IRCLSep 12, 2017

Dependencies: Formalising Semantic Catenae for Information Retrieval

arXiv:1709.03742v1
Originality Incremental advance
AI Analysis

This work addresses the AI-complete challenge of text understanding for applications like conversational agents and text analysis, though it appears incremental as it builds on existing tools.

The dissertation tackles the problem of enabling machines to understand text by developing nine distinct models that formalize semantic dependencies, advancing the complexity and granularity of automatic semantic inferences.

Building machines that can understand text like humans is an AI-complete problem. A great deal of research has already gone into this, with astounding results, allowing everyday people to discuss with their telephones, or have their reading materials analysed and classified by computers. A prerequisite for processing text semantics, common to the above examples, is having some computational representation of text as an abstract object. Operations on this representation practically correspond to making semantic inferences, and by extension simulating understanding text. The complexity and granularity of semantic processing that can be realised is constrained by the mathematical and computational robustness, expressiveness, and rigour of the tools used. This dissertation contributes a series of such tools, diverse in their mathematical formulation, but common in their application to model semantic inferences when machines process text. These tools are principally expressed in nine distinct models that capture aspects of semantic dependence in highly interpretable and non-complex ways. This dissertation further reflects on present and future problems with the current research paradigm in this area, and makes recommendations on how to overcome them. The amalgamation of the body of work presented in this dissertation advances the complexity and granularity of semantic inferences that can be made automatically by machines.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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