1. Introduction
‘Prioritarianism’ is a family of views comparing distributions of well-being.Footnote 1 What unites prioritarians is the thought that when deciding whether a distribution is overall better than another, the worse off have priority. More precisely, prioritarian views can be characterised by the following two axioms:Footnote 2
Pigou-Dalton: Transferring a fixed amount of well-being from a better off person to a less well off person that reduces the gap between their well-being levels makes things overall better.
Separability: The ranking of distributions is independent of the well-being levels of unaffected individuals.
To give examples in this paper, I represent the well-being of individuals with numbers (e.g. 20), the distribution of well-being with vectors, e.g. (20, 50, 10), and ‘overall better than’ with ${\succ}$.Footnote 3 Pigou-Dalton, for example, implies that $( {20, \;\;40, \;\;50} ) \succ ( {10, \;\;50, \;\;50} )$. It introduces a weak constraint for giving priority to the worse off. This helps differentiate prioritarianism from a view like utilitarianism which is concerned with total welfare and does not care about the worse off more than it does about others.
Separability, for example, implies that $( {20, \;\;50, \;\;10} ) \succ ( {30, \;\;30, \;\;10} )$ iff $( {20, \;\;50, \;\;100} ) \succ ( {30, \;\;30, \;\;100} )$. Separability makes precise the idea that the relative position of an individual in a distribution does not matter. This helps differentiate it from egalitarianism which is concerned with reducing inequalities of well-being.Footnote 4 Separability is also attractive because of the deliberational benefits it comes with: we can exclude unaffected individuals from any given comparative problem and simplify the question.
Prioritarian theories diverge on how much priority they give to the worse off. The two main families of views are ‘lexical’ (or ‘discontinuous’) and ‘continuous’ prioritarianism. ‘Leximin’ – inspired by Rawls (Reference Rawls1971) – is the most straightforward way to give lexical priority to the worse off:
Leximin: $x\succ y$ iff the worst off individual in x is better off than the worst off individual in y; and if they are equally well off, then the second worst off individual in x is better off than the second worst off individual in y; and so on. If the k-th worst off individuals are equally well off for all k, then x and y are equally good.
Another idea is to think about what counts as sufficient well-being. Some people think whether people are above or below a certain threshold of sufficient well-being is morally important. You can think of that threshold as being the threshold of a reasonably good life, or you can think of it as the threshold of a life that is worth living. The sufficiency view is similar to leximin in that a group gets lexical priority, but it is different in that the group that gets lexical priority is those below the sufficiency level. More precisely:
Sufficiency: $x\succ y$ iff those below the sufficiency level in x are better off than those below the sufficiency level in y.Footnote 5
Any kind of lexical priority generates a problem which, following Adler (Reference Adler2012: chapter 5), we can call the problem of ‘Absolute Priority’:
Absolute Priority: An arbitrarily small harm or benefit to the worse off can outweigh arbitrarily large benefits to others.
Absolute Priority is an extreme anti-aggregative implication of lexical views which easily leads to counterintuitive verdicts since it is insensitive to the comparative magnitudes of harms and benefits. To give an example, consider (20, 40, 40) with 30 as the threshold for sufficient well-being. You can decide between either giving a very small benefit to the worse off (0.1 units) or a very large benefit to the others (100 units each). Both Leximin and Sufficiency say that you ought to prefer giving a 0.1 benefit to the worst off person (who is also the only person below the sufficiency level) rather than 100 units of well-being to others. What is more, even if you make 0.1 as small as you wish (say 10−100) and make 100 as great as you wish (say 10100), then it is still going to be the case that the small benefit to the worse off is going to outweigh the large benefit to everyone else.
Most prioritarians adopt the Continuous Priority view which avoids this problem.Footnote 6 Continuous priority is an aggregative view (like utilitarianism) that gives more weight to the well-being of the worse off:
Continuous Priority: $x\succ y$ iff the sum of well-being – transformed by the ‘prioritarian transformation function’ f – in x is higher than in y; where f is a ‘prioritarian transformation function’ iff it is a continuous, strictly increasing and strictly concave (down) function of well-being.
