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Psycholinguistics of AI, Psycholinguistics versus Machine code ; Psicolinguística da AI, Psicolinguística versus código de máquina
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In: Signo; v. 47 n. 88 (2022): ISAPL ; 27-43 ; 1982-2014 ; 0101-1812 (2022)
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On The Subject of Thinking Machines
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In: https://hal.archives-ouvertes.fr/hal-01697125 ; 2018 (2018)
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Weighted tree automata and transducers for syntactic natural language processing ...
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Abstract:
Unrestricted Weighted finite-state string transducer cascades are a powerful formalism for models of solutions to many natural language processing problems such as speech recognition, transliteration, and translation. Researchers often directly employ these formalisms to build their systems by using toolkits that provide fundamental algorithms for transducer cascade manipulation, combination, and inference. However, extant transducer toolkits are poorly suited to current research in NLP that makes use of syntax-rich models. More advanced toolkits, particularly those that allow the manipulation, combination, and inference of weighted extended top-down tree transducers, do not exist. In large part, this is because the analogous algorithms needed to perform these operations have not been defined. This thesis solves both these problems, by describing and developing algorithms, by producing an implementation of a functional weighted tree transducer toolkit that uses these algorithms, and by demonstrating the ...
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Keyword:
computational linguistics; Computer Science; context-free grammars; finite state machines; machine learning; machine translation; natural language processing; parsing; tree automata; tree transducers
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URL: https://dx.doi.org/10.25549/usctheses-m3104 https://digitallibrary.usc.edu/asset-management/2A3BF1OQA73O
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Sociolinguistically Informed Natural Language Processing: Automating Irony Detection
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In: DTIC (2015)
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Structural Complexity in Linguistic Systems Research Topic 3: Mathematical Sciences
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In: DTIC (2015)
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Robust Speech Processing & Recognition: Speaker ID, Language ID, Speech Recognition/Keyword Spotting, Diarization/Co-Channel/Environmental Characterization, Speaker State Assessment
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In: DTIC (2015)
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Examining the Role of Religiosity in Moral Cognition, Specifically in the Formation of Sacred Values, and Researching Computational Models for Analyzing Sacred Rhetoric and its Consequential Emotions
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In: DTIC (2015)
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A Fast Variational Approach for Learning Markov Random Field Language Models
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In: DTIC (2015)
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Learning to Understand Natural Language with Less Human Effort
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In: DTIC (2015)
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Virtual sign : a real time bidirectional translator of portuguese sign language
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Intelligence Virtual Analyst Capability: Governing Concepts and Science and Technology Roadmap
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Towards a Simple and Efficient Web Search Framework
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In: DTIC (2014)
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Distributed Non-Parametric Representations for Vital Filtering: UW at TREC KBA 2014
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In: DTIC (2014)
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Modelling Psychological Needs for User-dependent Contextual Suggestion
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In: DTIC (2014)
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Discovery of Deep Structure from Unlabeled Data
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In: DTIC (2014)
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ReaderBench, o platformă integrată pentru analiza complexității textuale și a strategiilor de lectură
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In: Proc. 10-a Conf. Nat. de Interactiune Om-Calculator (RoCHI 2013) ; https://hal.archives-ouvertes.fr/hal-01412573 ; Proc. 10-a Conf. Nat. de Interactiune Om-Calculator (RoCHI 2013), T. Stefanut; C. Rusu, 2013, Cluj, Romania. pp.39-46 (2013)
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MSEE: Stochastic Cognitive Linguistic Behavior Models for Semantic Sensing
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In: DTIC (2013)
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Using a Bayesian Model to Combine LDA Features with Crowdsourced Responses
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In: DTIC (2013)
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