Saved in:
Bibliographic Details
Main Authors: Gaikwad, Madhava, Doke, Ashwini Ramchandra
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2507.21131
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866911081389096960
author Gaikwad, Madhava
Doke, Ashwini Ramchandra
author_facet Gaikwad, Madhava
Doke, Ashwini Ramchandra
contents We present NPO, an alignment-aware learning framework that operationalizes feedback-driven adaptation in human-in-the-loop decision systems. Unlike prior approaches that treat alignment as a static or post-hoc property, NPO introduces a formalization of alignment loss that is measurable, supervisable, and reducible under structured feedback. In parallel, we propose meta-alignment as the fidelity of the monitoring process that governs retraining or override triggers, and show that it is formally reducible to primary alignment via threshold fidelity. Our implementation spans a scalable operational loop involving scenario scoring, threshold tuning, policy validation, and structured feedback ingestion, including "likes", overrides, and abstentions. We provide formal convergence results under stochastic feedback and show that both alignment loss and monitoring fidelity converge additively. Empirically, NPO demonstrates measurable value in hyperscale deployment settings. A simulation-based artifact and ablation studies further illustrate the theoretical principles in action. Together, NPO offers a compact, inspectable architecture for continual alignment monitoring, helping bridge theoretical alignment guarantees with practical reliability in dynamic environments.
format Preprint
id arxiv_https___arxiv_org_abs_2507_21131
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle NPO: Learning Alignment and Meta-Alignment through Structured Human Feedback
Gaikwad, Madhava
Doke, Ashwini Ramchandra
Artificial Intelligence
68T05
H.5.1; I.2.6; C.4
We present NPO, an alignment-aware learning framework that operationalizes feedback-driven adaptation in human-in-the-loop decision systems. Unlike prior approaches that treat alignment as a static or post-hoc property, NPO introduces a formalization of alignment loss that is measurable, supervisable, and reducible under structured feedback. In parallel, we propose meta-alignment as the fidelity of the monitoring process that governs retraining or override triggers, and show that it is formally reducible to primary alignment via threshold fidelity. Our implementation spans a scalable operational loop involving scenario scoring, threshold tuning, policy validation, and structured feedback ingestion, including "likes", overrides, and abstentions. We provide formal convergence results under stochastic feedback and show that both alignment loss and monitoring fidelity converge additively. Empirically, NPO demonstrates measurable value in hyperscale deployment settings. A simulation-based artifact and ablation studies further illustrate the theoretical principles in action. Together, NPO offers a compact, inspectable architecture for continual alignment monitoring, helping bridge theoretical alignment guarantees with practical reliability in dynamic environments.
title NPO: Learning Alignment and Meta-Alignment through Structured Human Feedback
topic Artificial Intelligence
68T05
H.5.1; I.2.6; C.4
url https://arxiv.org/abs/2507.21131