Machine Understanding Framework
(Redirected from Computational Understanding Framework)
		
		
		
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		A Machine Understanding Framework is a computational framework that enables computing systems to interpret semantic meaning and contextual significance beyond syntactic parsing through reasoning mechanisms and knowledge integration.
- AKA: Machine Comprehension Framework, Computational Understanding Framework, AI Understanding Framework.
 - Context:
- It can typically implement Semantic Parsers that convert surface forms into deep semantic representations.
 - It can typically employ Context Models for maintaining discourse state and situational awareness.
 - It can typically utilize Knowledge Bases for background knowledge and common sense reasoning.
 - It can typically support Inference Engines for deriving implicit information and logical conclusions.
 - It can often incorporate Disambiguation Modules for resolving lexical ambiguity and referential ambiguity.
 - It can often enable Compositional Semantics for understanding complex expressions from simpler components.
 - It can often facilitate Cross-Modal Understanding by integrating text, vision, and audio modalities.
 - It can range from being a Shallow Machine Understanding Framework to being a Deep Machine Understanding Framework, depending on its comprehension depth.
 - It can range from being a Rule-Based Machine Understanding Framework to being a Neural Machine Understanding Framework, depending on its implementation approach.
 - It can range from being a Domain-Specific Machine Understanding Framework to being a General Machine Understanding Framework, depending on its knowledge scope.
 - It can range from being a Symbolic Machine Understanding Framework to being a Subsymbolic Machine Understanding Framework, depending on its representation paradigm.
 - ...
 
 - Example(s):
- Question Answering Frameworks, such as:
 - Dialogue Understanding Frameworks, such as:
 - Document Understanding Frameworks, such as:
 - ...
 
 - Counter-Example(s):
- Pattern Matching Framework, which identifies surface patterns without semantic understanding.
 - Statistical Classification Framework, which assigns labels without meaning comprehension.
 - Syntactic Parsing Framework, which analyzes grammatical structure without semantic interpretation.
 
 - See: Cognitive Computing Framework, Natural Language Understanding, Machine-Readable Knowledge Service, AI Knowledge Processing System, Semantic Processing Framework, Reasoning System, Knowledge Representation Framework, Artificial Intelligence Framework, Comprehension System.