Sunday, May 24, 2026

Posit AI Weblog: Infinite shock

Amongst deep studying practitioners, Kullback-Leibler divergence (KL divergence) is maybe finest recognized for its function in coaching variational autoencoders (VAEs). To be taught an informative latent house, we don’t simply optimize for good reconstruction. Slightly, we additionally impose a previous on the latent distribution, and purpose to maintain them shut – usually, by minimizing KL divergence.

On this function, KL divergence acts like a watchdog; it’s a constraining, regularizing issue, and if anthropomorphized, would appear stern and extreme. If we depart it at that, nevertheless, we’ve seen only one aspect of its character, and are lacking out on its complement, an image of playfulness, journey, and curiosity. On this publish, we’ll check out that different aspect.

Whereas being impressed by a collection of tweets by Simon de Deo, enumerating functions of KL divergence in an enormous variety of disciplines,

we don’t aspire to supply a complete write-up right here – as talked about within the preliminary tweet, the subject may simply fill an entire semester of research.

The way more modest targets of this publish, then, are

  1. to shortly recap the function of KL divergence in coaching VAEs, and point out similar-in-character functions;
  2. for instance that extra playful, adventurous “different aspect” of its character; and
  3. in a not-so-entertaining, however – hopefully – helpful method, differentiate KL divergence from associated ideas comparable to cross entropy, mutual info, or free power.

Earlier than although, we begin with a definition and a few terminology.

KL divergence in a nutshell

KL divergence is the anticipated worth of the logarithmic distinction in possibilities in accordance with two distributions, (p) and (q). Right here it’s in its discrete-probabilities variant:

[begin{equation}
D_{KL}(p||q) = sumlimits_{x} p(x) log(frac{p(x)}{q(x)})
tag{1}
end{equation}]

Notably, it’s uneven; that’s, (D_{KL}(p||q)) shouldn’t be the identical as (D_{KL}(q||p)). (Which is why it’s a divergence, not a distance.) This side will play an necessary function in part 2 devoted to the “different aspect.”

To emphasize this asymmetry, KL divergence is typically known as relative info (as in “info of (p) relative to (q)”), or info achieve. We agree with certainly one of our sources that due to its universality and significance, KL divergence would in all probability have deserved a extra informative identify; comparable to, exactly, info achieve. (Which is much less ambiguous pronunciation-wise, as properly.)

KL divergence, “villain”

In lots of machine studying algorithms, KL divergence seems within the context of variational inference. Typically, for real looking information, precise computation of the posterior distribution is infeasible. Thus, some type of approximation is required. In variational inference, the true posterior (p^*) is approximated by a less complicated distribution, (q), from some tractable household.
To make sure we now have a superb approximation, we reduce – in concept, not less than – the KL divergence of (q) relative to (p^*), thus changing inference by optimization.

In apply, once more for causes of intractability, the KL divergence minimized is that of (q) relative to an unnormalized distribution (widetilde{p})

[begin{equation}
J(q) = D_{KL}(q||widetilde{p})
tag{2}
end{equation}]

the place (widetilde{p}) is the joint distribution of parameters and information:

[begin{equation}
widetilde{p}(mathbf{x}) = p(mathbf{x}, mathcal{D}) = p^*(mathbf{x}) p(mathcal{D})
tag{3}
end{equation}]

and (p^*) is the true posterior:

[begin{equation}
p^*(mathbf{x}) = p(mathbf{x}|mathcal{D})
tag{4}
end{equation}]

Equal to that formulation (eq. (2)) – for a derivation see (Murphy 2012) – is that this, which reveals the optimization goal to be an higher certain on the adverse log-likelihood (NLL):

[begin{equation}
J(q) = D_{KL}(q||p^*) – log p(D)
tag{5}
end{equation}]

Yet one more formulation – once more, see (Murphy 2012) for particulars – is the one we truly use when coaching (e.g.) VAEs. This one corresponds to the anticipated NLL plus the KL divergence between the approximation (q) and the imposed prior (p):

[begin{equation}
J(q) = D_{KL}(q||p) – E_q[- log p(mathcal{D}|mathbf{x})]
tag{6}
finish{equation}]

Negated, this formulation can also be known as the ELBO, for proof decrease certain. Within the VAE publish cited above, the ELBO was written

[begin{equation}
ELBO = E[log p(x|z)] – KL(q(z)||p(z))
tag{7}
finish{equation}]

with (z) denoting the latent variables ((q(z)) being the approximation, (p(z)) the prior, usually a multivariate regular).

