2019
DOI: 10.5334/gjgl.603
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Determining underlying presence in the learning of grammars that allow insertion and deletion

Abstract: The simultaneous learning of a phonological map from inputs to outputs and a lexicon of phonological underlying forms has been a focus of several research efforts (Jarosz 2006;Apoussidou 2007;Merchant 2008;Merchant & Tesar 2008;Tesar 2014). One of the numerous challenges is that of computational efficiency, which led to the investigation of learning with output-driven maps (Tesar 2014). Prior work on learning with output-driven maps has focused on systems in which the only disparities between inputs and output… Show more

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“…A seemingly promising approach to the toggling process is the notion that segments in input representations in exchange mappings may be marked by presence features indicating disparities in correspondence (Nyman & Tesar 2019). This possibility permits processes of segmental deletion to be encoded and learned in a formal phonological grammar and results in paradigmatic effects observed in phonological systems (c.f.…”
Section: General Issues For Formal Analysesmentioning
confidence: 99%
“…A seemingly promising approach to the toggling process is the notion that segments in input representations in exchange mappings may be marked by presence features indicating disparities in correspondence (Nyman & Tesar 2019). This possibility permits processes of segmental deletion to be encoded and learned in a formal phonological grammar and results in paradigmatic effects observed in phonological systems (c.f.…”
Section: General Issues For Formal Analysesmentioning
confidence: 99%