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Diego Krivochen
University of Reading, UK
School of Psychology and Clinical Language Sciences
What is a function?
 A function is a relation between a set of inputs and a
set of permissible outputs with the property that each
input is related to exactly one output.
(based on Falcade et. al., 2004; Youschkevitch, 1976/1977: 39; May, 1962, among others)
Properties:
 Closed to external influence
 Operate in polynomial (i.e., finite) time
 Alphabet & rules are fixed a priori
 Strictly serial (very local access)
Example 1: quadratic functions
 Axiom: f(x) = x2
This function relates each value of x to its square x2 by means
of a definite rule, ‘multiply x by itself’
Alphabet: ℤ
Halting: only by stipulation (if the memory tape is
infinite)
Development
Step 1: f(1) = 12
Step 2: f(2) = 22
Step 3: f(3) = 32
…
Step n: f(n) = n2
The nth step is defined by the axiom alone, as the system
has no access to previous information or to what will
come next.
Example 2: Σ, F grammars
 Axioms:
S → NP⏜Aux⏜VP
VP → V⏜NP
NP → Det⏜N
Det → the
N → man, ball
V → hit
Aux → Ø
 Development:
NP⏜Aux⏜VP
Det⏜N⏜VP
Det⏜N⏜Verb⏜NP
the⏜N⏜Verb⏜NP
the⏜man⏜Verb⏜NP
the⏜man⏜hit⏜NP
the⏜man⏜hit⏜Det ⏜N
the⏜man⏜hit⏜the⏜N
the⏜man⏜hit⏜the⏜ball
Each line represents a derivational step, which is subjacent to
the previous one.
Functions in the theories of syntax
 Since any language L in which we are likely to be interested is an infinite
set, we can investigate the structure of L only through the study of the
finite devices (grammars) which are capable of enumerating its sentences.
A grammar of L can be regarded as a function whose range is exactly L.
(Chomsky, 1959: 137)
 “We must require of such a linguistic theory that it provide for:
(i) an enumeration of the class S1' S2', … of possible sentences
(ii) an enumeration of the class SD1, SD2, … of possible structural
descriptions
(iii) an enumeration of the class G1, G2, … of possible generative
grammars
(iv) specification of a function f such that SDf(i, j) is the structural
description assigned to sentence Si, by grammar Gj, for arbitrary i,j
(v) specification of a function m such that m(z) is an integer
associated with the grammar G, as its value (with, let us say, lower value
indicated by higher number)” Chomsky (1965: 31)
 (…) individual neurons can be modeled by finite automata
[…], and a finite three-dimensional array of such automata
can be substituted by one finite automaton […], NLs must
be regular. [Type 3] (Kornai, 1985: 4)
 An f-structure is a mathematical function that represents
the grammatical functions of a sentence […] all f-structures
are functions of one argument (…) (Kaplan & Bresnan, 1982:
182-183)
 The HPSG lexicon […] consists of roots that are related to
stems or fully inflected words. The derivational or
inflectional rules may influence part of speech (e.g.
adjectival derivation) and/or valence (-able adjectives and
passive) […] The stem is mapped to a word and the
phonology of the input […] is mapped to the passive form by
a function f. (Müller, forthcoming: 16)
 This analysis [Pollard & Sag, 1994; below] employs an App(end)-
synsems function that appends its second argument (a list of
synsems) to a list of the synsem values of its first argument (which
is a list of phrases). (Green, 2011: 24)
…and even in ‘performance-oriented
theories’
 Complexity is a function of the amount of structure that is
associated with the terminal elements, or words, of a
sentence.(…) complexity is a function of the number of
formal units and conventionally associated properties that
need to be processed in domains relevant for their
processing. Hawkins (2004: 8 / 25)
 Rejects UG, but embraces the DTC, based on Miller &
Chomsky (1963)
 The DTC can also be found in approaches to SLI like
Jakubowicz (2011): complexity is a function of operations /
derivational steps.
The Minimalist Program
 We take L [a particular language] to be a generative
procedure that constructs pairs (π, λ) that are interpreted at
the articulatory perceptual (A-P) and conceptual-
intentional (C-I) interfaces (…). Chomsky, 1995: 219)
 phrase structure (…) always completely determines linear
order […] Linear Correspondence Axiom: d(A) is a linear
ordering of T. (A a set of non-terminals, T a set of
terminals) (Kayne, 1994: 3, 6)
Lexicon → Numeration →
(⇄)
Computational System ⇉ A-P / C-I
↮ ↮
Conditions over derivations:
 Inclusiveness Condition: No new features are
introduced by CHL […] permits rearrangement of LIs
and of elements constructed in the course of derivation,
and deletion of features of LI, but optimally, nothing
more. (Chomsky, 2000: 113)
 Full Interpretation: There can be no superfluous
symbols in representations (Chomsky, 1995: 27)
 (…) Yet another [UG condition] imposes "local
determinability" conditions (barring "look-ahead,"
"backtracking," or comparison of alternatives). (Op.