Past VAEs

Generalizing this “conservative” motion sample of KL divergence past VAEs, we are able to say that it expresses the standard of approximations. An necessary space the place approximation takes place is (lossy) compression. KL divergence offers a technique to quantify how a lot info is misplaced after we compress information.

Summing up, in these and related functions, KL divergence is “unhealthy” – though we don’t need it to be zero (or else, why trouble utilizing the algorithm?), we definitely need to maintain it low. So now, let’s see the opposite aspect.

KL divergence, good man

In a second class of functions, KL divergence shouldn’t be one thing to be minimized. In these domains, KL divergence is indicative of shock, disagreement, exploratory habits, or studying: This really is the attitude of info achieve.

Shock

One area the place shock, not info per se, governs habits is notion. For instance, eyetracking research (e.g., (Itti and Baldi 2005)) confirmed that shock, as measured by KL divergence, was a greater predictor of visible consideration than info, measured by entropy. Whereas these research appear to have popularized the expression “Bayesian shock,” this compound is – I feel – not probably the most informative one, as neither half provides a lot info to the opposite. In Bayesian updating, the magnitude of the distinction between prior and posterior displays the diploma of shock led to by the information – shock is an integral a part of the idea.

Thus, with KL divergence linked to shock, and shock rooted within the elementary technique of Bayesian updating, a course of that could possibly be used to explain the course of life itself, KL divergence itself turns into elementary. We may get tempted to see it in every single place. Accordingly, it has been utilized in many fields to quantify unidirectional divergence.

For instance, (Zanardo 2017) have utilized it in buying and selling, measuring how a lot an individual disagrees with the market perception. Increased disagreement then corresponds to increased anticipated positive aspects from betting towards the market.

Nearer to the world of deep studying, it’s utilized in intrinsically motivated reinforcement studying (e.g., (Solar, Gomez, and Schmidhuber 2011)), the place an optimum coverage ought to maximize the long-term info achieve. That is attainable as a result of like entropy, KL divergence is additive.

Though its asymmetry is related whether or not you employ KL divergence for regularization (part 1) or shock (this part), it turns into particularly evident when used for studying and shock.

Asymmetry in motion

Trying once more on the KL system

[begin{equation}
D_{KL}(p||q) = sumlimits_{x} p(x) log(frac{p(x)}{q(x)})
tag{1}
end{equation}]

the roles of (p) and (q) are basically totally different. For one, the expectation is computed over the primary distribution ((p) in (1)). This side is necessary as a result of the “order” (the respective roles) of (p) and (q) might need to be chosen in accordance with tractability (which distribution can we common over).

Secondly, the fraction contained in the (log) implies that if (q) is ever zero at some extent the place (p) isn’t, the KL divergence will “blow up.” What this implies for distribution estimation normally is properly detailed in Murphy (2012). Within the context of shock, it implies that if I be taught one thing I used to assume had likelihood zero, I will likely be “infinitely shocked.”

To keep away from infinite shock, we are able to be sure our prior likelihood is rarely zero. However even then, the attention-grabbing factor is that how a lot info we achieve in anybody occasion will depend on how a lot info I had earlier than. Let’s see a easy instance.

Assume that in my present understanding of the world, black swans in all probability don’t exist, however they may … possibly 1 % of them is black. Put in another way, my prior perception of a swan, ought to I encounter one, being black is (q = 0.01).

