I am a generalist quantitative researcher. I am open to volunteering and paid work. I welcome suggestions for posts. You can give me feedback here (anonymously or not).
I am open to volunteering and paid work (I usually ask for 20 $/h). I welcome suggestions for posts. You can give me feedback here (anonymously or not).
I can help with career advice, prioritisation, and quantitative analyses.
Hi Toby. Thanks for the relevant post.
For example Kokotajlo’s distribution implies a 28% chance transformative AI will happen during the current presidential term, a 35% chance it will happen in the next term, a 13% chance it will be the one after that, with 24% left over spread among ever more distant terms
There is even more uncertainty in AI Futures' artificial superintelligence (ASI) timelines. The difference between the 90th and 10th percentile is 168 years for Daniel Kokotajlo (2027 to 2195), and 137 years for Eli Lifland (2028 to 2165).
CG's current scaling could still be maximising expected impact if they are correctly assessing the reputational risks of funding EGIs. However, I agree this applies less to small individual donors, and I also suspect the marginal multiplier accounting for all effects of these donors funding EGIs supported by CG is higher than 1.
I wonder whether it would be good for CG to clarify why they do not fund EGIs more. I feel like this would make sense even if the cause was the reputational risks you mentioned, which I believe are broadly seen as understandable.
I am confident that CG running more RFPs, committing multi-year scale-up funding, branching out into diverse initiatives, and other such things with its increased EGI budget allocation is a very clear sign that it believes there is both high impact and absorbency here.
It does not follow from this that funding the EGIs supported by CG is more cost-effective than funding GiveWell? For this to be the case, assuming CG is trying to maximise their impact, one would have to think they should be scaling up their funding of EGIs faster, regardless of how fast they are currently scaling it. If CG's marginal funding of EGIs had a multiplier above 1 accounting for all effects, they would be leaving impact on the table by not scaling up faster.
Even now I think we could scale up faster (and hugely welcome this scale-up post). But I understand that CoGi has a certain amount it wishes to allocate, and its strategy to maximise impact is allocating that in such a way as to create clear high-giving-multiplier funding gaps for other GiveWell-aligned donors to be able to step in and fill.
Are you confident that CG should be increasing the funding of EGIs faster (for example, by using looser funding caps)? If not, can you be confident that funding the EGIs supported by CG is significantly more cost-effective than funding GiveWell?
Do "£5x" and "£5y" refer to the impact accounting for all effects? If so, you are saying that the marginal multiplier accounting for all effects could be greater than the multiplier concerning the total spending accounting for all effects. I think this can only be the case if the organisation fails to allocate funds to the most cost-effective activities (accounting for all effects) 1st.
I still guess the marginal multiplier of the effective giving initiatives (EGIs) funded by Coefficient Giving (CG) is higher than 1, but I would be a bit surprised if it was 5. In this case, CG would be leaving lots of impact on the table by not funding EGIs more. CG is scaling up their funding of EGIs, and should ideally be doing this in the way that maximises impact. For CG's marginal funding of EGIs to have a multiplier of 5, one would have to think they should be scaling up faster. Maybe they should. The altruistic market is not perfectly efficient. However, it is worth having in mind that the multiplier of CG's marginal funding of EGIs may be closer to 1 after accounting for the risks of scaling up too fast. For example, a slower scale up could allow for learning more about which organisations are the most promising. I expect CG to be taking this into account, but mostly informally, not formally in the calculations of the multipliers of their grantees.
Thanks for the helpful example. I strongly upvoted it. I suspected you had something like it in mind. I still think the marginal multiplier of funding EGA at a given time (not across time) accounting for all effects decreases with spending if the organisation allocates funds to the most cost-effective activities 1st. In addition, I believe the marginal multiplier of funding EGA should ideally not change across time. EGA should try to move spending from the years with the lowest marginal multiplier to the years with the highest marginal multiplier, thus increasing the marginal multiplier of the years with the lowest marginal multiplier, and decreasing the marginal multiplier of the years with the highest marginal multiplier, until the marginal multiplier is the same in all years.
