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Collective Schedules: Axioms and Algorithms


Grunnleggende konsepter
Proposing axiomatic study and algorithms for collective scheduling problems.
Sammendrag

The content discusses the collective schedules problem, introducing axioms and algorithms for computing consensus schedules. It covers applications, related work, rules for scheduling, and experimental conclusions. A comprehensive analysis of axiomatic properties and algorithmic solutions is provided.

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Statistikk
"Tasks may have different duration, and individuals have preferences over the order of the shared tasks." "We show that some axioms are incompatible, and we study the axioms fulfilled by three rules." "We show that these rules solve NP-hard problems."
Sitater
"We propose an axiomatic study of the collective schedule problem." "We conclude this paper with experiments."

Viktige innsikter hentet fra

by Martin Duran... klokken arxiv.org 03-28-2024

https://arxiv.org/pdf/2403.18642.pdf
Collective schedules

Dypere Spørsmål

How can the proposed rules be applied practically in real-world scenarios

The proposed rules for collective scheduling can be applied practically in various real-world scenarios where tasks need to be scheduled based on the preferences of multiple individuals. For example, in project management, the rules can be used to determine the order of tasks in a project plan based on the preferences of team members. This can help in optimizing the workflow and ensuring that tasks are completed efficiently. In event planning, the rules can be utilized to schedule different activities or sessions in a way that aligns with the preferences of participants or attendees. This can lead to a more engaging and well-organized event. In shared workspace environments, such as co-working spaces or shared offices, the rules can assist in scheduling tasks or meetings in a manner that accommodates the preferences of different individuals, leading to better collaboration and productivity. Overall, the practical application of these rules can streamline scheduling processes, improve coordination among team members, and enhance overall efficiency in various real-world scenarios.

What are the potential limitations of the proposed axioms and algorithms

While the proposed axioms and algorithms for collective scheduling offer valuable insights and solutions, there are potential limitations that need to be considered: Complexity: The algorithms proposed may face challenges when dealing with a large number of tasks or voters, leading to computational complexity and longer processing times. Scalability: The scalability of the algorithms may be limited when applied to scenarios with a high volume of tasks or voters, potentially impacting the efficiency of the scheduling process. Subjectivity: The preferences of individuals may vary, and the proposed rules may not always capture the nuances of these preferences accurately, leading to potential discrepancies in the consensus schedule generated. Resource Constraints: The algorithms may not account for resource constraints or dependencies between tasks, which are crucial factors in real-world scheduling scenarios. Optimality: While the rules aim to generate optimal consensus schedules, there may be instances where the generated schedule is suboptimal due to the inherent complexity of scheduling tasks with varying durations and preferences.

How can the concept of collective scheduling be extended to other domains beyond the ones mentioned in the content

The concept of collective scheduling can be extended to other domains beyond the ones mentioned in the content, such as: Healthcare: In healthcare settings, collective scheduling can be used to optimize patient appointments, surgery schedules, and resource allocation based on the preferences of healthcare providers and patients. Education: In educational institutions, collective scheduling can help in organizing class schedules, extracurricular activities, and study sessions based on the preferences of students and faculty members. Transportation: In transportation systems, collective scheduling can be applied to optimize routes, vehicle schedules, and maintenance tasks based on the preferences of drivers, passengers, and maintenance staff. Retail: In retail environments, collective scheduling can assist in managing inventory, staff shifts, and promotional events based on the preferences of employees and customers. By extending the concept of collective scheduling to these domains, organizations can improve operational efficiency, enhance customer satisfaction, and streamline scheduling processes across various industries.
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