The Ungrounded Alignment Problem
Marc Pickett, Aakash Kumar Nain, Joseph Modayil, Llion Jones

TL;DR
This paper addresses the challenge of embedding predefined knowledge into unsupervised learning systems without explicit labels, demonstrating that letter bigram frequencies enable reliable classification and pattern recognition in a modality-agnostic manner.
Contribution
It introduces a method using letter bigram frequencies to enable unsupervised learners to associate images with class labels and recognize patterns without labeled data.
Findings
Letter bigram frequencies enable reliable class association.
Unsupervised recognition of trigger words in sequences.
Method applies to modality-agnostic models.
Abstract
Modern machine learning systems have demonstrated substantial abilities with methods that either embrace or ignore human-provided knowledge, but combining benefits of both styles remains a challenge. One particular challenge involves designing learning systems that exhibit built-in responses to specific abstract stimulus patterns, yet are still plastic enough to be agnostic about the modality and exact form of their inputs. In this paper, we investigate what we call The Ungrounded Alignment Problem, which asks How can we build in predefined knowledge in a system where we don't know how a given stimulus will be grounded? This paper examines a simplified version of the general problem, where an unsupervised learner is presented with a sequence of images for the characters in a text corpus, and this learner is later evaluated on its ability to recognize specific (possibly rare) sequential…
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Taxonomy
TopicsAdvanced Manufacturing and Logistics Optimization · Optimization and Packing Problems · Assembly Line Balancing Optimization
