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Recent work has shown that compositionaldistributional models using element-wise operations on contextual word vectors benefit from the introduction of a prior disambiguation step.The purpose of this paper is to generalise these ideas to tensor-based models, where relational words such as verbs and adjectives are represented by linear maps (higher order tensors) acting on a number of arguments (vectors).We propose disambiguation algorithms for a number of tensor-based models, which we then test on a variety of tasks.The results show that disambiguation can provide better compositional representation even for the case of tensor-based models.Furthermore, we confirm previous findings regarding the positive effect of disambiguation on vector mixture models, and we compare the effectiveness of the two approaches.
Kartsaklis et al. (Tue,) studied this question.