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53
Finding structure in time
- COGNITIVE SCIENCE
, 1990
"... Time underlies many interesting human behaviors. Thus, the question of how to represent time in connectionist models is very important. One approach is to represent time implicitly by its effects on processing rather than explicitly (as in a spatial representation). The current report develops a pro ..."
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Cited by 1313 (17 self)
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Time underlies many interesting human behaviors. Thus, the question of how to represent time in connectionist models is very important. One approach is to represent time implicitly by its effects on processing rather than explicitly (as in a spatial representation). The current report develops a proposal along these lines first described by Jordan (1986) which involves the use of recurrent links in order to provide networks with a dynamic memory. In this approach, hidden unit patterns are fed back to themselves; the internal representations which develop thus reflect task demands in the context of prior internal states. A set of simulations is reported which range from relatively simple problems (temporal version of XOR) to discovering syntactic/semantic features for words. The networks are able to learn interesting internal representations which incorporate task demands with memory demands; indeed, in this approach the notion of memory is inextricably bound up with task processing. These representations reveal a rich structure, which allows them to be highly context-dependent while also expressing generalizations across classes of items. These representations suggest a method for representing lexical categories and the type/token distinction.
Distributed representations, simple recurrent networks, and grammatical structure
- Machine Learning
, 1991
"... Abstract. In this paper three problems for a connectionist account of language are considered: 1. What is the nature of linguistic representations? 2. How can complex structural relationships such as constituent structure be represented? 3. How can the apparently open-ended nature of language be acc ..."
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Cited by 251 (14 self)
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Abstract. In this paper three problems for a connectionist account of language are considered: 1. What is the nature of linguistic representations? 2. How can complex structural relationships such as constituent structure be represented? 3. How can the apparently open-ended nature of language be accommodated by a fixed-resource system? Using a prediction task, a simple recurrent network (SRN) is trained on multiclausal sentences which contain multiply-embedded relative clauses. Principal component analysis of the hidden unit activation patterns reveals that the network solves the task by developing complex distributed representations which encode the relevant grammatical relations and hierarchical constituent structure. Differences between the SRN state representations and the more traditional pushdown store are discussed in the final section.
Learning and applying contextual constraints in sentence comprehension
- Artificial Intelligence
, 1990
"... threw " could either refer to toss or host; and "ball " could refer to a sphere or a dance, How are the appropriate meanings selected so that a single, coherent interpretation of the sentence is produced? Vague words also present difficulties. In the sentences The container held the a ..."
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Cited by 99 (5 self)
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threw " could either refer to toss or host; and "ball " could refer to a sphere or a dance, How are the appropriate meanings selected so that a single, coherent interpretation of the sentence is produced? Vague words also present difficulties. In the sentences The container held the apples " and "The container held the cola, " the word "container " refers to two different objects (1). How does the context affect the interpretation of vague words? A third problem is the complexity of assigning the correct thematic roles (9) to the objects referred to in a sentence. Consider:
On The Inseparability Of Grammar And The Lexicon: Evidence From Acquisition, Aphasia And Real-Time Processing
, 1997
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Probabilistic Phonotactics and Neighborhood Activation in Spoken Word Recognition
- Journal of Memory and Language
, 1999
"... nvestigated the implications of this information for the representation and processing of spoken language. Research on phonotactics in linguistics has examined the representations of various types of sequential constraints and segmental co-occurrence relations in syllables and words (Frisch, Broe, ..."
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Cited by 44 (1 self)
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nvestigated the implications of this information for the representation and processing of spoken language. Research on phonotactics in linguistics has examined the representations of various types of sequential constraints and segmental co-occurrence relations in syllables and words (Frisch, Broe, & Pierrehumbert, 1995; Greenberg, 1950; Harris, 1983; Kessler & Treiman, 1997; Lightner, 1965; Mayzner & Tresselt, 1962; 1965; Mayzner, Tresselt, & Wolin, 1965; Ringen, 1988; Zimmer, 1967). For example, analyses of adjacent phonetic segments in syllables in English have shown that there are stronger constraints on co-occurrences of vowels and final consonants than on co-occurrences of initial consonants and vowels (Fudge, 1969, 1987; Kessler & Treiman, 1997; see also Clements & Keyser, 1983, and Greenberg, 1950). Research on phonotactics in psycholinguistics has focused on the mental representation and processing of phonotactic information in children and adults. Jusczyk, Frederici, Wessels
A Connectionist Model of Sentence Comprehension and Production. Unpublished
, 2002
"... The most predominant language processing theories have, for some time, been based largely on structured knowledge and relatively simple rules. These symbolic models intentionally segregate syntactic information processing from statistical information as well as semantic, pragmatic, and discourse inf ..."
