• Title/Summary/Keyword: 질문의 유형

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Types and Frequencies of Questions - Answers by Middle School Students in a Small Group Activities During School Experiments (소집단 실험활동에 나타난 중학생 질문 - 응답의 유형과 빈도)

  • Lee, Myoung-Sook;Jo, Kwang-Hee;Song, Jin-Woong
    • Journal of The Korean Association For Science Education
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    • v.24 no.2
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    • pp.277-286
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    • 2004
  • This study investigated the types and frequencies of student-student questioning (SSQ) in a small group activities, 5 in one group or 2 in one group, during school experiments. Five girls of seventh grade were observed during school experiments and interviewed afterward. Between students, information-type questions were asked more frequently than thought-type questions. Most of the information-type questions were procedural ones and most of the thought-type questions were comprehension ones. However, thought-type questions did not make further discussion in the activities. The rate of answers in the case of 2 in one group was higher than that of 5 in one group. Moreover, the similar tendency was found when we investigated the rate of helpful question-answers. In a pair, lower achiever usually asked questions, not answered as much as in 5 in one group, and higher achiever answered. The frequency of SSQ in a pair was relatively low when there was a big difference of science achievements between pair members. In conclusion, information-type questions were asked more frequently than thought-type questions during school experiments and the rate of helpful question-answers was higher when group members was fewer.

The Effects of Authentic Open Inquiry on Cognitive Reasoning through an Analysis of Types of Student-generated Questions (학생들이 제시한 질문의 유형 분석을 통한 개방적 참탐구 활동의 인지적 추론 측면의 효과)

  • Kim, Mi-Kyung;Kim, Heui-Bafk
    • Journal of The Korean Association For Science Education
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    • v.27 no.9
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    • pp.930-943
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    • 2007
  • The purpose of this study was to investigate if students may actually experience scientific reasoning based on an epistemology of authentic science during authentic open inquiry. The samples were 86 10th graders in a science-high school in Seoul. The experimental group practiced authentic open inquiry and the control group practiced traditional school science inquiry in five weeks. Then, the questions students asked while performing inquiry tasks were analyzed. The frequency of the questions asked by students was almost same between two groups, however, the types of questions were different. The frequency of thinking questions in experimental group was higher than the control, and the difference was statistically significant (P<.01). Particularly, the frequency of expansive thinking questions and anomaly detection questions was much higher in experimental than the control group. Judging from the result, with the students from the experimental group asking questions reflecting on the epistemology of authentic science such as scientific methods, anomalous data, and uncertainty about reasoning, students may understand authentic science features during the activities of open authentic inquiry. The result from comparing questions according to the inquiry subject showed that more openness caused the higher frequency of anomaly detection questions and strategy questions, but that inductive thinking questions and analogical thinking questions were connected to inquiry subject rather than the openness of the inquiry.

Content Analysis of Collaborative Digital Reference Service Knowledge Information Database (협력형 디지털 참고서비스(CDRS) 지식정보DB 내용분석 연구)

  • Jang, Su Hyun;Nam, Young Joon
    • Journal of the Korean BIBLIA Society for library and Information Science
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    • v.32 no.2
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    • pp.101-123
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    • 2021
  • This study analyses the questions and answers contained in the Knowledge Information Database of the collaborative digital reference service, 'Ask a librarian'. And based on the results of status of user requests, this study draws information usage behavior in the early stages of the service was derived. 1,124 Knowledge Information Database items out of 3,506 cases was analyzed by nine criterion. ① Number of questions and whether to be reference questions, ② Subject and keywords of the question, ③ Purpose of the question, ④ Type of question, ⑤ User's information request, ⑥ Information source and reference services provided by the librarian, ⑦ Number of days to answer, ⑧ Level of the participating library, ⑨ Question type by topic. As a results of analysis, first, users asked for reference questions from various topics as needed, rather than one from a similar topic at a time, but more than half of the total pure reference questions were from the field of library information science. Second, about 71.35% of users were using the 'Ask a librarian' service to recommend a list of information resources related to a particular topic or research problem, and there were also questions that required consultation on the reading situation. Third, the most preferred sources of information for users were bibliography, and in the case of online information sources, users did not relatively prefer them. Fourth, the number of days required to answer was able to confirm significant differences depending on the type of question and the level of the participating library. Fifth, 31.33% of the purpose of the general field question showed that were self-generated.

