Attributing to interactions with GCPD and GWPD

post by jenny · 2023-10-11T15:06:16.806Z · LW · GW · 0 comments

Contents

  Intro
  Summary
  Background: attribution via interventions
  FAQ
    What’s the relevance for alignment?
    What’s the relevance for interpretability more broadly?
    Why should I care if I don’t think interactions are likely to matter, on priors?
    Do interactions actually show up in practice?
      Example of interaction: redundancy
      Example of interaction: qualitatively different behavior
    There are so many interactions, measuring all of them would be really expensive. Can I cheaply check for interactions without being quite so rigorous?
  Intuition and overview of attribution framework
    A worked example
    Attribution as function approximation[4]
  Our contribution
  Appendix
    Future post: cumulant propagation
    Average interaction
None
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This post provides background, motivation, and a nontechnical summary of the purely mathematical https://arxiv.org/abs/2310.06686.

Coauthors (alphabetical): Chris MacLeod, Jenny Nitishinskaya, Buck Shlegeris. Work done mostly while at Redwood Research. Thanks to Joe Benton and Ryan Greenblatt for some math done previously. Thanks to Neel Nanda, Fabien Roger, Nix Goldowsky-Dill, and Jacob Hilton for feedback on various parts of this work.

Intro

In interpretability (and more generally in model understanding or model neuroscience) people care about measuring the effect on the model’s behavior from multiple inputs or components[1] (such as heads) and identifying which ones are important. This is called attribution.

Suppose we’ve done attribution to two different parts of the model. Intuitively, something very different is going on if these two parts are also importantly interacting than if they aren’t! In this post we consider the question: what is a principled interpretability framework for attributing to the interaction between inputs or components?

Summary

Background: attribution via interventions

Recall that we have a way to do attribution to model inputs (or components): tweak 1 part of the input while keeping the others the same. For example, to see how much a token in the input mattered, we can ablate that token and see how the model’s output changes.

In this post we are going to be talking in terms of resample ablation and taking expectations of the output over some distribution of your choice: for more info on why, see the causal scrubbing writeup [AF · GW].

FAQ

What’s the relevance for alignment?

NB this section is brief and elides a lot of detail, but this post felt incomplete without mentioning why the authors were interested in this direction.

We expect that when aligning superhuman systems, we may need models to do some amount of generalization and handle some distribution shifts, while some anomalies/shifts may be unsafe (we’re including thinking about mechanistic [AF · GW] anomalies as well as input/output anomalies).

Suppose we performed attribution to the inputs of our model on a thoroughly-supervised distribution. Now we are running it in deployment, and want to tell if the model’s behavior on new data is safe. We again run our attribution calculation, and find that it is a bit different (perhaps a bit higher to one input and a bit lower to another). How do we tell whether this is okay? One way might be to measure whether there is novel interaction: this would be something qualitatively different from what we had seen before.

One example where interaction specifically may be important is for detecting collusion: we’re often thinking of the ELK [AF · GW] setup, where the model intentionally deceiving the oversight process manifests as a surprising interaction between components of the model reasoning about the outcomes we will oversee.

What’s the relevance for interpretability more broadly?

A precise, principled framework [AF · GW] for the terms that might be important for a model behavior is useful for crisply stating interpretability hypotheses. This is great for comparing results of different experiments; as well as for automated hypothesis search, reducing the need for experimenter judgement in which additional attributions should be measured.

We think this framework is also just healthy to have in mind. When investigating your model behavior of interest, it’s important to remember that “the action” doesn’t have to flow through any one input you are considering. This is most obvious if you search over all [heads, input tokens, etc.] and don’t find a responsible one. In other cases, you might find some effect but miss some important pieces. If you are not already thinking of interactions as potentially important, it can be harder to notice what you are missing.

Why should I care if I don’t think interactions are likely to matter, on priors?

There is generally[2] some interaction of the multiple “bits” you are considering. If you think interactions don’t matter and you want to be thorough, then you should check that these are small.

Do interactions actually show up in practice?

Example of interaction: redundancy

It’s obvious that multiple inputs to a computation may be redundant for the task at hand: resample-ablating (or masking out, or any other ablation) any one of them has no effect, but ablating all of them would have a large effect! Consider classifying whether a sentence is in French: if you replace just one word with a word from an english sentence, the classifier will still say it is in French with very high probability (assuming the sentence is long enough). The different inputs (tokens) are redundant for the model behavior.

Model components can also be redundant: small transformers exhibit [AF · GW] multiple heads that substantially copy the previous token into a different subspace, while the interpretability in the wild paper [AF · GW] (from here on referred to as the IOI paper) showed redundant “name mover heads”. In both cases, many heads at least partially do the same job.

Example of interaction: qualitatively different behavior

In other cases, the interaction between inputs may be more complex, where the response to one is conditional on another. A basic example is XOR: if the input is (1, 0), then the attribution to y is positive (changing y would decrease the output) while if the input is (0, 0) then the attribution to y is negative!

