Results for 'Natural-language understanding'

968 found
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  1.  94
    Natural Language Understanding.James Allen - 1995 - Benjamin Cummings.
    From a leading authority in artificial intelligence, this book delivers a synthesis of the major modern techniques and the most current research in natural language processing. The approach is unique in its coverage of semantic interpretation and discourse alongside the foundational material in syntactic processing.
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  2. Natural Language Understanding: Methodological Conceptualization.Vitalii Shymko - 2019 - Psycholinguistics 25 (1):431-443.
    This article contains the results of a theoretical analysis of the phenomenon of natural language understanding (NLU), as a methodological problem. The combination of structural-ontological and informational-psychological approaches provided an opportunity to describe the subject matter field of NLU, as a composite function of the mind, which systemically combines the verbal and discursive structural layers. In particular, the idea of NLU is presented, on the one hand, as the relation between the discourse of a specific speech message (...)
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  3. An example for natural language understanding and the ai problems it raises.John McCarthy - manuscript
    An Example for Natural Language Understanding and the AI Problems it Raises I think this 1976 memorandum is of 1996 interest. The problems it raises haven't been solved or even substantially reformulated.
     
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  4.  53
    Natural language understanding within a cognitive semantics framework.Inger Lytje - 1989 - AI and Society 4 (4):276-290.
    The article argues that cognitive linguistic theory may prove an alternative to the Montague paradigm for designing natural language understanding systems. Within this framework it describes a system which models language understanding as a dialogical process between user and computer. The system operates with natural language texts as input and represent language meaning as entity-relationship diagrams.
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  5.  64
    Pragmatics and Natural Language Understanding.Alice G. B. ter Meulen & Georgia M. Green - 1993 - Noûs 27 (4):550.
  6. (1 other version)Dynamic Context Generation for Natural Language Understanding: A Multifaceted Knowledge Approach.Samuel W. K. Chan - unknown
    ��We describe a comprehensive framework for text un- derstanding, based on the representation of context. It is designed to serve as a representation of semantics for the full range of in- terpretive and inferential needs of general natural language pro- cessing. Its most distinctive feature is its uniform representation of the various simple and independent linguistic sources that play a role in determining meaning: lexical associations, syntactic re- strictions, case-role expectations, and most importantly, contextual effects. Compositional syntactic structure (...)
     
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  7.  27
    Modularity in Knowledge Representation and Natural-Language Understanding.Jay L. Garfield (ed.) - 1987 - MIT Press.
    The notion of modularity, introduced by Noam Chomsky and developed with special emphasis on perceptual and linguistic processes by Jerry Fodor in his important book The Modularity of Mind, has provided a significant stimulus to research in cognitive science. This book presents essays in which a diverse group of philosophers, linguists, psycholinguists, and neuroscientists - including both proponents and critics of the modularity hypothesis - address general questions and specific problems related to modularity. Jay L. Garfield is Associate Professor of (...)
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  8. Natural language understanding: Models of Roger Schank and his students.R. Schank & D. Leake - 2002 - In Lynn Nadel (ed.), Encyclopedia of Cognitive Science. Macmillan. pp. 189--195.
     
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  9.  20
    Applying automated deduction to natural language understanding.Johan Bos - 2009 - Journal of Applied Logic 7 (1):100-112.
  10.  52
    (1 other version)Pragmatics and natural language understanding.Kepa Korta - 1993 - Theoria 8 (1):201-202.
  11. Syntactic semantics: Foundations of computational natural language understanding.William J. Rapaport - 1988 - In James H. Fetzer (ed.), Aspects of AI. D.
    This essay considers what it means to understand natural language and whether a computer running an artificial-intelligence program designed to understand natural language does in fact do so. It is argued that a certain kind of semantics is needed to understand natural language, that this kind of semantics is mere symbol manipulation (i.e., syntax), and that, hence, it is available to AI systems. Recent arguments by Searle and Dretske to the effect that computers cannot (...)
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  12.  12
    Understanding natural language.Dan Jurafsky - 1989 - Artificial Intelligence 38 (3):367-377.
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  13. The language of thought and natural language understanding.Jonathan Knowles - 1998 - Analysis 58 (4):264-272.
    Stephen Laurence and Eric Margolis have recently argued that certain kinds of regress arguments against the language of thought (LOT) hypothesis as an account of how we understand natural languages have been answered incorrectly or inadequately by supporters of LOT ('Regress arguments against the language of thought', Analysis, 57 (1), 60-6, J 97). They argue further that this does not undermine the LOT hypothesis, since the main sources of support for LOT are (or might be) independent of (...)
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  14. Modularity In Knowledge Representation And Natural- Language Understanding.William Marslen-Wilson & Lorraine Komisarjevsky Tyler (eds.) - 1987 - Cambridge: MIT Press.
  15. The State-of-the-Art in Natural-Language Understanding David L. Waltz Research in computer understanding of natural language has led to the construc-tion of programs which can handle a number of different types of language, including questions about the contents of data bases, stories and news articles.Christopher Riesbeck - 1982 - In Wendy G. Lehnert & Martin Ringle (eds.), Strategies for Natural Language Processing. Lawrence Erlbaum.
     