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Cited by 30 (3 self)
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The most predominant language processing theories have, for some time, been based largely on structured knowledge and relatively simple rules. These symbolic models intentionally segregate syntactic information processing from statistical information as well as semantic, pragmatic, and discourse influences, thereby minimizing the importance of these potential constraints in learning and processing language. While such models have the advantage of being relatively simple and explicit, they are inadequate to account for learning and validated ambiguity resolution phenomena. In recent years, interactive constraint-based theories of sentence processing have gained increasing support, as a growing body of empirical evidence demonstrates early influences of various factors on comprehension performance. Connectionist networks are one form of model that naturally reflect many properties of constraint-based theories, and thus provide a form in which those theories may be instantiated. Unfortunately, most of the connectionist language models implemented until now have involved severe limitations, restricting the phenomena they could address. Comprehension and production models have, by and large, been limited to simple sentences with small vocabularies (cf. St. John & McClelland, 1990). Most models that have addressed the problem of complex, multi-clausal sentence processing have been prediction networks (cf. Elman, 1991; Christiansen & Chater, 1999a). Although a useful component of a language processing system, prediction does not get at the heart of language: the interface between syntax and semantics.
Computing in Cognitive Science
, 1989
"... Introduction Nobody doubts that computers have had a profound influence on the study of human cognition. The very existence of a discipline called Cognitive Science is a tribute to this influence. One of the principal characteristics that distinguishes Cognitive Science from more traditional studies ..."
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Cited by 18 (0 self)
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Introduction Nobody doubts that computers have had a profound influence on the study of human cognition. The very existence of a discipline called Cognitive Science is a tribute to this influence. One of the principal characteristics that distinguishes Cognitive Science from more traditional studies of cognition within Psychology, is the extent to which it has been influenced by both the ideas and the techniques of computing. It may come as a surprise to the outsider, then, to discover that there is no unanimity within the discipline on either (a) the nature (and in some cases the desireabilty) of the influence and (b) what computing is --- or at least on its -- essential character, as this pertains to Cognitive Science. In this essay I will attempt to comment on both these questions. The first question will bring us to a discussion of the role that computing plays in our understanding of human (and perhaps animal) cognition. I wi
Integrating knowledge sources in language comprehension
- In Proceedings of the Thirteenth Annual Conference of the Cognitive Science Society
, 1991
"... Multiple types of knowledge (syntax, semantics, pragmatics, etc.) contribute to establishing the meaning of an utterance. Immediate application of these knowledge sources is necessary to satisfy the real-time constraintof 200to 300words per minute for adultcomprehension, since delaying the use of a ..."
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Cited by 18 (8 self)
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Multiple types of knowledge (syntax, semantics, pragmatics, etc.) contribute to establishing the meaning of an utterance. Immediate application of these knowledge sources is necessary to satisfy the real-time constraintof 200to 300words per minute for adultcomprehension, since delaying the use of a knowledge source introduces computational inefficiencies in the form of overgeneration. On the other hand, ensuring that all relevant knowledge is brought to bear as each word in the sentence is understood is a difficult design problem. As a solution to this problem, we present NL-Soar, a language comprehension system that integrates disparate knowledge sources automatically. Through experience, the nature of the understanding process changes from deliberate, sequential problem solving to recognitional comprehension that applies all the relevant knowledge sources simultaneously to each word. The dynamic character of the system results directly from its implementation within the Soar architecture.
Concurrent lexicalized dependency parsing: the ParseTalk model
- COLING ‘94: Proc. 15th Intl. Conf. on Computational Linguistics (this volume
, 1994
"... Abstract. A grammar model for concurrent, object-oriented natural language parsing is introduced. Complete lexical distribution of grammatical knowledge is achieved building upon the head-oriented notions of valency and dependency, while inheritance mechanisms are used to capture lexical generalizat ..."
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Cited by 17 (9 self)
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Abstract. A grammar model for concurrent, object-oriented natural language parsing is introduced. Complete lexical distribution of grammatical knowledge is achieved building upon the head-oriented notions of valency and dependency, while inheritance mechanisms are used to capture lexical generalizations. The underlying concurrent computation model relies upon the actor paradigm. We consider message passing protocols for establishing dependency relations and ambiguity handling. 1
A PDP Approach to Processing Center-Embedded Sentences
- In Proceedings of the Fourteenth Annual Meeting of the Cognitive Science Society
, 1992
"... Recent PDP models have been shown to have great promise in contributing to the understanding of the mechanisms which subserve language processing. In this paper we address the specific question of how multiply embedded sentences might be processed. It has been shown experimentally that comprehension ..."
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Cited by 16 (2 self)
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Recent PDP models have been shown to have great promise in contributing to the understanding of the mechanisms which subserve language processing. In this paper we address the specific question of how multiply embedded sentences might be processed. It has been shown experimentally that comprehension of center-embedded structures is poor relative to right-branching structures. It also has been demonstrated that this effect can be attenuated, such that the presence of semantically constrained lexical items in center-embedded sentences improves processing performance. This raises two questions: (1) What is it about the processing mechanism that makes center-embedded sentences relatively difficult? (2) How are the effects of semantic bias accounted for? Following an approach outlined in Elman (1990, 1991), we train a simple recurrent network in a prediction task on various syntactic structures, including center-embedded and right-branching sentences. As the results show, the behavior of ...

