211 lines
9.8 KiB
Markdown
211 lines
9.8 KiB
Markdown
Relative values for animal suffering and ACE Top Charities
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tl;dr: I present relative estimates for animal suffering and 2022 top Animal Charity Evaluators (ACE) charities. I am doing this to showcase a new tool from the Quantified Uncertainty Research Institute (QURI) and to present an alternative to ACE's current rubric-based approach.
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### Introduction and goals
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At QURI, we're experimenting with using relative values to estimate the worth of various items and interventions. Instead of basing value on a specific unit, we ask how valuable each item in a list is, compared to each other item. You can see an overview of this approach [here](https://forum.nunosempere.com/posts/EFEwBvuDrTLDndqCt/relative-value-functions-a-flexible-new-format-for-value).
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In this context, I thought it would be meaningful to estimate some items in animal welfare and suffering. I estimated the value of a few a few animal quality-adjusted life-years—fish, chicken, pigs and cows—relative to each other. Then I using those, I estimated the value of top and standout charities as chosen by ACE (Animal Charity Evaluators) in 2022.
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This exercise might perhaps be useful to ACE, not necessarily from the estimates themselves, which are admittedly mediocre, but rather by considering these estimates as a potential template for evaluating the value of uncertain interventions outside of global health and development.
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![](https://images.nunosempere.com/blog/2023/05/29/estimation-mountain.png)
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### Link to the model
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You can view these relative estimates [here](https://relative-values-git-animals-2023-04-quantified-uncertainty.vercel.app/interfaces/relative-values-animals-2023-04/models/relative-values-animals-2023-04) ([a](https://web.archive.org/web/20230529163148/https://relative-values-git-animals-2023-04-quantified-uncertainty.vercel.app/interfaces/relative-values-animals-2023-04/models/relative-values-animals-2023-04)). The app in which they live has different views:
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A view showing all of the estimates compared to each other:
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![](https://images.nunosempere.com/blog/2023/05/29/relative-app-1.png)
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A view showing items’ values compared to one reference item:
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![](https://images.nunosempere.com/blog/2023/05/29/relative-app-2.png)
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There is also a view plotting [uncertainty vs value](https://relative-values-git-animals-2023-04-quantified-uncertainty.vercel.app/interfaces/relative-values-animals-2023-04/models/relative-values-animals-2023-04/plot), and a view showing [the underlying code](https://relative-values-git-animals-2023-04-quantified-uncertainty.vercel.app/interfaces/relative-values-animals-2023-04/models/relative-values-animals-2023-04/edit), which is editable (though slow).
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### Discussion
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#### Expected quality of the model
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I expect these estimates to have numerous flaws. Previously, I worked on an aggregator for forecasts called Metaforecast, as part of which I assigned a “stars rating” to quickly signal the expected quality of probabilities from different platforms. If I applied that same rating here, these estimates would have a stars quality rating of one out of five possible stars, at most.
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One key insufficiency of these estimates is that they estimate what I personally value after a short amount of reflection. They don't necessarily represent what the entire Effective Altruism community or any particular philosophical viewpoint might value after in-depth reflection. I chose this approach mainly for efficiency. Future iterations might adopt a more sophisticated approach, such as allowing users to input their own values, or selecting from several philosophical perspectives, or aggregating them.
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### Methodology
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I came up with these estimates in three steps:
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1. Estimated the Quality-Adjusted Life Years (QALYs) value of a few animal species
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2. Mechanistically estimated the value of three reference charities, in terms of QALYs for the species valued in step 1
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3. Estimated the value of the remaining charities in terms of the reference charities in step 2.
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#### Estimating relative value of animal QALYs
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I started by estimating the relative value of a QALY for a few animal species. Then I derived estimates for QALY per kilogram and QALYs per calorie, which could later be useful for improving calculators like [this one](https://foodimpacts.org/).
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Here is an example for cows:
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```
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// Add human QALY as a reference point
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one_human_qaly = {
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id: "one_human_qaly",
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name: "1 human QALY (quality-adjusted life-year)",
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value: normal(1, 0.01)
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}
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// Cows
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value_happy_cow_year = 0.05 to 0.3
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// ^ in human qalys
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value_tortured_cow_year = -(0.1 to 2)
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value_farmed_cow_year = normal({ p10: -0.2, p90: 0.1 })
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// ^ purely subjective estimates
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// the thing is, it doesn't seem that unlikely to me
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// that cows do lead net positive lives
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weight_cow = mixture([450 to 1800, 360 to 1100], [1/2,1/2])
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non_wastage_proportion_cow = (0.5 to 0.7) -> ss // should be a beta.