Open-domain Question Answering Using Lexico-Semantic Patterns (Lexico-Semantic Pattern을 이용한 오픈 도메인 질의 응답 시스템)

  • Lee, Seung-Woo;Jung, Han-Min;Kwak, Byung-Kwan;Kim, Dong-Seok;Cha, Jeong-Won;An, Joo-Hui;Lee, Gary Geun-Bae;Kim, Hark-Soo;Kim, Kyung-Sun;Seo, Jung-Yun
    • Annual Conference on Human and Language Technology
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    • 2001.10d
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    • pp.538-545
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    • 2001
  • 본 연구에서는 오픈 도메인에서 동작할 수 있는 질의 응답 시스템(Open-domain Question Answer ing System)을 구현하고 영어권 TREC에 참가한 결과를 기술하였다. 정답 유형을 18개의 상위 노드를 갖는 계층구조로 분류하였고, 질문 처리에서는 LSP(Lexico-Semantic Pattern)으로 표현된 문법을 사용하여 질문의 정답 유형을 결정하고, lemma 형태와 WordNet 의미, stem 형태의 3가지 유형의 키워드로 구성된 질의를 생성한다. 이 질의를 바탕으로, 패시지 선택에서는 문서검색 엔진에 의해 검색된 문서들을 문장단위로 나눠 정수를 계산하고, 어휘체인(Lexical Chain)을 고려하여 인접한 문장을 결합하여 패시지를 구성하고 순위를 결정한다. 상위 랭크의 패시지를 대상으로, 정답 처리에서는 질문의 정답 유형에 따라 품사와 어휘, 의미 정보로 기술된 LSP 매칭과 AAO (Abbreviation-Appositive-Definition) 처리를 통해 정답을 추출하고 정수를 계산하여 순위를 결정한다. 구현된 시스템의 성능을 평가하기 위해 TREC10 QA Track의 main task의 질문들 중, 200개의 질문에 대해 TRIC 방식으로 자체 평가를 한 결과, MRR(Mean Reciprocal Rank)은 0.341로 TREC9의 상위 시스템들과 견줄 만한 성능을 보였다.

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A study on the Construction of Annotated corpora for the Automatic Classification of Open Domain Queries (오픈도메인 질의문 자동 분류를 위한 주석 말뭉치 구축 연구)

  • Ahn, AeLim;Lee, SeoJin;Choi, DongHyun;Kim, EungGyun;Nam, JeeSun
    • Annual Conference on Human and Language Technology
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    • 2019.10a
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    • pp.309-314
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    • 2019
  • 본 연구는 오픈도메인 자연어 질의문 유형을 '질문 초점(Question Focus)'에 따라 분류하고, 기계학습 기반 질의문 유형 분류기의 성능 향상을 위한 주석 말뭉치 구축을 목표로 한다. 오픈도메인 질의문 분석을 통해 의문사 등의 키워드 기반 질의문 유형 분류의 한계를 설명하고, 질의문 내의 비명시적인 의미자질을 고려한 질문 초점 기반 질의문 유형 분류 기준을 정의하였다. 이 기준에 따라 구축된 112,856 문장의 주석 말뭉치를 기계학습(CNN) 기반 문장 분류 시스템의 학습 데이터로 사용하여 실험한 결과 F1-Score 97.72%성능을 보였다. 또한 이를 카카오 오픈도메인 질의응답시스템에 적용하여 질의문 확장을 위한 의미 자질로 사용하였고 그 결과 전체 시스템 성능을 1.6%p 향상시켰다.

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A Study on Students' Questioning Activity in Science Classes (II) - Analysis of the Patterns of Students' Questions - (과학 수업에서의 학생 질문에 대한 연구(II) - 학생 질문의 유형별 분석 -)

  • Kim, Sung-Geun;Yeo, Sang-Ihn;Woo, Kyu-Whan
    • Journal of The Korean Association For Science Education
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    • v.19 no.4
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    • pp.560-569
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    • 1999
  • This study was conducted with two science classes of the 8th grade students in Seoul during 4 weeks. The numbers of students in the classes were 37 and 38, and they were taught for 12 class hours. Questions obtained for 12 class hours from 75 students were analyzed and grouped into patterns. All together 1.108 questions from the students were classified into six categories: 'No Connection' (7%). 'Contradiction' (3%), 'Recall' (23%), 'Reframe' (40%), 'Application' (18%), and 'Extension' (9%). Irrelevant questions to learning and questions of false proposition were classified into 'No Connection' and 'Contradiction', respectively. Questions repeating what were already explained were grouped into 'Recall'. Those requiring other examples and/or additional explanations were grouped into 'Reframe'. Those requiring practical applications and/or explanations for other concrete facts were grouped into 'Application'. Finally. Questions for higher and/or other concepts were grouped into 'Extension'. We also discussed educational implications of the above categorized questions in this study.