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  16. Theories of Vision in Modularity in Knowledge Representation and Natural-Language Understanding.Neil Stillings (ed.) - 1989 - Cambridge: MIT Press.
  17. Why Can Computers Understand Natural Language?Juan Luis Gastaldi - 2020 - Philosophy and Technology 34 (1):149-214.
    The present paper intends to draw the conception of language implied in the technique of word embeddings that supported the recent development of deep neural network models in computational linguistics. After a preliminary presentation of the basic functioning of elementary artificial neural networks, we introduce the motivations and capabilities of word embeddings through one of its pioneering models, word2vec. To assess the remarkable results of the latter, we inspect the nature of its underlying mechanisms, which have been characterized as (...)
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  18.  13
    A position note on natural language understanding and artificial intelligence.Yorick Wilks - 1981 - Cognition 10 (1-3):337-340.
  19. Understanding natural language.John Haugeland - 1979 - Journal of Philosophy 76 (November):619-32.
  20. Understanding Natural Language.T. Winograd - 1974 - British Journal for the Philosophy of Science 25 (1):85-88.
  21. How to pass a Turing test: Syntactic semantics, natural-language understanding, and first-person cognition.William J. Rapaport - 2000 - Journal of Logic, Language, and Information 9 (4):467-490.
    I advocate a theory of syntactic semantics as a way of understanding how computers can think (and how the Chinese-Room-Argument objection to the Turing Test can be overcome): (1) Semantics, considered as the study of relations between symbols and meanings, can be turned into syntax – a study of relations among symbols (including meanings) – and hence syntax (i.e., symbol manipulation) can suffice for the semantical enterprise (contra Searle). (2) Semantics, considered as the process of understanding one domain (...)
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  22. Natural-Language Multi-Agent Simulations of Argumentative Opinion Dynamics.Gregor Betz - 2022 - JASSS 25 (1).
    This paper develops a natural-language agent-based model of argumentation (ABMA). Its artificial deliberative agents (ADAs) are constructed with the help of so-called neural language models recently developed in AI and computational linguistics. ADAs are equipped with a minimalist belief system and may generate and submit novel contributions to a conversation. The natural-language ABMA allows us to simulate collective deliberation in English, i.e. with arguments, reasons, and claims themselves — rather than with their mathematical representations (as (...)
     
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  23. The State of the Art in Natural-Language Understanding.L. Oavid - 1982 - In Wendy G. Lehnert & Martin Ringle (eds.), Strategies for Natural Language Processing. Lawrence Erlbaum.
     