Cit.: 99)
Some problems:
 ‘Combination problem’:
𝑛!
𝑛−𝑘 !𝑘!
⇒ 𝑁𝑈𝑀!
𝑁𝑈𝑀−𝐷𝑖
!𝐷𝑖
!
 ‘Uniformity problem’: [X…X…X] ⇒ [X [X [X]]] (also, ‘Lyons’
problem’ → stipulations over labels)
 ‘Interpretation problem’: Semantic Interpretation > LI +
C(HL)
 ‘Implementational problem’: derivations are at odds with
real-time processing.
 Unidirectional information flow
 No temporal dimension
 False sense of ‘derivational topology’ (bottom-up / top-down)
Some more problems:
 HPSG: if syntactic structure projects from lexical items with highly
specified feature matrices, how to account (in a reasonably elegant way)
for:
 Alternances
 Idioms
 Incorporated complex structures
 LFG: Entscheidungsproblem
Decidibility Theorem: for any lexical-functional grammar G and for any
string s, it is decidable whether s belongs to the language of G (Kaplan &
Bresnan, 1982: 267)
However…
An LFG is formally between Type 1 and Type 2 languages.
A possible solution… change the
paradigm
 Interactive Computation (Wegner 1997, 1998; Goldin &
Wegner, 2005, 2007, a.o.):
(…) computation is viewed as an ongoing process that
transforms inputs to outputs – e.g., control systems, or
operating systems. (Goldin & Wegner, 2007: 5)
 Properties:
 Open to external influence
 Bidirectional information flow
 Input-Output entanglement
Computationally…
 Replace uniform a-machines with (kind of) c-
machines in automaton theory (Turing, 1936: 232)
 Replace the static Chomsky Theorem with a dynamic
conception of mental processes (Krivochen,
forthcoming; Krivochen & Mathiasen, 2012):
 Adapting to the input
 Able to ‘switch’ between different levels of
complexity
Psycholinguistically…
 Revisit the AxS model (Townsend & Bever, 2001) under
interactive premises
 Take the implementational level of the development of
a theory seriously when building a formal grammar
 Test the claim that computation equals computation of
functions separately from the thesis that mental
processes are computational (contra Copeland, 2002;
Deutsch, 1985; Fitz, 2006; a.o.)
Problems of function based syntax

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Problems of function based syntax

  • 1. Diego Krivochen University of Reading, UK School of Psychology and Clinical Language Sciences
  • 2. What is a function?  A function is a relation between a set of inputs and a set of permissible outputs with the property that each input is related to exactly one output. (based on Falcade et. al., 2004; Youschkevitch, 1976/1977: 39; May, 1962, among others) Properties:  Closed to external influence  Operate in polynomial (i.e., finite) time  Alphabet & rules are fixed a priori  Strictly serial (very local access)
  • 3. Example 1: quadratic functions  Axiom: f(x) = x2 This function relates each value of x to its square x2 by means of a definite rule, ‘multiply x by itself’ Alphabet: ℤ Halting: only by stipulation (if the memory tape is infinite)
  • 4. Development Step 1: f(1) = 12 Step 2: f(2) = 22 Step 3: f(3) = 32 … Step n: f(n) = n2 The nth step is defined by the axiom alone, as the system has no access to previous information or to what will come next.
  • 5. Example 2: Σ, F grammars  Axioms: S → NP⏜Aux⏜VP VP → V⏜NP NP → Det⏜N Det → the N → man, ball V → hit Aux → Ø  Development: NP⏜Aux⏜VP Det⏜N⏜VP Det⏜N⏜Verb⏜NP the⏜N⏜Verb⏜NP the⏜man⏜Verb⏜NP the⏜man⏜hit⏜NP the⏜man⏜hit⏜Det ⏜N the⏜man⏜hit⏜the⏜N the⏜man⏜hit⏜the⏜ball Each line represents a derivational step, which is subjacent to the previous one.
