compose: Two-Word Composition

Description Usage Arguments Details Value Author(s) References See Also Examples

Description

Computes the vector of a complex expression p consisting of two single words u and v, following the methods examined in Mitchell & Lapata (2008) (see Details).

Usage

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## Default 
compose(x,y,method="Add", a=1,b=1,c=1,m,k,lambda=2,
      tvectors=tvectors,breakdown=TRUE, norm="none")

Arguments

x

a single word (character vector with length(x) = 1)

y

a single word (character vector with length(y) = 1)

a,b,c

weighting parameters, see Details

m

number of nearest words to the Predicate that are initially activated (see Predication)

k

size of the k-neighborhood; k m (see Predication)

lambda

dilation parameter for method = "Dilation"

method

the composition method to be used (see Details)

norm

whether to normalize the single word vectors before applying a composition function. Setting norm = "none" will not perform any normalizations, setting norm = "all" will normalize every involved word vector. Setting norm = "block" is only valid for the Predication method

tvectors

the semantic space in which the computation is to be done (a numeric matrix where every row is a word vector)

breakdown

if TRUE, the function breakdown is applied to the input

Details

Let p be the vector with entries p_i for the two-word phrase consisiting of u with entries u_i and v with entries v_i. The different composition methods as described by Mitchell & Lapata (2008, 2010) are as follows:

The Add, Multiply, and CConv methods are symmetrical composition methods,
i.e. compose(x="word1",y="word2") will give the same results as compose(x="word2",y="word1")
On the other hand, WeightAdd, Combined, Predication and Dilation are asymmetrical, i.e. compose(x="word1",y="word2") will give different results than compose(x="word2",y="word1")

Value

The phrase vector as a numeric vector

Author(s)

Fritz Günther

References

Kintsch, W. (2001). Predication. Cognitive science, 25, 173-202.

Mitchell, J., & Lapata, M. (2008). Vector-based Models of Semantic Composition. In Proceedings of ACL-08: HLT (pp. 236-244). Columbus, Ohio.

Mitchell, J., & Lapata, M. (2010). Composition in Distributional Models of Semantics. Cognitive Science, 34, 1388-1429.

See Also

Predication

Examples

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data(wonderland)

compose(x="mad",y="hatter",method="Add",tvectors=wonderland)

compose(x="mad",y="hatter",method="Combined",a=1,b=2,c=3,
tvectors=wonderland)

compose(x="mad",y="hatter",method="Predication",m=20,k=3,
tvectors=wonderland)

compose(x="mad",y="hatter",method="Dilation",lambda=3,
tvectors=wonderland)

codymarquart/LSAfun documentation built on May 13, 2019, 8:47 p.m.