which minimizing the higher certain to acquire the subsequent level.

Minimizing a one-dimensional logistic regression loss utilizing quadratic higher bounds derived robotically by AutoBound.

Optimizers that use higher bounds on this means are known as majorization-minimization (MM) optimizers. Applied to one-dimensional logistic regression, AutoBound rederives an MM optimizer first printed in 2009. Applied to extra complicated issues, AutoBound derives novel MM optimizers that might be tough to derive by hand.

We can use an identical thought to take an present optimizer resembling Adam and convert it to a hyperparameter-free optimizer that’s assured to monotonically scale back the loss (within the full-batch setting). The ensuing optimizer makes use of the identical replace route as the unique optimizer, however modifies the training price by minimizing a one-dimensional quadratic higher certain derived by AutoBound. We discuss with the ensuing meta-optimizer as SafeRate.

Performance of SafeRate when used to coach a single-hidden-layer neural community on a subset of the MNIST dataset, within the full-batch setting.

Using SafeRate, we are able to create extra strong variants of present optimizers, at the price of a single further ahead go that will increase the wall time for every step by a small issue (about 2x within the instance above).

In addition to the functions simply mentioned, AutoBound can be utilized for verified numerical integration and to robotically show sharper variations of Jensen’s inequality, a elementary mathematical inequality used regularly in statistics and different fields.

Improvement over classical bounds

Bounding the Taylor the rest time period robotically just isn’t a brand new thought. A classical method produces diploma okay polynomial bounds on a operate f which might be legitimate over a belief area [a, b] by first computing an expression for the okayth by-product of f (utilizing automated differentiation), then evaluating this expression over [a,b] utilizing interval arithmetic.

While elegant, this method has some inherent limitations that may result in very unfastened bounds, as illustrated by the dotted blue traces within the determine under.

Quadratic higher and decrease bounds on the lack of a multi-layer perceptron with two hidden layers, as a operate of the preliminary studying price. The bounds derived by AutoBound are a lot tighter than these obtained utilizing interval arithmetic analysis of the second by-product.

Looking ahead

Taylor polynomials have been in use for over 300 years, and are omnipresent in numerical optimization and scientific computing. Nevertheless, Taylor polynomials have important limitations, which may restrict the capabilities of algorithms constructed on prime of them. Our work is a part of a rising literature that acknowledges these limitations and seeks to develop a brand new basis upon which extra strong algorithms may be constructed.

Our experiments to this point have solely scratched the floor of what’s potential utilizing AutoBound, and we imagine it has many functions we’ve not found. To encourage the analysis group to discover such prospects, we’ve made AutoBound accessible as an open-source library constructed on prime of JAX. To get began, go to our GitHub repo.

Acknowledgements

This publish is predicated on joint work with Josh Dillon. We thank Alex Alemi and Sergey Ioffe for invaluable suggestions on an earlier draft of the publish.

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