Now the truth is I do encounter one, and it’s black.
The data I’ve gained is:

[begin{equation}
l(p,q) = 0 * log(frac{0}{0.99}) + 1 * log(frac{1}{0.01}) = 6.6 bits
tag{8}
end{equation}]

Conversely, suppose I’d been way more undecided earlier than; say I’d have thought the chances have been 50:50.
On seeing a black swan, I get quite a bit much less info:

[begin{equation}
l(p,q) = 0 * log(frac{0}{0.5}) + 1 * log(frac{1}{0.5}) = 1 bit
tag{9}
end{equation}]

This view of KL divergence, when it comes to shock and studying, is inspiring – it may lead one to seeing it in motion in every single place. Nonetheless, we nonetheless have the third and last process to deal with: shortly evaluate KL divergence to different ideas within the space.

Entropy

All of it begins with entropy, or uncertainty, or info, as formulated by Claude Shannon.
Entropy is the typical log likelihood of a distribution:

[begin{equation}
H(X) = – sumlimits_{x=1}^n p(x_i) log(p(x_i))
tag{10}
end{equation}]

As properly described in (DeDeo 2016), this formulation was chosen to fulfill 4 standards, certainly one of which is what we generally image as its “essence,” and certainly one of which is particularly attention-grabbing.

As to the previous, if there are (n) attainable states, entropy is maximal when all states are equiprobable. E.g., for a coin flip uncertainty is highest when coin bias is 0.5.

The latter has to do with coarse-graining, a change in “decision” of the state house. Say we now have 16 attainable states, however we don’t actually care at that degree of element. We do care about 3 particular person states, however all the remainder are mainly the identical to us. Then entropy decomposes additively; whole (fine-grained) entropy is the entropy of the coarse-grained house, plus the entropy of the “lumped-together” group, weighted by their possibilities.

Subjectively, entropy displays our uncertainty whether or not an occasion will occur. Curiously although, it exists within the bodily world as properly: For instance, when ice melts, it turns into extra unsure the place particular person particles are. As reported by (DeDeo 2016), the variety of bits launched when one gram of ice melts is about 100 billion terabytes!

As fascinating as it’s, info per se might, in lots of circumstances, not be the very best technique of characterizing human habits. Going again to the eyetracking instance, it’s utterly intuitive that folks take a look at stunning elements of photographs, not at white noise areas, that are the utmost you might get when it comes to entropy.

As a deep studying practitioner, you’ve in all probability been ready for the purpose at which we’d point out cross entropy – probably the most generally used loss operate in categorization.

Cross entropy

The cross entropy between distributions (p) and (q) is the entropy of (p) plus the KL divergence of (p) relative to (q). When you’ve ever carried out your personal classification community, you in all probability acknowledge the sum on the very proper:

[begin{equation}
H(p,q) = H(p) + D_{KL}(p||q) = – sum p log(q)
tag{11}
end{equation}]

In info theory-speak, (H(p,q)) is the anticipated message size per datum when (q) is assumed however (p) is true.
Nearer to the world of machine studying, for fastened (p), minimizing cross entropy is equal to minimizing KL divergence.

Mutual info

One other extraordinarily necessary amount, utilized in many contexts and functions, is mutual info. Once more citing DeDeo, “you’ll be able to consider it as probably the most basic type of correlation coefficient that you would be able to measure.”

With two variables (X) and (Y), we are able to ask: How a lot can we find out about (X) after we find out about a person (y), (Y=y)? Averaged over all (y), that is the conditional entropy:

[begin{equation}
H(X|Y) = – sumlimits_{i} P(y_i) log(H(X|y_i))
tag{12}
end{equation}]

Now mutual info is entropy minus conditional entropy:

[begin{equation}
I(X, Y) = H(X) – H(X|Y) = H(Y) – H(Y|X)
tag{13}
end{equation}]

This amount – as required for a measure representing one thing like correlation – is symmetric: If two variables (X) and (Y) are associated, the quantity of knowledge (X) offers you about (Y) is the same as that (Y) offers you about (X).

