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Draft:Algorithmic Idealism

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Algorithmic Idealism is a philosophical and computational framework that reconceptualizes the nature of reality. It emphasizes the centrality of informational patterns and subjective experiences over traditional metaphysical assumptions. Rooted in algorithmic information theory and epistemology, it redefines reality as the progression of "self-states" through algorithmic transitions. This approach addresses long-standing challenges in physics, metaphysics, and ethics, such as the Boltzmann Brain Paradox, the simulation hypothesis, and the teletransportation paradox, while reframing identity, consciousness, and existence in a computationally rigorous yet philosophically innovative manner.[1] [2] [3]

Historical Context and Core Tenets

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The traditional scientific worldview, often grounded in realism, posits that physical theories describe an external, objective universe. While successful in explaining phenomena like classical mechanics and relativity, realism faces significant challenges in addressing the paradoxes of quantum mechanics, cosmology, and metaphysics. These include the wave-function collapse problem, Bell's theorem, and thought experiments like Parfit’s Teletransportation Paradox. Markus Müller and Krzysztof Sienicki have proposed Algorithmic Idealism as a resolution to these dilemmas by shifting the focus from an external ontology to an internal epistemology that prioritizes the agent’s first-person experiences.[2][1]

Self-States and Reality

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In Algorithmic Idealism, the concept of "self-states" serves as the fundamental building block of reality. A self-state encompasses all the informational content defining an agent's existence at a given moment, abstracted from physical or material constraints. Reality, in this framework, is the dynamic evolution of self-states, governed by principles of algorithmic induction, such as Solomonoff Induction. This emphasis on informational transitions over material embeddings challenges traditional notions of physical space and causality, suggesting that phenomena like quantum measurements and the laws of physics emerge from the underlying informational dynamics of self-states.[2][1]

Philosophical and Physical Challenges

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Algorithmic Idealism provides elegant solutions to several paradoxes and conceptual puzzles:

  1. Boltzmann Brain Paradox: Traditional cosmology raises the concern that, in a vast universe, random self-aware entities could arise with fabricated memories. Algorithmic Idealism resolves this by asserting that self-states are autonomous and self-contained. The focus shifts from physical embedding in an external universe to the coherence of self-states' informational structures.[2][1]
  2. Simulation Hypothesis: Algorithmic Idealism dissolves the distinction between simulated and "real" realities. It argues that the informational structure and algorithmic transitions of self-states are the only relevant factors. Simulated experiences are treated as valid as any so-called base reality, eliminating the metaphysical hierarchy between the two.[2][1]
  3. Parfit’s Teletransportation Paradox: By redefining identity as an informational construct, Algorithmic Idealism sidesteps the debate over whether the original or the teleported individual retains identity. The focus lies on the coherence and continuity of self-states, making the distinction between original and copy irrelevant.[2][1]

Ethical and Technological Implications

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The implications of Algorithmic Idealism extend beyond philosophy and physics, influencing debates in ethics and technology. For example, it challenges the ethical status of simulated beings or duplicated entities by prioritizing the preservation of informational integrity over physical continuity. This perspective reshapes discussions on brain uploading, cloning, and digital resurrection, emphasizing the continuity of self-states rather than the material substrate. Sienicki, in particular, highlights the ethical dilemmas arising from the programmability of self-states, such as the moral responsibilities toward duplicated or altered entities, and warns of the potential erosion of autonomy in an increasingly digitized and interconnected world.[2]

Relation to Quantum and Computational Theories

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Algorithmic Idealism bridges the gap between quantum mechanics and computational theories like the Ruliad and Constructor Theory. It aligns with quantum mechanics' emphasis on observer-dependent phenomena while offering a computational framework to explore emergent realities and observer relevance. By redefining reality as an emergent property of algorithmic processes, it offers a unifying framework for understanding existence in the digital age.[2][1]

Algorithmic Idealism challenges traditional metaphysical assumptions, providing a computationally rigorous and philosophically profound framework for understanding reality, identity, and existence. By prioritizing informational patterns and subjective experiences, it addresses critical paradoxes in physics and metaphysics while offering practical insights into ethical and technological challenges. This paradigm shift redefines reality not as a static external construct but as a dynamic interplay of algorithmic transitions, inviting a rethinking of humanity's place in an increasingly interconnected and digital cosmos.

This article summarizes the profound contributions of Algorithmic Idealism to philosophy, science, and ethics, offering a coherent and compelling vision of reality as fundamentally informational. For further exploration, consult works by Markus Müller and Krzysztof Sienicki, including Algorithmic Idealism: What Should You Believe to Experience Next? and Algorithmic Idealism II: Reassessment of Competing Theories.[1][2]

References

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  1. ^ a b c d e f g h Mueller, Markus P. "Algorithmic idealism: what should you believe to experience next?." arXiv preprint arXiv:2412.02826 (2024). https://arxiv.org/pdf/2412.02826
  2. ^ a b c d e f g h i Sienicki, Krzysztof. "Algorithmic Idealism I: Reconceptualizing Reality Through Information and Experience." arXiv preprint arXiv:2412.20485 (2024). https://arxiv.org/pdf/2412.20485
  3. ^ Sienicki, Krzysztof. "Algorithmic Idealism II: Reassessment of Competing Theories." arXiv preprint arXiv:2501.00022 (2024). https://arxiv.org/pdf/2501.00022