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Question and Answering System through Search Result Summarization of Q&A Documents (Q&A 문서의 검색 결과 요약을 활용한 질의응답 시스템)

  • Yoo, Dong Hyun;Lee, Hyun Ah
    • KIPS Transactions on Software and Data Engineering
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    • v.3 no.4
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    • pp.149-154
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    • 2014
  • A user should pick up relevant answers by himself from various search results when using user participation question answering community like Knowledge-iN. If refined answers are automatically provided, usability of question answering community must be improved. This paper divides questions in Q&A documents into 4 types(word, list, graph and text), then proposes summarizing methods for each question type using document statistics. Summarized answers for word, list and text type are obtained by question clustering and calculating scores for words using frequency, proximity and confidence of answers. Answers for graph type is shown by extracting user opinion from answers.

Answer Recommendation for Knowledge Search using Term Frequency (어휘 빈도를 활용한 지식 검색에서의 답변 추천 시스템)

  • Lee, Ho-Chang;Tak, Hyun-Ki;Lee, Hyun-Ah
    • Proceedings of the Korean Information Science Society Conference
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    • 2012.06b
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    • pp.315-317
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    • 2012
  • 지식iN 등의 지식검색 서비스는 잘못된 답변으로 인한 낮은 신뢰성과 다수의 중복 답변 등의 문제점을 가진다. 질의문 '세상에서 가장 큰 나라'에 대해서 관련된 모든 질문과 답변을 제시하지 않고 질의문과 관련된 다수의 답변을 분석하여 답변 '러시아'를 추천하여 제시할 수 있다면 지식검색의 효용성과 신뢰성이 크게 향상될 수 있다. 본 논문에서는 질문-답변의 유형을 단어, 글, 도표, 목록의 네가지로 분류하고, 그 중 단어 유형에 대한 답변 추천 방법을 제시한다. 질의문에 대해 검색된 질문을 군집화하고, 질문에 대한 답변들에 대해서 TF, IDF, 어휘간 거리 정보를 다양하게 결합하여 어휘의 점수를 계산한다. 각 군집에서 가장 높은 점수를 가지는 어휘를 해당 군집에서 가장 중요한 어휘로 보고 추천 정답으로 제시한다. 단어 유형인 질문 100개에 대한 네이버 지식iN에 대한 시스템 평가에서 추천된 상위 1위에 대해서는 68%의 정답률을, 상위 5위까지에 대해서는 89%의 정답률을 보였다.

Influences of Enneagram Personality Types on OPAC Searching and Satisfaction (에니어그램 성격 유형에 따른 OPAC 탐색 성향과 만족도)

  • Jung, Young-Mi
    • Journal of the Korean Society for information Management
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    • v.29 no.3
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    • pp.169-186
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    • 2012
  • This study examined the relation between personality types and users' searching trait and satisfaction when interacting with OPAC system. In this study, personality type was measured by the KEPTI Enneagram tools. Data was collected through four questionnaires, pre-test, TaskA, TaskB, and post-test survey. The results indicated that there was a statistically significant difference in perceptions on the expected ease of search, completion time, adequacy of search time, usefulness of search results, and performed ease of search within the Three Triads of Enneagram. Also a statistically significant difference was found on familiarity and interest in the selected queries within the Hornivian group.

Deep Learning-based Person Analysis in Oriental Painting for Supporting Famous Painting Habruta (명화 하브루타 지원을 위한 딥러닝 기반 동양화 인물 분석)

  • Moon, Hyeyoung;Kim, Namgyu
    • The Journal of the Korea Contents Association
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    • v.21 no.9
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    • pp.105-116
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    • 2021
  • Habruta is a question-based learning that talks, discusses, and argues in pairs. In particular, the famous painting Habruta is being implemented for the purpose of enhancing the appreciation ability of paintings and enriching the expressive power through questions and answers about the famous paintings. In this study, in order to support the famous painting Habruta for oriental paintings, we propose a method of automatically generating questions from the gender perspective of oriental painting characters using the current deep learning technology. Specifically, in this study, based on the pre-trained model, VGG16, we propose a model that can effectively analyze the features of Asian paintings by performing fine-tuning. In addition, we classify the types of questions into three types: fact, imagination, and applied questions used in the famous Habruta, and subdivide each question according to the character to derive a total of 9 question patterns. In order to verify the feasibilityof the proposed methodology, we conducted an experiment that analyzed 300 characters of actual oriental paintings. As a result of the experiment, we confirmed that the gender classification model according to our methodology shows higher accuracy than the existing model.