KL divergence is a part of a household of divergences, known as f-divergences, used to measure directed distinction between likelihood distributions. Let’s additionally shortly look one other information-theoretic measure that in contrast to these, is a distance.

Jensen-Shannon distance

In math, a distance, or metric, moreover being non-negative has to fulfill two different standards: It should be symmetric, and it should obey the triangle inequality.

Each standards are met by the Jensen-Shannon distance. With (m) a mix distribution:

[begin{equation}
m_i = frac{1}{2}(p_i + q_i)
tag{14}
end{equation}]

the Jensen-Shannon distance is a mean of KL divergences, certainly one of (m) relative to (p), the opposite of (m) relative to (q):

[begin{equation}
JSD = frac{1}{2}(KL(m||p) + KL(m||q))
tag{15}
end{equation}]

This may be an excellent candidate to make use of have been we considering (undirected) distance between, not directed shock brought on by, distributions.

Lastly, let’s wrap up with a final time period, limiting ourselves to a fast glimpse at one thing complete books could possibly be written about.

(Variational) Free Power

Studying papers on variational inference, you’re fairly prone to hear folks speaking not “simply” about KL divergence and/or the ELBO (which as quickly as you already know what it stands for, is simply what it’s), but additionally, one thing mysteriously known as free power (or: variational free power, in that context).

For sensible functions, it suffices to know that variational free power is adverse the ELBO, that’s, corresponds to equation (2). However for these , there may be free power as a central idea in thermodynamics.

On this publish, we’re primarily considering how ideas are associated to KL divergence, and for this, we comply with the characterization John Baez offers in his aforementioned speak.

Free power, that’s, power in helpful type, is the anticipated power minus temperature instances entropy:

[begin{equation}
F = [E] -T H
tag{16}
finish{equation}]

Then, the additional free power of a system (Q) – in comparison with a system in equilibrium (P) – is proportional to their KL divergence, that’s, the knowledge of (Q) relative to (P):

[begin{equation}
F(Q) – F(P) = k T KL(q||p)
tag{17}
end{equation}]

Talking of free power, there’s additionally the – not uncontroversial – free power precept posited in neuroscience.. However in some unspecified time in the future, we now have to cease, and we do it right here.

Conclusion

Wrapping up, this publish has tried to do three issues: Having in thoughts a reader with background primarily in deep studying, begin with the “recurring” use in coaching variational autoencoders; then present the – in all probability much less acquainted – “different aspect”; and eventually, present a synopsis of associated phrases and their functions.

When you’re considering digging deeper into the numerous varied functions, in a variety of various fields, no higher place to begin than from the Twitter thread, talked about above, that gave rise to this publish. Thanks for studying!

DeDeo, Simon. 2016. “Data Concept for Clever Individuals.”

Friston, Karl. 2010. “Friston, ok.j.: The Free-Power Precept: A Unified Mind Concept? Nat. Rev. Neurosci. 11, 127-138.” Nature Opinions. Neuroscience 11 (February): 127–38. https://doi.org/10.1038/nrn2787.
Itti, Laurent, and Pierre Baldi. 2005. “Bayesian Shock Attracts Human Consideration.” In Advances in Neural Data Processing Programs 18 [Neural Information Processing Systems, NIPS 2005, December 5-8, 2005, Vancouver, British Columbia, Canada], 547–54. http://papers.nips.cc/paper/2822-bayesian-surprise-attracts-human-attention.

Murphy, Kevin. 2012. Machine Studying: A Probabilistic Perspective. MIT Press.

Solar, Yi, Faustino J. Gomez, and Juergen Schmidhuber. 2011. “Planning to Be Shocked: Optimum Bayesian Exploration in Dynamic Environments.” CoRR abs/1103.5708. http://arxiv.org/abs/1103.5708.

Zanardo, Enrico. 2017. “HOW TO MEASURE DISAGREEMENT ?” In.


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