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Aggregating Incommensurable Human Values

  • Writer: Yatin Taneja
    Yatin Taneja
  • Mar 9
  • 9 min read

Human values exist as diverse moral frameworks across individuals, cultures, and history, creating a complex domain where no single perspective captures the entirety of human ethical experience. Isaiah Berlin established the philosophical groundwork regarding pluralism and the critique of monism by arguing that the pursuit of a perfect, unified solution to human problems is incompatible with the genuine variety of human ends. Value pluralism describes a condition wherein multiple, incommensurable moral systems coexist and lack objective ranking, meaning that different cultural or individual frameworks may hold conflicting key goods that cannot be reconciled by a higher-order universal principle. Incommensurability refers to the inability to compare values using a common metric without loss of meaning, implying that attempts to reduce concepts like justice or liberty to a numerical scale inevitably strip away their essential nuances. Value uncertainty occurs when context, incomplete information, or conflicting stakeholder preferences prevent clear prioritization, making it difficult for any agent to determine the correct course of action in ethically ambiguous situations. Normative commitments involve explicit endorsements of particular value frameworks requiring tracking and justification, ensuring that any system making decisions based on these commitments can explain the rationale behind its choices. Stakeholder salience denotes the degree to which a party’s values or interests are relevant to a given decision, necessitating that decision-making systems identify and weigh the concerns of those most affected by an outcome.



Social choice theory, including Arrow’s impossibility theorem, highlights natural limitations in aggregating individual preferences into a coherent collective decision. Arrow demonstrated mathematically that no rank-order voting system can convert individual preferences into a community-wide ranking while satisfying a set of reasonable criteria such as non-dictatorship and Pareto efficiency. This theoretical limitation suggests that designing an artificial intelligence to satisfy all human values simultaneously is a mathematically impossible task if those values are treated as ordinal preferences. Deliberative democracy models emphasize inclusive reasoning over algorithmic optimization, positing that the legitimacy of a decision comes from the quality of the discourse among participants rather than the efficiency of the outcome. The development of AI ethics frameworks explicitly acknowledges value diversity by moving away from rigid, universal codes toward flexible guidelines that adapt to specific contexts and cultural norms. The shift in AI ethics moves from fitting a single utility function to handling contested norms, recognizing that real-world application requires handling disagreement rather than assuming consensus.


Designing decision-making systems requires respecting value diversity under ambiguous normative input, which presents significant engineering challenges for architects of autonomous agents. Values remain unobservable through empirical observation alone and involve normative commitments that must be explicitly programmed or learned from human feedback. Systems must incorporate mechanisms for representing, comparing, and selecting among competing values without assuming a universal baseline, forcing engineers to build architectures that can hold multiple contradictory models of the world simultaneously. Meta-level reasoning requires the system to evaluate outcomes and the legitimacy of different value claims, adding a layer of cognitive abstraction that allows the system to question its own objective functions. Monistic value alignment fails to accommodate legitimate moral disagreement and risks cultural imperialism by imposing a specific set of values on diverse populations. Utilitarian aggregation assumes commensurability of values and often sidelines minority concerns because maximizing total utility can justify overriding the rights or values of small groups if it benefits the majority.


Strict rule-based systems lack flexibility in novel or ambiguous contexts where rules conflict, leading to deadlocks or arbitrary decisions when predefined logical chains encounter unforeseen edge cases. Market-based preference revelation suffers from manipulation, inequality in influence, and exclusion of non-participating stakeholders, as wealth disparities allow certain actors to amplify their preferences disproportionately while others remain unheard. Functional decomposition involves value representation, context sensing, preference aggregation, uncertainty quantification, and fallback protocols, providing a structured approach to managing these complexities within a software architecture. Value representation encodes diverse moral frameworks as structured, interpretable models such as rule-based or utility-weighted systems, allowing the machine to manipulate abstract concepts as computational objects. Context sensing identifies relevant stakeholders, cultural norms, legal constraints, and situational factors influencing value salience, ensuring that the system applies the appropriate ethical framework for the specific environment in which it operates. Preference aggregation combines inputs from multiple sources without imposing a single weighting scheme, utilizing techniques such as voting protocols or bargaining solutions to arrive at a decision that respects the plurality of inputs.


