Observer-dependent Collective Behavior For Biologically-inspired Processing ModelsDownload PDF

Anonymous

09 Oct 2020 (modified: 05 May 2023)Submitted to SVRHM@NeurIPSReaders: Everyone
Keywords: Biologically-inspired Models, Prepocessing Models, Deep Epistatic Models, Genetic Representations of Behavior
TL;DR: We introduce a preprocessing model in which a population of Bioinspired Agents evaluate input data and its structure from various geometric perspectives.
Abstract: The role of observers in computational learning models is rarely discussed but offers a unique perspective on the practice of analysis and holistic interpretation of data. In this paper, we present an observer-dependent perspective of data acquisition and preprocessing. Observers consist of observers that exhibit environmental relativism, biorealism, and collective behavior. Environmental realism is achieved by introducing a variety of viewpoints to a population of observers, while biorealism provides observers that have an innate component that resembles a genotype. Collectively, observers can enable emergent features in a given dataset, as well as contextual understanding. The individual and collective behavior of observers can serve as a preprocessing layer or pre-trained model for a variety of machines and deep learning models. In considering the collective behavior of our computational observers, we make a number of predictions about their behavior that may facilitate specific applications.
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