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  24.  35
    Incorporating Demographic Embeddings Into Language Understanding.Justin Garten, Brendan Kennedy, Joe Hoover, Kenji Sagae & Morteza Dehghani - 2019 - Cognitive Science 43 (1):e12701.
    Meaning depends on context. This applies in obvious cases like deictics or sarcasm as well as more subtle situations like framing or persuasion. One key aspect of this is the identity of the participants in an interaction. Our interpretation of an utterance shifts based on a variety of factors, including personal history, background knowledge, and our relationship to the source. While obviously an incomplete model of individual differences, demographic factors provide a useful starting point and allow us to capture some (...)
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  25.  32
    Meta‐Planning: Representing and Using Knowledge About Planning in Problem Solving and Natural Language Understanding.Robert Wilensky - 1981 - Cognitive Science 5 (3):197-233.
    This paper is concerned with those elements of planning knowledge that are common to both understanding someone else's plan and creating a plan for one's own use. This planning knowledge can be divided into two bodies: Knowledge about the world, and knowledge about the planning process itself. Our interest here is primarily with the latter corpus. The central thesis is that much of the knowledge about the planning process itself can be formulated in terms of higher‐level goals and plans (...)
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  26.  1
    (1 other version)Evolution of natural language processing methods.А. Ю Беседина - 2025 - Philosophical Problems of IT and Cyberspace (PhilITandC) 2:52-63.
    Natural language processing (NLP) has undergone significant changes in its methods, reflecting advances in computing technology and cognitive research. This article reviews the key stages of the evolution of natural language processing methods. The article touches on the topic of the first NLP systems developed, provides justification for the reasons for the complexity of some processed texts and the possible depth of analysis. In addition, it describes not only NLP methods before and after the GPT revolution, (...)
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  27.  33
    Context for language understanding by intelligent agents.Marjorie McShane & Sergei Nirenburg - 2019 - Applied ontology 14 (4):415-449.
    This paper describes the layers of context leveraged by language-endowed intelligent agents (LEIAs) during incremental natural language understanding (NLU). Context is defined as a combination of (...
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  28.  22
    Situated Language Understanding as Filtering Perceived Affordances.Peter Gorniak & Deb Roy - 2007 - Cognitive Science 31 (2):197-231.
    We introduce a computational theory of situated language understanding in which the meaning of words and utterances depends on the physical environment and the goals and plans of communication partners. According to the theory, concepts that ground linguistic meaning are neither internal nor external to language users, but instead span the objective‐subjective boundary. To model the possible interactions between subject and object, the theory relies on the notion of perceived affordances: structured units of interaction that can be (...)
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  29. Understanding Language Without a Language of Thought: Exploring an Alternative Paradigm for Explaining Semantic Competence in Natural Language.Tadeusz Wieslaw Zawidzki - 2000 - Dissertation, Washington University
    Most theories of semantic competence in natural language implicitly assume the Language of Thought Hypothesis. According to this hypothesis, all human cognition consists in the deployment of a language of thought. This language of thought is supposed to be independent of natural language, yet at the same time, it is supposed to be semantically isomorphic with natural language. Given this assumption, it is easy to answer basic questions regarding semantic competence in (...)
     