In your example, the marginal multiplier of the strategy EGA is scaling up neglecting effects on other strategies increases with spending. It is 4 for 200 k£ of spending, and 6 for 500 k£. However, I believe the marginal multiplier of EGA is not the same as the marginal multiplier of the strategy it is scaling up neglecting effects on other strategies. I would say a signicant fraction of the value of funding EGA while it has a bare-bones website, and scales up social media ads is increasing the probability of EGA shifting to the fancy website. Neglecting this results in underestimating the marginal multiplier of funding EGA. Here is another way of noting this. For a spending up to 10 k£, the marginal multiplier of the strategy EGA is scaling up neglecting effects on other strategies is close to 0 (assuming the bare-bones website barely raises funds without social media ads). Yet, this does not reflect well the cost-effectiveness of funding EGA in its earliest stages. A significant fraction of the impact of initial funding comes from increasing the probability of EGA achieving strategies with a higher marginal multiplier neglecting effects on other strategies.
Here is how I relate the above to economies of scale. Being an early adopter of solar panels would not have looked like a cost-effective way of decreasing greenhouse gas (GHG) emissions looking just at the initial cost of solar panels, and neglecting the reduction in cost resulting from increased adoption. However, a significant fraction of the (expected) decrease in GHG emissions would have come from the potential of early adoption enabling cheaper panels. This is why I mentioned in my past comment "marginal multiplier accounting for all effects, including longterm and low probability effects".
Relatedly, it may naively seem that decreasing the consumption of chicken by 0.1 kg does not change the production of chicken if this can only be adjusted by multiples of e.g. 1 k kg. However, in this case, a better model would be that decreasing the consumption of chicken by 0.1 kg would increase by roughly 0.01 pp (= 0.1/(1*10^3)) the probability of the production of chicken decreasing by 1 k kg. So the expected reduction in the production of chicken would still be roughly 0.1 kg (= 1*10^-4*1*10^3).
The marginal multiplier should still decrease with spending if the organisation allocates funds to the most cost-effective activities 1st? I think so. If the marginal multiplier accounting for all effects, including longterm and low probability effects, of additional spending on core activities was lower than the marginal multiplier of additional spending on expansion activities, the organisation should move funds from core to expansion activities until their marginal multipliers were equal. Otherwise, they would be leaving impact on the table. The impact of core activities may not always be that visible. The impact of the organisation may not change much nearterm as a result of a temporary reduction in the spending on core activities. However, these are important for the longterm success of the organisation.
Hi Kestrel and Melanie. Thanks for the relevant discussion.
Melanie, could you share your current bar in terms of the multiplier affecting the total expenses of grantees? You say this multiplier for 2025 was "~5–6x", but your bar is lower because the cost-effectiveness of your grants has to be above the bar, and because you are expanding your funding?
That said, if we're funding an organization, even below its full budget, you can assume we believe they are above our bar at their full projected budget. We use their full projected expenses when estimating the giving multiplier, so a partial grant from us is not a signal that we think the marginal dollar is low-value.
On the other hand, the marginal multiplier could in principle be 0 or negative even if the multiplier affecting the total expenses is high. For example, if the last 10 % of the total expenses have a multiplier of -1, the 2nd last 10 % have a multiplier of 0, and the 1st 80 % have a multiplier of 10, the multiplier affecting the overall expenses would be 7.9 (= 0.1*(-1) + 0.1*0 + 0.8*10), but the marginal multiplier would be at most -1 (at most because the multiplier could continue to decrease as expenses increase). I do not think a negative marginal multiplier is realistic, but I wonder whether it could be close to 1 when accounting for all effects, such as the benefits of a funding cap making grantees look for more counterfactual sources of funding, and the costs of CG scaling up the funding of effective giving initiatives too fast.
Hi Toby.
I wonder what the trends look like for other cause areas.
I thought about this too. It would be interesting to know the details, but I would be surprised if the number of comments per post decreased more in the overall population of posts than in GHD posts. According to Nick's 1st graph, there were around 9 comments per GHD post in the 1st 3 months of 2021, and around 2 in the last few months, 22.2 % as many (= 2/9), which means there was a reduction of 77.8 % (= 1 - 0.222). In contrast, as illustrated below, the number of engagement hours per day, and posts per month with at least 2 of karma are slightly higher today, which means the number of engagement hours per post has not changed much since early 2021. I guess the number of comments per post is not very far from proportional to the number of engagement hours per post. So I suspect the number of comments per post has not changed a lot in the overall population of posts.
Hi Toby. Thanks for the relevant post.
There is even more uncertainty in AI Futures' artificial superintelligence (ASI) timelines. The difference between the 90th and 10th percentile is 168 years for Daniel Kokotajlo (2027 to 2195), and 137 years for Eli Lifland (2028 to 2165).