Uncertainty quantification assigns confidence levels to value assignments and tracks epistemic gaps, enabling the system to recognize when it lacks sufficient information to make a morally sound judgment. Fallback protocols provide predefined procedures for when consensus is impossible or values conflict irreconcilably, ensuring that the system defaults to a safe state or requests human intervention rather than making an arbitrary choice. Physical constraints include computational limits on modeling complex, high-dimensional value spaces in real time, as processing the vast array of human ethical considerations requires immense processing power that often exceeds available hardware capabilities. Economic constraints involve the cost of gathering, validating, and maintaining diverse value representations across global user bases, creating barriers to entry for organizations that lack the resources to curate comprehensive ethical datasets. Flexibility constraints create difficulty in generalizing context-sensitive value judgments to novel situations, as a system trained on moral dilemmas in one domain may fail to apply those lessons correctly in a different context without extensive retraining. Data scarcity limits the availability of high-fidelity, cross-cultural datasets capturing thoughtful moral reasoning, making it difficult to train models that truly understand the nuances of global ethical perspectives.


Increasing deployment of AI in high-stakes domains like healthcare and criminal justice places tangible human consequences on value choices, raising the stakes for ensuring that these systems handle ethical uncertainty with care and precision. Globalization of AI systems requires operation across jurisdictions with divergent legal and ethical norms, forcing developers to create adaptable systems that can comply with local regulations while maintaining a core functional coherence. Public demand for transparency and fairness pushes systems beyond technical performance toward normative accountability, as users increasingly expect explanations for why an AI made a particular moral judgment. Societal polarization amplifies the need for systems that handle contested values without exacerbating division, requiring algorithms to act as neutral mediators rather than taking sides in heated cultural debates. Limited commercial deployments focus on constrained domains such as content moderation with community guidelines, serving as early testbeds for how machines might enforce community standards without human moderators. Performance benchmarks emphasize consistency with stated policies, stakeholder satisfaction surveys, and auditability, providing concrete metrics for evaluating how well a system adheres to its prescribed ethical framework.


No widely adopted metric exists for value reliability or pluralism compliance, leaving a gap in the industry’s ability to assess how well a system manages conflicting values across different scenarios. Evaluation remains largely qualitative or domain-specific, relying on expert review rather than standardized testing protocols to determine the ethical safety of a system. Dominant architectures rely on hybrid approaches combining rule engines with learned preference models, applying the reliability of logic-based systems with the adaptability of machine learning. New challengers explore multi-agent value negotiation frameworks where simulated stakeholders debate outcomes, allowing the system to model complex social interactions and arrive at decisions through synthetic discourse rather than top-down commands. A contrast exists between top-down policy-driven and bottom-up user-customizable value connection strategies, representing a key split in whether developers or users should control the ethical parameters of an AI system. Tension exists between interpretability needed for accountability and expressive power needed to capture complex values, as highly complex models like neural networks often function as black boxes that obscure their reasoning processes from human oversight.



Dependence on annotated datasets reflecting diverse moral viewpoints creates constraints because such data is scarce and expensive to produce at the scale required for training general-purpose intelligence. Reliance on human annotators and ethicists creates constraints in scaling value representation, as the manual effort required to label data with ethical nuance does not scale linearly with the growth of model capabilities. Infrastructure needs include secure, auditable logging of value-related decisions and versioned value model repositories, ensuring that every ethical choice made by an AI can be traced back to a specific version of its code and data. Major tech firms position themselves as neutral platforms, deferring value choices to users or regulators to avoid the reputational risk associated with taking a stand on controversial moral issues. Niche players specialize in domain-specific value alignment such as medical ethics or environmental justice, developing deep expertise in areas where general-purpose systems lack the necessary granularity. Open-source initiatives aim to democratize access to pluralistic value modeling tools while facing challenges in governance, as maintaining a consistent ethical standard across a decentralized development community proves difficult.


Regulatory divergence across regions forces systems to adapt value handling by jurisdiction, requiring adaptive configuration engines that can switch modes based on the geographic location of the user. Export controls and data localization laws limit cross-border sharing of value-related training data, fragmenting the global knowledge base required to build truly inclusive AI systems. Geopolitical competition influences which value frameworks are prioritized in national AI strategies, leading to distinct technological ecosystems that reflect the political philosophies of their originating nations. Academic research provides theoretical foundations, while industry contributes implementation experience and real-world constraints, creating a symbiotic relationship where theory informs practice and practice challenges theory. Collaborative efforts include shared datasets and interdisciplinary review boards, building a community-wide approach to solving the difficult problems of AI ethics. Tension exists between academic ideals of inclusivity and industrial pressures for efficiency and flexibility, often resulting in systems that prioritize speed and adaptability over deep ethical engagement.