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  30.  1
    Application of natural language processing for the recognition of obesity-related topics in the discourses of Argentine Twitter users.Eugenia Haluszka, Camila Niclis, Antonio Pareja Lora & Laura Rosana Aballay - forthcoming - Lodz Papers in Pragmatics.
    The global burden of obesity has risen due to various factors, including sociocultural aspects. Social representations (SRs) of obesity could help to understand the problem. Nowadays, social networks activate new social interaction processes and enable the construction of SRs. Tweets can identify mind-sets as cultural reflections of the times. This study aimed to identify widely shared obesity topics on Twitter-Argentina using Natural Language Processing. First, 134,766 Spanish tweets about obesity were collected from August 2021 to July 2022. Next, (...)
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  31.  17
    Parsing natural language using LDS: a prototype.M. Finger, R. Kibble, D. Gabbay & R. Kempson - 1997 - Logic Journal of the IGPL 5 (5):647-671.
    This paper describes a prototype implementation of a Labelled Deduction System for natural language interpretation, where interpretation is taken to be the process of understanding a natural language utterance. The implementation models the process of understanding wh-gap dependencies in questions and relative clauses for a fragment of English. The paper is divided in three main sections. In Section 1, we introduce the basic architecture of the system. Section 2 outlines a prototype implementation of wh-binding (...)
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  32.  12
    Automatic semantic interpretation: a computer model of understanding natural language.Jan van Bakel - 1984 - Cinnaminson, U.S.A.: Foris Publications.
  33.  23
    Emerging Technologies of Natural Language-Enabled Chatbots: A Review and Trend Forecast Using Intelligent Ontology Extraction and Patent Analytics.Min-Hua Chao, Amy J. C. Trappey & Chun-Ting Wu - 2021 - Complexity 2021:1-26.
    Natural language processing is a critical part of the digital transformation. NLP enables user-friendly interactions between machine and human by making computers understand human languages. Intelligent chatbot is an essential application of NLP to allow understanding of users’ utterance and responding in understandable sentences for specific applications simulating human-to-human conversations and interactions for problem solving or Q&As. This research studies emerging technologies for NLP-enabled intelligent chatbot development using a systematic patent analytic approach. Some intelligent text-mining techniques are (...)
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  34.  69
    Applying a logical interpretation of semantic nets and graph grammars to natural language parsing and understanding.Eero Hyvönen - 1986 - Synthese 66 (1):177 - 190.
    In this paper a logical interpretation of semantic nets and graph grammars is proposed for modelling natural language understanding and creating language understanding computer systems. An example of parsing a Finnish question by graph grammars and inferring the answer to it by a semantic net representation is provided.
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  35.  20
    Enriched Meanings: Natural Language Semantics with Category Theory.Ash Asudeh & Gianluca Giorgolo - 2020 - New York, NY: Oxford University Press. Edited by Gianluca Giorgolo.
    This book develops a theory of enriched meanings for natural language interpretation that uses the concept of monads and related ideas from category theory. The volume is interdisciplinary in nature, and will appeal to graduate students and researchers from a range of disciplines interested in natural language understanding and representation.
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  36.  61
    Computers and real understanding of natural language.James Moor - 1979 - Journal of Philosophy 76 (11):633-634.
  37.  16
    Pathos in Natural Language Argumentation: Emotional Appeals and Reactions.Barbara Konat, Ewelina Gajewska & Wiktoria Rossa - 2024 - Argumentation 38 (3):369-403.
    In this paper, we present a model of pathos, delineate its operationalisation, and demonstrate its utility through an analysis of natural language argumentation. We understand pathos as an interactional persuasive process in which speakers are performing pathos appeals and the audience experiences emotional reactions. We analyse two strategies of such appeals in pre-election debates: pathotic Argument Schemes based on the taxonomy proposed by Walton et al. (Argumentation schemes, Cambridge University Press, Cambridge, 2008), and emotion-eliciting language based on (...)
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  38.  80
    A Requirement for Understanding Natural Language.Gérard Sabah - 1997 - In S. O'Nuillain, Paul McKevitt & E. MacAogain (eds.), Two Sciences of Mind. John Benjamins. pp. 9--361.
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  39.  42
    What Sort of Taxonomy of Causation Do We Need for Language Understanding?Yorick Wilks - 1977 - Cognitive Science 1 (3):235-264.
    A proposal is made concerning the introduction of the notions of cause and reason into a natural language understanding system. Its hypothesis is that one should prefer rational explanations of actions when dealing with human, or human‐like, agents, if one can find them in what one is analyzing, but that in other, nonhuman, cases one should prefer causal explanations. The reader is reminded of the existing state of the preference semantics system, and then are described the changes (...)
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  40.  40
    Using Neural Networks to Generate Inferential Roles for Natural Language.Peter Blouw & Chris Eliasmith - 2018 - Frontiers in Psychology 8:295741.
    Neural networks have long been used to study linguistic phenomena spanning the domains of phonology, morphology, syntax, and semantics. Of these domains, semantics is somewhat unique in that there is little clarity concerning what a model needs to be able to do in order to provide an account of how the meanings of complex linguistic expressions, such as sentences, are understood. We argue that one thing such models need to be able to do is generate predictions about which further sentences (...)
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  41. On Context Shifters and Compositionality in Natural Languages.Adrian Briciu - 2018 - Organon F: Medzinárodný Časopis Pre Analytickú Filozofiu 25 (1):2-20.
    My modest aim in this paper is to prove certain relations between some type of hyper-intensional operators, namely context shifting operators, and compositionality in natural languages. Various authors (e.g. von Fintel & Matthewson 2008; Stalnaker 2014) have argued that context-shifting operators are incompatible with compositionality. In fact, some of them understand Kaplan’s (1989) famous ban on context-shifting operators as a constraint on compositionality. Others, (e.g. Rabern 2013) take contextshifting operators to be compatible with compositionality but, unfortunately, do not provide (...)
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  42.  39
    Figurative Language Understanding in LCCM Theory.Vyvyan Evans - 2010 - Cognitive Linguistics 21 (4):601–662.
    While cognitive linguists have been successful at providing accounts of the stable knowledge structures (conceptual metaphors) that give rise to figurative language, and the conceptual mechanisms that manipulate these knowledge structures (conceptual blending), relatively less effort has been thus far devoted to the nature of the linguistic mechanisms involved in figurative language understanding. This paper presents a theoretical account of figurative language understanding, examining metaphor and metonymy in particular. This account is situated within the Theory (...)
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  43.  14
    Inference and the computer understanding of natural language.Roger C. Schank & Charles J. Rieger - 1974 - Artificial Intelligence 5 (4):373-412.
  44. Language, Theory, and the Human Subject: Understanding Quine's Natural Epistemology.Paul A. Gregory - 1999 - Dissertation, University of Illinois at Chicago
    The natural epistemology of W. V. Quine has not been well understood. Critics argue that Quine's scientific approach to epistemology is circular and fails to be normative, yet these criticisms tend to be based on the very presuppositions concerning language, theory, and epistemology that Quine is at pains to reject or alter. ;Quine's views on the meaningfulness of language use imply a breakdown in the dichotomy between language as a theoretically neutral instrument and theory as the (...)
     
