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Computational analysis of Finnish nonfinite clauses

Published online by Cambridge University Press:  24 July 2023

Pauli Brattico*
Affiliation:
NeTS Lab at University School for Advanced Studies IUSS Pavia, 27100 Pavia, Italy

Abstract

Finnish nonfinite clauses constitute a complex grammatical class with a seemingly chaotic mix of verbal and nominal properties. Thirteen nonfinite constructions, their selection, control, thematic role assignment, nonfinite agreement, embedded subjects, and syntactic status were targeted for analysis. An analysis is proposed which derives their syntactic and semantic properties by relying on a computational model of human information processing. The model analyzes Finnish nonfinite constructions as truncated clauses with one functional layer above the verb phrase. Research methods from naturalistic cognitive science and computational linguistics are considered as potentially useful tools for linguistics.

Information

Type
Research Article
Creative Commons
Creative Common License - CCCreative Common License - BY
This is an Open Access article, distributed under the terms of the Creative Commons Attribution licence (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted re-use, distribution and reproduction, provided the original article is properly cited.
Copyright
© The Author(s), 2023. Published by Cambridge University Press on behalf of The Nordic Association of Linguists
Figure 0

Table 1. Finnish nonfinite clauses (infinitives and participles) selected for analysis

Figure 1

Figure 1. Overall architecture of the language processing system used as a background in this study. The model is a simplification, but sufficient in the light of the research agenda defined in Section 3.

Figure 2

Table 2. Lexical features posited in this study (α0 = grammatical head)

Figure 3

Figure 2. A speaker model for some language, dialect, or variation. The model is selected automatically on the basis of the language of the input sentence.

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Figure 3. A phonological word enters the processing pipeline and activates lexical entries, here the two elements ‘buy’ and the VA-infinitival suffix VA/Inf (1). These items are matched with further entries in the same lexicon representing primitive lexical items (2). Primitive lexical items are feature sets (3). Features are wrapped inside constituents (4), objects that the syntactic component assembles into syntactic representations (4, Figure 2).

Figure 5

Figure 4. The input sentence is read from left to right. Each phonological word is decomposed into primitive lexical items, which are attached incrementally to the phrase structure in the active syntactic working memory. Some decompositions (e.g. tiesi ‘knew’ ~ T0 + V0) were ignored for readability and are examined in detail in Section 5.2.

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Figure 5. A screenshot from the results file generated by the algorithm showing the syntactic analysis (at the syntax–semantics interface, line 235) and aspects of semantic interpretation (lines 238–244) created by the semantic component (see Figure 1). The predicted thematic roles, specifically, are listed on line 238. Every sentence that was judged grammatical by the model is associated with a similar entry and must be checked for correctness.

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Figure 6. A screenshot from the results file generated by the algorithm, showing the entry for the input sentence Pekka halusi lähte-ä ‘Pekka wanted leave-A/inf’ (#18). The thematic roles and control dependencies, which are generated on the basis of the syntax–semantic interface representations, are on lines 334 and 333, respectively.

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Figure 7. A screenshot from the derivational log file, showing that the main verb failed a selection test against the A-infinitive (lines 5793–4, 5799–5802). The input syntactic analysis is on line 5797. The operations on lines 5783–5792 describe what occurred during transfer (for the notion of transfer, see Section 4.2).

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Figure 8. Object control: both the adverbial head and the verb take the direct object hänet ‘him’ as an antecedent (line 1242). Adjunction is marked by <, > in the symbolic notation.

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Table 3. Lexical features used in the final simulation trial

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Figure 9. Hierarchical dependencies between the lexical features positing in this study. See the main text for explanation.

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