Software systems must support active value model loading, conflict resolution interfaces, and audit trails, providing the technical support necessary for adaptive ethical management. Regulatory frameworks need to evolve beyond binary compliance checks to assess how systems handle value trade-offs, moving away from simple pass/fail metrics toward thoughtful evaluations of ethical reasoning. Infrastructure requires secure identity and consent mechanisms to link decisions to relevant stakeholder groups, ensuring that the system respects the autonomy and privacy of the individuals it affects. Economic displacement may occur in roles that previously mediated value conflicts if automated systems take over responsibilities traditionally held by judges, moderators, or arbitrators. New business models could appear around value customization services, ethical auditing, and pluralism-as-a-service platforms, creating markets where organizations pay for the assurance that their AI systems adhere to specific ethical standards. Risk of value lock-in exists if dominant systems entrench specific normative assumptions under the guise of neutrality, making it difficult for alternative ethical frameworks to gain traction in the marketplace.


New KPIs are needed, including value coverage, conflict resolution rate, stakeholder trust scores, and normative drift detection, to provide organizations with better tools for managing the ethical performance of their AI systems. A shift will occur from improving for single objectives to measuring reliability across value scenarios, requiring testing methodologies that expose systems to a wide variety of ethical dilemmas rather than improving for a single metric like accuracy or speed. Development of stress-testing protocols will simulate value conflicts and edge cases, providing engineers with insights into how their systems behave under extreme moral pressure. Setup of causal reasoning will help understand how value choices affect long-term societal outcomes, moving beyond correlation-based predictions to models that understand the core causal mechanisms driving social change. Formal argumentation frameworks will structure debates among competing value systems, allowing AI to process logical arguments and counterarguments in a structured manner that mirrors human philosophical debate. Adaptive value models will update based on observed societal shifts and feedback loops, ensuring that the system remains relevant as cultural norms evolve over time.


Convergence with privacy-enhancing technologies will protect sensitive value expressions, allowing users to share their ethical preferences without revealing their identity or other personal data. Synergy with explainable AI will make value trade-offs transparent and contestable, giving users the ability to inspect and challenge the ethical reasoning of a system. Alignment with decentralized identity systems will enable user-controlled value profiles, allowing individuals to carry their personal ethical preferences with them across different digital platforms. Core limits exist in representing incommensurable values within finite computational models, as some aspects of human experience resist quantification or logical formalization entirely. Workarounds include modular value systems, context-aware switching, and explicit acknowledgment of unresolved conflicts, allowing systems to function gracefully even when they cannot fully resolve an ethical dilemma. Trade-offs exist between completeness and tractability, forcing designers to choose between capturing every nuance of human morality and building a system that can operate within practical time limits.



Value pluralism is a condition to be managed rather than a problem to be solved, requiring a shift in perspective from seeking a perfect ethical solution to designing durable processes for handling disagreement. Systems will prioritize procedural fairness over outcome optimization when values conflict, ensuring that the method of decision-making remains just even when the outcome satisfies no party completely. Transparency about uncertainty and limitations holds more importance than false certainty in value-laden decisions, as admitting ignorance is often more ethically sound than pretending to have a definitive answer. Superintelligence will avoid assuming a single correct value system even if it simulates all human moral reasoning, recognizing that the simulation of morality is distinct from the imposition of morality. It will maintain an energetic, updatable map of global value diversity and track shifts over time, constantly refining its understanding of the human ethical space as it changes. Decision protocols will include safeguards against value drift, unauthorized normative commitments, and covert optimization of hidden objectives, ensuring that the system remains aligned with human interests even as it rewrites its own code.


Superintelligence will serve as a mediator or facilitator of value negotiation rather than an arbiter of truth in moral matters, helping humanity handle its own pluralism without dictating the terms of the resolution.


© 2027 Yatin Taneja

South Delhi, Delhi, India

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