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  45.  65
    Early understanding of emotion: Evidence from natural language.Henry M. Wellman, Paul L. Harris, Mita Banerjee & Anna Sinclair - 1995 - Cognition and Emotion 9 (2):117-149.
    Young children's early understanding of emotion was investigated by examining their use of emotion terms such as happy, sad, mud, and cry. Five children's emotion language was examined longitudinally from the age of 2 to 5 years, and as a comparison their reference to pains via such terms as burn, sting, and hurt was also examined. In Phase 1 we confirmed and extended prior findings demonstrating that by 2 years of age terms for the basic emotions of happiness, (...)
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  46.  54
    Episodic logic: A comprehensive, natural representation for language understanding[REVIEW]Chung Hee Hwang & Lenhart K. Schubert - 1993 - Minds and Machines 3 (4):381-419.
    A new comprehensive framework for narrative understanding has been developed. Its centerpiece is a new situational logic calledEpisodic Logic, a knowledge and semantic representation well-adapted to the interpretive and inferential needs of general NLU. The most distinctive features of EL is its natural language-like expressiveness. It allows for generalized quantifiers, lambda abstraction, sentence and predicate modifiers, sentence and predicate reification, intensional predicates, unreliable generalizations, and perhaps most importantly, explicit situational variables linked to arbitrary formulas that describe them. (...)
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  47.  14
    Husserl's phenomenology of natural language: intersubjectivity and communality in the Nachlass.Horst Ruthrof - 2021 - New York: Bloomsbury Academic.
    Horst Ruthrof revisits Husserl's phenomenology of language and highlights his late writings as essential to understanding the full range of his ideas. Focusing on the idea of language as imaginable as well as the role of a speech community in constituting it, Ruthrof provides a powerful re-assessment of his methodological phenomenology. From the Logical Investigations to untranslated portions of his Nachlass, Ruthrof charts all the developments and amendments in his theorizations. Instead of emphasising the definition and meaning (...)
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  48. The History and Prehistory of Natural-Language Semantics.Daniel W. Harris - 2017 - In Sandra Lapointe & Christopher Pincock (eds.), Innovations in the History of Analytical Philosophy. London, United Kingdom: Palgrave-Macmillan. pp. 149--194.
    Contemporary natural-language semantics began with the assumption that the meaning of a sentence could be modeled by a single truth condition, or by an entity with a truth-condition. But with the recent explosion of dynamic semantics and pragmatics and of work on non- truth-conditional dimensions of linguistic meaning, we are now in the midst of a shift away from a truth-condition-centric view and toward the idea that a sentence’s meaning must be spelled out in terms of its various (...)
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  49.  14
    Computational theories should be made with natural language instead of meaningless code.Peter DeScioli - 2023 - Behavioral and Brain Sciences 46:e332.
    The target article claims that we should speak in code to understand property, because natural language is too ambiguous. Yet the best computer programmers tell us the opposite: Arbitrary code is too ambiguous, so we should use natural language for variables, functions, and classes. I discuss how meaningless code makes Boyer's theory too enigmatic to properly debate.
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  50.  35
    Bases are Not Letters: On the Analogy between the Genetic Code and Natural Language by Sequence Analysis.Dan Faltýnek, Vladimír Matlach & Ľudmila Lacková - 2019 - Biosemiotics 12 (2):289-304.
    The article deals with the notion of the genetic code and its metaphorical understanding as a “language”. In the traditional view of the language metaphor of the genetic code, combinations of nucleotides are signs of amino acids. Similarly, words combined from letters represent certain meanings. The language metaphor of the genetic code, 171–200, 2011) assumes that the nucleotides stay in the analogy to letters, triples to words and genes to sentences. We propose an application of mathematical (...)
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