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lifetime_cow = (30 to 42) / 12
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calories_cow = mixture(0.8M to 1.4M, (500k to 700k) * (weight_cow * non_wastage_proportion_cow)/1000)
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// ^ kilocalories, averaging two estimates from
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// <https://www.reddit.com/r/theydidthemonstermath/comments/a8ha9r/how_many_calories_are_in_a_whole_cow/>
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cow_estimates = {
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name: "cow",
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value_year: value_farmed_cow_year -> ss,
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weight: weight_cow,
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calories: calories_cow,
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lifetime: lifetime_cow -> ss
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}
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```
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#### Coming up with mechanistic estimates for three reference projects
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I then looked at three reference projects for which I thought a mechanistic estimate might be feasible: the Fish Welfare Initiative (FWI), Beyond Burgers, and the Open Wing Alliance. For each of those projects, I estimated how many specific animals did they affect, and by how much, and arrived at a wide subjective estimate of their impact.
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For example, in the case of FWI I looked at their impact page for the number of animals they probably have helped. I then came up with an uncertain estimate for how much they had helped each animal. I took various shortcuts, for example, I pretended that the fish which FWI helped were salmon, because details about their life expectancy and caloric content were easy and quick to look up online. In fact, I expect the vast majority of fish that FWI helps to not be salmon, but I don't expect the difference to matter all that much when estimating total impact.
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Here is how my estimate for the Fish Welfare Initiative looks:
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```
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fish_potentially_helped = 1M to 2M
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shrimp_potentially_helped = 1M to 2M
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improvement_as_proportion_of_lifetime = (0.05 to 0.5) -> ss
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sign_flip_to_denote_improvement(x) = -x
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value_fwi_fish = (
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fish_potentially_helped *
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improvement_as_proportion_of_lifetime *
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(
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salmon_estimates.value_year /
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Salmon_estimates.lifetime
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)
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) -> sign_flip_to_denote_improvement
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value_of_shrimp_in_fish = (0.3 to 1)
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// ^ very uncertain, subjective
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value_fwi_shrimp = (
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shrimp_potentially_helped *
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improvement_as_proportion_of_lifetime *
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(
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salmon_estimates.value_year /
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Salmon_estimates.lifetime
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) *
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value_of_shrimp_in_fish
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) -> sign_flip_to_denote_improvement
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value_fwi_so_far = value_fwi_fish + value_fwi_shrimp
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proportion_fwi_in_2022 = 1/4 to 1/2
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value_fwi = value_fwi_so_far * proportion_fwi_in_2022
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fwi_item = {
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name: "Fish Welfare Initiative",
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year: 2022,
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slug: "fish_welfare_initiative",
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value: value_fwi -> ss
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}
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```
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#### Estimating other charities in terms of the reference projects
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I estimated the value of the remaining projects in terms of the previous three. For example, here is my estimate of the Good Food Institute:
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```
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value_reference_top_animal_org = mixture(
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[
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fwi_value,
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open_wing_alliance_value,
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beyond_meat_value/(10 to 1k)
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// ^ beyond meat seems significantly more scaled up than the avg org working to affect cows
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],
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[ 1/3, 1/3, 1/3 ]
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) -> SampleSet.fromDist
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beyond_meat_equivalents_gfi = 0.01 to 2
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value_gfi = mixture(
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[
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beyond_meat_equivalents_gfi * beyond_meat_item.value,
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value_reference_top_animal_org
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],
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[ 2/3, 1/3 ]
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)
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```
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and here is my estimate for Compassion USA:
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```
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value_compassion_usa = mixture(
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[
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open_wing_alliance_value *
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truncateRight(0.05 to 10, 100),
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value_reference_top_animal_org *
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truncate(0.05 to 10, 100)
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],
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[ 1/2, 1/2 ]
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)
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```
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#### A comment on maintaining correlations
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These estimates are written in Squiggle, which aims to make it easy to do relative values through its functionality around sample sets. For example,
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```
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x = SampleSet.fromDist(1 to 100)
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y = 2 * x y/x
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// ^ is a distribution which is 2 everywhere
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or
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x = SampleSet.fromDist(1 to 100)
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y = SampleSet.fromDist(2 to 200)
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z = x * y (z/x) / y
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// ^ is one everywhere
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```
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I’ve usually shortened SampleSet.fromDist to just “ss.”
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As a note of caution, note that maintaining correlations while having mixtures of different distributions is more tricky.
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### Conclusion
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This post presents a model that starts with very rough estimates of the value of several types of animal suffering. It then uses these to build up mechanistic estimates of a few animal charities, and then uses those mechanistic estimates to give a guess as to the impact of all top ACE charities in 2022.
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The motives for doing that were:
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- To showcase some tooling recently built at QURI
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- To show one possible path for having quantified estimates for speculative projects—as opposed to the rubric-based approach that organizations like ACE or Charity Entrepreneurship use.
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### Acknowledgements
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<p><img src="https://images.nunosempere.com/quri/logo.png" style="width: 20%;">
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<br>
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This is a project of the Quantified Uncertainty Research Institute, from which I've since then taken a leave of absence. Thanks to Ozzie Gooen and Holly Elmore for their feedback.
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<p>
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<section id='isso-thread'>
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<noscript>Javascript needs to be activated to view comments.</noscript>
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</section>
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</p>
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