Fair Interval Scheduling of Indivisible Chores
Pith reviewed 2026-05-24 03:57 UTC · model grok-4.3
The pith
Polynomial-time algorithm computes an EF1 and maximal schedule for two agents on interval chore graphs.
A machine-rendered reading of the paper's core claim, the machinery that carries it, and where it could break.
Core claim
For two agents with monotone valuations whose chore conflicts form an interval graph, there exists a polynomial-time algorithm to compute an EF1 and maximal schedule using a coloring technique on the interval graph.
What carries the argument
A coloring technique in interval graphs that produces an EF1 maximal schedule.
If this is right
- For two agents, EF1 and maximal schedules are computable in polynomial time when conflicts form an interval graph.
- Existence of EF1 and maximal schedules holds for any number of agents with identical valuations when conflicts form a path graph.
- An efficient algorithm exists for four or more agents with dichotomous valuations.
- EFX along with maximality cannot be achieved, nor can EF1 along with Pareto optimality.
Where Pith is reading between the lines
- The coloring technique may extend to other structured conflict graphs.
- These scheduling results could guide practical systems assigning time-windowed tasks.
- The separation between achievable and impossible fairness-efficiency pairs highlights limits for general conflict structures.
Load-bearing premise
The conflict constraints between chores form an interval graph.
What would settle it
An instance with two agents and monotone valuations on an interval graph where no EF1 maximal schedule exists or cannot be found in polynomial time.
Figures
read the original abstract
We study the problem of fairly assigning a set of discrete tasks (or chores) among a set of agents with additive valuations. Each chore is associated with a start and finish time, and each agent can perform at most one chore at any given time. The goal is to find a fair and efficient schedule of the chores, where fairness pertains to satisfying envy-freeness up to one chore (EF1) and efficiency pertains to maximality (i.e., no unallocated chore can be feasibly assigned to any agent). Our main result is a polynomial-time algorithm for computing an EF1 and maximal schedule for two agents under monotone valuations when the conflict constraints constitute an arbitrary interval graph. The algorithm uses a coloring technique in interval graphs that may be of independent interest. For an arbitrary number of agents with identical additive valuations, we show the existence of an EF1 and maximal schedule when the constraints constitute a path graph. This result uses a reduction to the ``cycle-plus-triangles'' theorem. Using different techniques, we provide an efficient algorithm for finding such a schedule when there are four or more agents and the valuations are further assumed to be dichotomous. We also show that stronger fairness and efficiency properties, including envy-freeness up to any chore (EFX) along with maximality and EF1 along with Pareto optimality, cannot be achieved.
Editorial analysis
A structured set of objections, weighed in public.
Referee Report
Summary. The manuscript studies fair scheduling of indivisible chores subject to interval-based conflict constraints. Its central claim is a polynomial-time algorithm that computes an EF1 and maximal schedule for two agents with monotone valuations on arbitrary interval graphs, obtained via a coloring technique on interval graphs. It further shows existence of EF1 and maximal schedules for any number of agents with identical additive valuations when conflicts form a path graph (via reduction to the cycle-plus-triangles theorem), gives an efficient algorithm for four or more agents under dichotomous valuations, and proves impossibility results for EFX+maximality and for EF1+ Pareto optimality.
Significance. If the main algorithmic result holds, the work supplies an efficient method for simultaneously achieving EF1 fairness and maximality in a natural constrained fair-division setting; the interval-graph coloring technique is noted as potentially reusable. The reduction to the cycle-plus-triangles theorem supplies a non-trivial link between fair division and classical graph theory.
minor comments (2)
- [Abstract] Abstract: the two-agent result is stated for monotone valuations while the path-graph result uses additive valuations; a brief clarification of the relationship (or whether monotonicity is strictly weaker) would aid readability.
- [Abstract] Abstract: the path-graph result is stated only as existence; it would be useful to indicate explicitly whether a polynomial-time algorithm is also obtained or whether the result is non-constructive.
Simulated Author's Rebuttal
We thank the referee for their positive summary of the manuscript, recognition of the algorithmic contribution and the connection to the cycle-plus-triangles theorem, and recommendation of minor revision. No major comments were provided in the report.
Circularity Check
No significant circularity detected
full rationale
The central result is a constructive polynomial-time algorithm for EF1+maximal schedules on interval graphs for two agents, obtained by applying standard interval-graph coloring to produce the schedule. The path-graph existence result invokes the external cycle-plus-triangles theorem. No derivation step reduces by definition or construction to its own inputs, no fitted parameters are relabeled as predictions, and all cited theorems are external rather than self-referential. The paper is self-contained against the stated graph-theoretic assumptions.
Axiom & Free-Parameter Ledger
axioms (2)
- standard math Interval graphs admit efficient coloring
- standard math Cycle-plus-triangles theorem holds for the relevant graphs
Reference graph
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discussion (0)
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