The prioritarian transformation function transforms well-being by assigning different weights to different well-being levels. Since it is increasing and concave, it assigns more weight to the worse off. Since it is continuous, any distribution of well-being will receive a ‘score’ – its sum of transformed well-being – which can be used as the basis for ranking it versus others.Footnote 7 Different versions of continuous prioritarianism use different transformation functions capturing different degrees of (continuous) priority for the worse off.Footnote 8
A great advantage of continuous priority views is that they do not face the Absolute Priority problem because of their aggregative feature. On the other hand, they have extreme aggregative implications which lead to counterintuitive verdicts. For example:
Numbers Win: An arbitrarily large harm to the worse off can be outweighed by arbitrarily small benefits to sufficiently many others.Footnote 9
We looked at two types of prioritarianism: lexical and continuous. The lexical views have extreme anti-aggregative implications (Absolute Priority) and the continuous views have extreme aggregative implications (Numbers Win) instead. This raises the question: is there a version of prioritarianism that avoids both extremes? There is a growing literature on ‘partial aggregation’ theories which seek to aggregate in some cases (to rule out Absolute Priority) but not in others (to rule out Numbers Win).Footnote 10 So another way of putting the question is: Can prioritarians accommodate partial aggregation?
Sadly the answer is no. Prioritarians face an inescapable dilemma between Absolute Priority and Numbers Win.Footnote 11 Adler (Reference Adler2012: chapter 5) argues that Absolute Priority is more counterintuitive than Numbers Win and that therefore we ought to pick a continuous priority view and accept the Numbers Win property as an unfortunate consequence of this reflective equilibrium. I agree with Adler that conceding Numbers Win is better than conceding Absolute Priority. However, I think we can do better than this in accommodating anti-aggregative intuitions. We can focus on similar but weaker anti-aggregation constraints and identify the best version of prioritarianism that accommodates them.
In what follows, I explore a neglected anti-aggregation constraint (§2) and a family of views I call ‘bounded prioritarianism’ that succeed in meeting it (§3). I then argue that anyone sympathetic to partial aggregation ought to abandon more familiar versions of prioritarianism in favour of a version of bounded prioritarianism (§4). Bounded prioritarianism is the best version of prioritarianism as far as partial aggregation is concerned.
2. A weaker anti-aggregation condition
Consider the following extreme implication of some aggregative theories:
Large Benefits Win: An arbitrarily large harm to the worse off can be outweighed by a sufficiently large benefit to another group.
An example of the problem is: one person is very badly off – say with well-being 1 – and another person is very well off – say with well-being 100. If Large Benefits Win, any large harm to the worse off person – say of magnitude 100 – can be outweighed by some large benefit to the other person who is already very well off. This seems wrong.
The problem is similar to Numbers Win but slightly different. Numbers Win meant that a large harm can be outweighed by a large benefit which is distributed as a series of small benefits across a very large number of people. Here the large harm is outweighed by a large benefit which is distributed among a fixed number of people instead, and so they are potentially going to each receive large benefits. The difference is simply between the ways you distribute the large benefit, but in both cases, a large harm has been outweighed by a benefit to a group of potentially well off individuals. (See Figures 1 and 2. These figures only illustrate the different distributions of benefits in the two problems. Whether or not the benefits outweigh the harms in these figures will of course depend on the well-being levels of the individuals and the details of the prioritarian ranking used.)
Why think that Large Benefits Win might be a problem? There are three reasons for this: independent intuitions; the implication of some prioritarian intuitions; and the implication of some key motivations for partial aggregation.
Many people might find specific examples of Large Benefits Win, like the example above, intuitively unacceptable. That said, we could be sceptical about these intuitions, given the large amounts of well-being under consideration.Footnote 12 However, interestingly in the context of prioritarianism, aversion to Large Benefits Win simply follows from much simpler low-stakes intuitions. Nebel and Stefánsson (Reference Nebel and Stefánsson2023) show that prioritarians who give priority to the worse off in some low-stakes cases ought to be averse to what I call Large Benefits Win cases when the stakes are high.
For example, it follows from many prioritarian views that for some level of well-being w, a 0.9% loss to someone at w cannot be outweighed by a 1% gain to another person at the same level. (The benefit is slightly greater than the loss of course, but the worse off receive greater weight in the comparison.) Nebel and Stefánsson show that it follows from this that for any well-being level w and any two groups of identical size, a 10% loss to one group cannot be outweighed by any benefit to the other group, no matter how large the benefit and how large the groups. Notice that this conclusion implies aversion to Large Benefits Win but not to Numbers Win.Footnote 13
Putting intuitions about numbers and specific cases aside, Large Benefits Win should seem problematic to anyone sympathetic to partial aggregation. Many people who are attracted to partial aggregation think that Numbers Win is an unwelcome feature of utilitarianism and continuous prioritarianism, including continuous prioritarians like Adler (Reference Adler2012: chapter 5) who accept it only as a forced result of reflective equilibrium. But many of the justifications for finding Numbers Win problematic and partial aggregation desirable apply to Large Benefits Win as well, since the outweighing of large harms remains justified and the difference is simply about how to distribute the benefits.