  • 6. Functions in the theories of syntax  Since any language L in which we are likely to be interested is an infinite set, we can investigate the structure of L only through the study of the finite devices (grammars) which are capable of enumerating its sentences. A grammar of L can be regarded as a function whose range is exactly L. (Chomsky, 1959: 137)  “We must require of such a linguistic theory that it provide for: (i) an enumeration of the class S1' S2', … of possible sentences (ii) an enumeration of the class SD1, SD2, … of possible structural descriptions (iii) an enumeration of the class G1, G2, … of possible generative grammars (iv) specification of a function f such that SDf(i, j) is the structural description assigned to sentence Si, by grammar Gj, for arbitrary i,j (v) specification of a function m such that m(z) is an integer associated with the grammar G, as its value (with, let us say, lower value indicated by higher number)” Chomsky (1965: 31)
  • 7.  (…) individual neurons can be modeled by finite automata […], and a finite three-dimensional array of such automata can be substituted by one finite automaton […], NLs must be regular. [Type 3] (Kornai, 1985: 4)  An f-structure is a mathematical function that represents the grammatical functions of a sentence […] all f-structures are functions of one argument (…) (Kaplan & Bresnan, 1982: 182-183)  The HPSG lexicon […] consists of roots that are related to stems or fully inflected words. The derivational or inflectional rules may influence part of speech (e.g. adjectival derivation) and/or valence (-able adjectives and passive) […] The stem is mapped to a word and the phonology of the input […] is mapped to the passive form by a function f. (Müller, forthcoming: 16)
  • 8.  This analysis [Pollard & Sag, 1994; below] employs an App(end)- synsems function that appends its second argument (a list of synsems) to a list of the synsem values of its first argument (which is a list of phrases). (Green, 2011: 24)
  • 9. …and even in ‘performance-oriented theories’  Complexity is a function of the amount of structure that is associated with the terminal elements, or words, of a sentence.(…) complexity is a function of the number of formal units and conventionally associated properties that need to be processed in domains relevant for their processing. Hawkins (2004: 8 / 25)  Rejects UG, but embraces the DTC, based on Miller & Chomsky (1963)  The DTC can also be found in approaches to SLI like Jakubowicz (2011): complexity is a function of operations / derivational steps.
  • 10. The Minimalist Program  We take L [a particular language] to be a generative procedure that constructs pairs (π, λ) that are interpreted at the articulatory perceptual (A-P) and conceptual- intentional (C-I) interfaces (…). Chomsky, 1995: 219)  phrase structure (…) always completely determines linear order […] Linear Correspondence Axiom: d(A) is a linear ordering of T. (A a set of non-terminals, T a set of terminals) (Kayne, 1994: 3, 6) Lexicon → Numeration → (⇄) Computational System ⇉ A-P / C-I ↮ ↮
  • 11. Conditions over derivations:  Inclusiveness Condition: No new features are introduced by CHL […] permits rearrangement of LIs and of elements constructed in the course of derivation, and deletion of features of LI, but optimally, nothing more. (Chomsky, 2000: 113)  Full Interpretation: There can be no superfluous symbols in representations (Chomsky, 1995: 27)  (…) Yet another [UG condition] imposes "local determinability" conditions (barring "look-ahead," "backtracking," or comparison of alternatives). (Op. Cit.: 99)
  • 12. Some problems:  ‘Combination problem’: 𝑛! 𝑛−𝑘 !𝑘! ⇒ 𝑁𝑈𝑀! 𝑁𝑈𝑀−𝐷𝑖 !𝐷𝑖 !  ‘Uniformity problem’: [X…X…X] ⇒ [X [X [X]]] (also, ‘Lyons’ problem’ → stipulations over labels)  ‘Interpretation problem’: Semantic Interpretation > LI + C(HL)  ‘Implementational problem’: derivations are at odds with real-time processing.  Unidirectional information flow  No temporal dimension  False sense of ‘derivational topology’ (bottom-up / top-down)
  • 13. Some more problems:  HPSG: if syntactic structure projects from lexical items with highly specified feature matrices, how to account (in a reasonably elegant way) for:  Alternances  Idioms  Incorporated complex structures  LFG: Entscheidungsproblem Decidibility Theorem: for any lexical-functional grammar G and for any string s, it is decidable whether s belongs to the language of G (Kaplan & Bresnan, 1982: 267) However… An LFG is formally between Type 1 and Type 2 languages.
  • 14. A possible solution… change the paradigm  Interactive Computation (Wegner 1997, 1998; Goldin & Wegner, 2005, 2007, a.o.): (…) computation is viewed as an ongoing process that transforms inputs to outputs – e.g., control systems, or operating systems. (Goldin & Wegner, 2007: 5)  Properties:  Open to external influence  Bidirectional information flow  Input-Output entanglement
  • 15. Computationally…  Replace uniform a-machines with (kind of) c- machines in automaton theory (Turing, 1936: 232)  Replace the static Chomsky Theorem with a dynamic conception of mental processes (Krivochen, forthcoming; Krivochen & Mathiasen, 2012):  Adapting to the input  Able to ‘switch’ between different levels of complexity
  • 16. Psycholinguistically…  Revisit the AxS model (Townsend & Bever, 2001) under interactive premises  Take the implementational level of the development of a theory seriously when building a formal grammar  Test the claim that computation equals computation of functions separately from the thesis that mental processes are computational (contra Copeland, 2002; Deutsch, 1985; Fitz, 2006; a.o.)