286 research outputs found
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Question Asking During Learning wit a Point and Query Interface
Educational software would benefit from question asking facilities that are theoretically grounded in psychology, education, and artificial intelligence. Our previous research has investigated the psychological mechanisms of question asking and has developed a computationally tractable model of human question answering. We have recently developed a Point and Query (P&Q) human-computer interface based on this research. With the P & Q software, the student asks a question by simply pointing to a word or picture element and then to a question chosen from a menu of "good" questions associated with the element. This study examined students' question asking over time, using the P & Q software, while learning about woodwind instruments. While learning, the students were expected to solve tasks that required either deep-level causal knowledge or superficial knowledge. The frequency of questions asked with the P & Q interface was approximately 800 limes the number of questions asked per student per hour in a classroom. The learning goals directly affected the ordering of questions over time. For example, students did not ask deep-level causal questions unless that knowledge was necessary to achieve the learning goal
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Contextual Representation of Abstract Nouns: A Neural Network Approach
This paper explores the use of an artificial neural network to investigate the mental representation of abstract noun meanings. Unlike concrete nouns, abstract nouns refer to entities that cannot be pointed to. Cues to their meaning must therefore be in their context of use. It has frequently been shown that the meaning of a word varies with its contexts of use. It is more difficult, however, to identify which elements of context are relevant to a word's meaning. The present study demonstrates that a connectionist network can be used to examine this problem. A feedforward network learned to distinguish among seven abstract nouns based on characteristics of their verbal contexts in a corpus of randomly selected sentences. The results suggest that, for our sample, the contextual representation of abstract nouns is in principle sufficient to identify and distinguish abstract nouns and thus meets the functional requirements of concept representation
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Question Answering in the Context of Illustrated Expository Text
We investigated how college students answer questions
about the content of illustrated expository text. Subjects
studied illustrated texts describing causal event chains that
unfold during the operation of everyday machines.
Subjects subsequently provided written answers to
questions about events occurring in each machine. Four
types of questions were asked: why did event X occur?.
how did X occur?, what are the consequences pf X
occurring?, and what if X didn't occur?. In our analysis of
the answer protocols, we adopted the theoretical framework
of the QUES T model of human question answering
(Graesser & Franklin, 1990). The present study supported
predictions generated from three components of the QUEST
model: question categorization, utilization of information
sources, and convergence principles. Our results also
revealed two novel findings. First, subjects had a bias
toward sampling information from the text more than from
the picture. Second, subjects tended to sample infontiation
depicted in both the text and the picture
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Question Answering in the Context of Causal Mechanisma
model of human question answering (called QUEST) accounts for the answers that adults produce when they answer different categories of open-class questions (such as why, how, when, what-enabled, and what-are-the-consequences). This project investigated the answers that adults generate when events are queried in the context of biological, technological, and physical mechanisms. According to QUEST, an event sequence in a scientific mechanism is represented as a causal network of events and states; a teleological goal hierarchy may also be superimposed on the causal network in biological and technological domains, but not in physical systems (e.g., rainfall, earthquake). When questions are answered, QUEST systematically operates on the causal networks and goal hierarchies that underlie a causal mechanism. Answers to how and enablement questions sample causal antecedents of the queried event in the causal network; consequence questions sample causal consequents. Answers to when questions sample antecedents to a greater extent than consequents even though events from both directions fumish sensible answers. Answers to why questions sample both causal antecedents in the causal network and superordinate goals from goal hierarchies that exist in technological and biological knowledge structures
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Inferring the Meaning of Verbs from Context
This paper describes a cross-disciplinary extension of previous work on infeiring the meanings of unknown verbs from context. In earlier work, a computational model was developed to incrementally infer meanings while processing texts in an information extraction task setting. In order to explore the space of possible predictors that the system could use to infer verb meanings, we performed a statistical analysis of the corpus that had been used to test the computational system. There were various syntactic and semantic features of the verbs that were significantly diagnostic in detemiining verb meaning. We also evaluated human performance at inferring the verb in the same set of sentences. The overall number of correct predictions for humans was quite similar to that of the computational system, but humans had higher precision scores. The paper concludes with a discussion of the implications of these statistical and experimental findings for future computational work
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Assessing student contributions in a simulated human tutor with Latent Semantic Analysis
Question Generation from Concept Maps
In this paper we present a question generation approach suitable for tutorial dialogues. The approach is based on previous psychological theories that hypothesize questions are generated from a knowledge representation modeled as a concept map. Our model automatically extracts concept maps from a textbook and uses them to generate questions. The purpose of the study is to generate and evaluate pedagogically-appropriate questions at varying levels of specificity across one or more sentences. The evaluation metrics include scales from the Question Generation Shared Task and Evaluation Challenge and a new scale specific to the pedagogical nature of questions in tutoring
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