For example, depending on what our underlying conception of well-being includes, some large harms could entail the violation of a person's integrity, personal projects or rights, and we might press for partial aggregation on the grounds that thorough aggregation leading to these results is unacceptable.Footnote 14 When a large benefit to the well off outweighs an arbitrarily large harm to the worse off as in Large Benefits Win, the harm to the worse off might, for example, entail a violation of their integrity.
Another motivation for partial aggregation is a concern for fairness, either in the sense of having a fair distribution of well-being, or in the sense of ensuring everyone has sufficient well-being when possible, both of which can be violated by thoroughly aggregative views.Footnote 15 Again, when a large benefit to the well off outweighs an arbitrarily large harm to the worse off as in Large Benefits Win, it can lead to an unfair distribution of well-being or to the worse off going below the sufficiency level.
A recently influential motivation for partial aggregation is that aggregation is only plausible when the harms and benefits are in some sense relevant or close enough, but not otherwise.Footnote 16 Again, when a large benefit to the well off outweighs an arbitrarily large harm to the worse off as in Large Benefits Win, the harm might be irrelevant and not close enough to the benefit bestowed on the well off. All of these motivations for partial aggregation, depending on the details, can count against both Numbers Win and Large Benefits Win.
3. Bounded prioritarianism
Bounded prioritarianism is the version of prioritarianism that avoids Large Benefits Win:
Bounded Prioritarianism: $x\succ y$ iff the sum of well-being – transformed by the ‘bounded prioritarian transformation function’ f – in x is higher than in y; where f is a bounded prioritarian transformation function iff it is a continuous, strictly increasing, strictly concave (down) function of well-being with an upper bound.
Bounded prioritarianism is a species of continuous prioritarianism, with the ‘upper bound’ differentiating between bounded and unbounded versions of continuous priority. Many familiar prioritarian transformation functions fall into the unbounded class, but many functions also fall into the bounded class. To give examples, consider two families of prioritarian functions familiar from the literature. These are the ‘Atkinson’ and ‘Kolm-Pollak’ functions:
Atkinson Prioritarianism: f is an Atkinson prioritarian transformation function of well-being iff $f( w ) = {1 \over {1-\gamma }}w^{1-\gamma }$ for γ ≠ 1, and f(w) = ln w for γ = 1.
Kolm-Pollak Prioritarianism: f is a Kolm-Pollak prioritarian transformation function of well-being iff f(w) = −e βw for β > 0.
γ and β are the priority parameters of their respective functions: the greater they are, the greater the weight accorded to the worse off. Kolm-Pollak functions are all bounded. However, only Atkinson functions with γ > 1 are bounded; the rest are unbounded.Footnote 17 Figure 3 below illustrates two unbounded Atkinson functions with well-being on the horizontal axis and transformed well-being on the vertical axis: $f( x ) = 2\sqrt x$ and g(x) = ln(x). And Figure 4 illustrates a bounded Atkinson function and a Kolm-Pollak (and therefore bounded) function: h(x) = −x −1 and p(x) = −e −x.
We have seen that some prioritarian functions are bounded and some are unbounded. The bounded functions have the advantage that they do not allow Large Benefits Win. More precisely:
Large Benefits Win and Continuous Priority: If f is a continuous prioritarian transformation function: Large Benefits Win iff f is unbounded.
To see why, assume first that f is bounded with least upper bound c. Compare a distribution of well-being D with any distribution D* in which D* benefits a group of beneficiaries at the price of harming a particular victim. The difference between the transformed well-being levels of the beneficiaries from D to D* cannot be greater than n(c − w b), where n is the number of beneficiaries and w b is the well-being level in D of the worst off beneficiary. Since all three variables are fixed by D and f, there is an upper bound on the benefits of D* relative to D. On the other hand, the difference between the transformed well-being levels of the victim can be arbitrarily large because f is strictly increasing and has no lower bound. Putting these two thoughts together with a continuous prioritarian ranking employing f, it follows that some harms to the victim cannot be outweighed by any benefits to the beneficiaries. In other words, if Large Benefits Win, then f is unbounded.