In LLMs, one example is backup name mover heads from the IOI paper: these seem to perform the name-mover task only when the “primary” name mover heads are not performing it!

There are so many interactions, measuring all of them would be really expensive. Can I cheaply check for interactions without being quite so rigorous?

It’s sometimes possible to estimate interaction without computing it explicitly. For example, suppose you identified previous-token heads by e.g. examining attention patterns. You could ablate a set of these heads and see if the resulting change in the output is equal to the sum of the changes when ablating a single one at a time. If it is, then either there are no interactions between them, or all the interactions (approximately) cancel out. If it’s not, then there is some interaction between the heads, though you don’t know which ones.

In the IOI paper, the authors didn’t measure the backup-name-mover/name-mover interaction explicitly: instead they performed some experiments[3] that showed that there was some interaction.

We’re excited about the principled framework we present and its applications, but if you don’t wish to adopt it, we hope you are still aware of interaction effects and know to estimate them.

Intuition and overview of attribution framework

Let’s review how we attribute to a particular input  to the output of a function  (in expectation over performing resample ablation). We can think of it as follows:

The amount that  matters =
however much of the value of  was not explained by taking into account the general behavior of  on the input distribution 

Let’s consider some simple cases. If  is a constant function, the attribution to  is 0. If it’s the identity, then the attribution to  is just how extremal  is with respect to the distribution: .

Now suppose f is a function of two variables,  and . We have two inputs,  and , which happen to be redundant for a computation (such as two words in a French sentence that  is classifying the language of). The experiment to do here is obvious—ablate both of them and see how the output of  changes—but how do we quantify the irreducible amount the interaction matters?

The amount the interaction of  and  matters =
however much of the value of  was not explained by taking into account:
        the general behavior of  on the input distribution 
        the general behavior of  conditional on : what would you expect the output of  to be, knowing nothing about ?
        the general behavior of  conditional on 

Again, if  is a constant function, any attribution (including to the interaction of  and ) is 0. If it’s linear, e.g. , then we expect this attribution should be 0 as well: there is nothing interesting about the combination of  and .

A worked example

We’ll work out the math for the two-variable function . Recall that we have inputs  and want to attribute to parts of this input.

We could resample-ablate the entire input to contextualize it in the dataset:

This is just like the single-input attribution in the previous section: we’re measuring how extremal the value of  on this input is, compared to its average value.

We could resample-ablate just  to see how much  mattered:

Note that if  is 0, the above expression is 0. This makes sense: at that  does not matter at all.

We could also ask the above for the average :

What about the interaction of  and ? Recall we said that the amount the interaction matters is:

however much of the value of f was not explained by:
        the baseline average of f over all inputs
        how much x0 matters for the average y
        how much y0 matters for the average x
i.e.:
 

This known as the Wick product. The last form we’ve written this in is quite intuitive: how much are  and  “more together” than you would expect from the covariance of the underlying distributions?

But nothing here depended on  computing the product! We can compute the same thing for any  with two (or more!) inputs.

We can see that if  is linear, this attribution is 0. This is what we intuitively expected!

Attribution as function approximation[4]

In the example above, the interaction was the missing piece needed to fully describe the behavior of f. That is, if we denote an attribution term with ,[5] then

We can think of attributing to  as a term in a decomposition of , and a hypothesis that some inputs or interactions between them don’t matter as a statement that neglecting them is a good approximation to .

From this expression we can clearly see that the terms corresponding to separate inputs, or even all the inputs together, are not all the terms needed to describe the model’s behavior.

Our contribution

We’ve argued that interaction terms can be important, and how we should measure them. What would you do to use this in practice?

In the linked arXiv post, we have

Appendix

Future post: cumulant propagation

We can translate ARC’s cumulant propagation algorithm on arithmetic circuits into computing a set of attributions. Maybe we’ll write this up.

Average interaction

In this post, we talked about attribution at a fixed reference input . In the linked writeup, we also cover measuring the interaction of X and Y on average:

Note this is a generalization of the notion of covariance: if  is just the product function, this is the covariance between  and . We call  the Generalized Cumulant Product (GCP). We can write the expectation of  as a sum of GCPs, and this form is the Generalized Cumulant Product Decomposition (GCPD):

  1. ^

    Note that components can be seen as just multiple inputs to a treefied model. e.g. as in the IOI paper. We’ll mostly talk about attributing to inputs for ease of language.

  2. ^

    The interaction is always 0 if your model is completely linear, or otherwise has no cross-terms.

  3. ^

    In the notation of our paper, they computed something like . They found this was large, i.e. the generalized-covariance between X (the input to the name-mover heads) and Y (the input to the backup-name-mover heads) is large. Though, they performed resample ablation on  and knockout on .

  4. ^
  5. ^

    We call this the Generalized Wick Product (GWP) and the form of  the Generalized Wick Product Decomposition (GWPD) (though technically the terms are expectations of GWPs).

  6. ^

    Probably not performant for high-order terms, for which memoization would be helpful. But the second-order interaction is easy to compute and you can probably do it today.

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