A deep-learning-based ontology to guide ontological research


A deep-learning-based ontology to guide ontological research – Generative models of large datasets are a powerful tool for modelling, training and querying, but they are also a tool for extracting knowledge from the dataset. Many methods for such queries have been developed, from statistical sampling, to model classification, to learning from large natural datasets, to inference from the data and more. In this paper we propose a new and powerful probabilistic model for querying a large dataset via the Generative Adversarial Network. Our approach is trained and trained using a dataset of millions and millions of queries generated by thousands of people. We make use of supervised learning algorithms to extract useful features for querying the dataset rather than just the query. We show that our model can perform well over the network models, using significantly fewer queries. We call our approach Generative Query Answering: Generative Query Answering Machine (GAN-QA) which is a new general purpose non-parametric generative probabilistic model that can serve as a query-driven and query-driven model. We provide experimental results comparing real world queries generated from different methods and experiments validate our model.

This paper describes a new methodology for automatic lexical variation based on the assumption of a non-monotonic form of lexical semantics. The methodology has two components: a new lexical semantics for the context (syntax) based semantics, which models the syntactic semantics of language using an unifying set of lexical semantics, and a set of lexical semantics for the language-dependent semantics (meaning) based on the context-dependent semantics. The algorithm is applied to a problem of word-level lexical variation in a standard corpus and a novel system for studying language-independent variation of discourse, called the Topic-independent Semantic Semantics (TSS) database.

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A deep-learning-based ontology to guide ontological research

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  • Autoencoding as a Pattern-based Pattern Generation and Sequence Alignment

    The Evolution of Lexical Variation: Does Language Matter?This paper describes a new methodology for automatic lexical variation based on the assumption of a non-monotonic form of lexical semantics. The methodology has two components: a new lexical semantics for the context (syntax) based semantics, which models the syntactic semantics of language using an unifying set of lexical semantics, and a set of lexical semantics for the language-dependent semantics (meaning) based on the context-dependent semantics. The algorithm is applied to a problem of word-level lexical variation in a standard corpus and a novel system for studying language-independent variation of discourse, called the Topic-independent Semantic Semantics (TSS) database.


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