Next, assume that f is unbounded. Consider D and D* above again. It is still true that the difference between the transformed well-being levels of the victim can be arbitrarily large. But now it is also true that the difference between the transformed well-being levels of the beneficiaries can be arbitrarily large, because f is strictly increasing and has no upper bound. Putting these two thoughts together with a continuous prioritarian ranking employing f, it follows that any harm to the victim can be outweighed by sufficiently large benefits to the beneficiaries. In other words, if f is unbounded, then Large Benefits Win.
It is important to distinguish what I call bounded prioritarianism from other views that employ upper bounds in other ways. Bounded prioritarianism places an upper bound on the continuous prioritarian transformation function of well-being. To counter the extreme implications of aggregation (e.g. Numbers Win), some have suggested placing an upper bound on the total value of any number of small benefits or harms.Footnote 18 This strategy can avoid Numbers Win because the total value of any number of small benefits may be less than the (dis)value of some large harms and therefore cannot outweigh it. This is a solution to Numbers Win that is not available to the bounded prioritarian. On the other hand, this strategy comes with its own problems. For example, it leads to the counterintuitive implication that the value of a harm or benefit to a person can change depending on how many other victims or beneficiaries are around. Since the total value of benefits is bounded, if there are millions of people in danger, saving you from this danger matters less than if there are only hundreds in danger. Bounded prioritarianism as defined above avoids this implication: the value of saving you from danger only depends on your well-being level, the magnitude of the benefit and the underlying prioritarian transformation function.
4. Arguments for bounded prioritarianism
Figure 5 below summarises the prioritarian views we have seen and their implications. In this section, I give three reasons why anyone sympathetic to partial aggregation ought to pick Bounded Continuous Priority.
Firstly, as I argued in §2, Large Benefits Win is an undesirable implication of any prioritarian theory. To remind you, Large Benefits Win is both intuitively problematic and also clashes with some prioritarian-friendly low-stakes intuitions. What is more, many arguments in favour of partial aggregation which rule out Numbers Win also rule out Large Benefits Win. If we take these considerations seriously, we will have to opt for either Lexical Priority or Bounded Continuous Priority. If we find Absolute Priority problematic too, Lexical Priority is no longer an option. Therefore, we ought to pick Bounded Continuous Priority.
Secondly, some believe that Numbers Win is a pseudo-problem and our intuitions about large numbers here cannot be reliable.Footnote 19 As I argued in §2, the same cannot be said about Large Benefits Win: the large-number intuitions are about benefits to potentially well off people, and not numbers of people, and what is more, they follow from some small-number intuitions too. This means that we can concede Numbers Win because of the unreliability of our intuitions (or simply to avoid Lexical Priority), and still try to avoid Large Benefits Win. Bounded Continuous Priority does exactly that.
Finally, if we are sympathetic to partial aggregation, we would like to avoid extreme aggregative and anti-aggregative implications. Neither Lexical Priority nor Unbounded Continuous Priority can do this. Bounded Continuous Priority is the only available view that avoids both some extreme aggregative implications (Large Benefits Win) and extreme anti-aggregative implications (Absolute Priority). Therefore Bounded Continuous Priority gives us the best version of prioritarianism as far as partial aggregation is concerned.
5. Conclusion
There is a growing literature on partial aggregation and whether it is possible to avoid the extreme implications of both aggregative and non-aggregative theories comparing distributions of well-being. Partial aggregation is not easy for prioritarians: lexical views have extreme anti-aggregative implications (e.g. Absolute Priority) and continuous views have extreme aggregative implications (e.g. Numbers Win).
I drew attention to a neglected implication of some aggregative theories which I call Large Benefits Win, and argued that it is both independently problematic and also conflicts with some of the motivations for partial aggregation. I then identified a subset of continuous prioritarian views which I call bounded prioritarianism, and showed how they can avoid Large Benefits Win. I concluded by arguing that anyone sympathetic to partial aggregation ought to pick bounded continuous prioritarianism because it is the only aggregative view that avoids Large Benefits Win, and because it is the only view that avoids both extreme aggregative and anti-aggregative implications.
Acknowledgements
I am grateful to Matthew Chrisman, Ben Eggleston, Barry Maguire, Wolfgang Schwarz and two anonymous referees for very helpful comments on this paper, and to Campbell Brown, Nadine Dietrich and Declan O'Gara for helpful conversation on the topic. I am also grateful to the audience at the Philosophy PhD Work in Progress Seminar, University of Edinburgh, for their feedback.