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      • KCI등재

        웹검색 행태 연구 - 사용자가 스스로 쿼리를 뭉치는 방법으로 -

        이중식 한국문헌정보학회 2011 한국문헌정보학회지 Vol.45 No.2

        Web search behavior has evolved. People now search using many diverse information devices in various situations. To monitor these scattered and shifting search patterns, an improved way of learning and analysis are needed. Traditional web search studies relied on the server transaction logs and single query instance analysis. Since people use multiple smart devices and their searching occurs intermittently through a day, a bundled query research could look at the whole context as well as penetrating search needs. To observe and analyze bundled queries, we developed a proprietary research software set including a log catcher, query bundling tool, and bundle monitoring tool. In this system, users’ daily search logs are sent to our analytic server, every night the users need to log on our bundling tool to package his/her queries, a built in web survey collects additional data, and our researcher performs deep interviews on a weekly basis. Out of 90 participants in the study, it was found that a normal user generates on average 4.75 query bundles a day, and each bundle contains 2.75 queries. Query bundles were categorized by; Query refinement vs. Topic refinement and 9 different sub-categories. 검색이 편재화 되고 있다. 사용자들은 PC를 너머 스마트폰과 스마트TV에서도 검색을 일상적으로 사용하고 있다. 따라서 사용자의 검색행태도 진화 중이다. 하지만 검색행태 연구는 서버의 트랜잭션 로그(transaction log)를 기반으로 하거나 사용자 로그(user log)를 관찰하는 경우에도 개별 쿼리(query instance)를 분석단위로 삼기에 여러 매체와 여러 시간을 가로지르는 검색 행태를 분석하기에 부족하다. 본 연구에서는 사용자가 직접 덩어리 지운 쿼리 뭉치(bundled query)를 살펴보아 시간과 매체를 가로지르며 궁금증을 해결해 나가는 사용자의 검색행동을 분석해 보았다. 연구를 위해 사용자 PC에 웹로그 캐처를 설치하고, 취합된 웹검색 기록을 사용자들이 직접 덩어리 지워 같은 궁금증을 가진 뭉치를 만들도록 하였다. 또한 각 뭉치에 대한 설문을 통해 검색의 동기, 계기, 만족도 및 검색 후 활동을 조사하였다. 사용자에 의해 만들어진 뭉치는 전화 인터뷰를 통해 검증하였고 맥락을 확인하였다. 뭉치를 통한 인터뷰는 검색 당시의 기억을 떠올리는 힌트로 작용하여 사용자의 검색 회상을 생생하게 하였다. 분석 결과 사용자들은 하루에 평균 4.75개의 검색 뭉치를 발생시키고, 각각의 검색 뭉치는 평균 2.75개의 쿼리로 구성되어 있음을 확인할 수 있었다. 또한 뭉치 내 쿼리의 발전을 ‘쿼리의 정교화’와 ‘주제의 정교화’라는 상위 범주 아래 9개의 패턴으로 확인하였다.

      • KCI등재

        An Efficient Indexing Structure for Multidimensional Categorical Range Aggregation Query

        ( Jian Yang ),( Chongchong Zhao ),( Chao Li ),( Chunxiao Xing ) 한국인터넷정보학회 2019 KSII Transactions on Internet and Information Syst Vol.13 No.2

        Categorical range aggregation, which is conceptually equivalent to running a range aggregation query separately on multiple datasets, returns the query result on each dataset. The challenge is when the number of dataset is as large as hundreds or thousands, it takes a lot of computation time and I/O. In previous work, only a single dimension of the range restriction has been solved, and in practice, more applications are being used to calculate multiple range restriction statistics. We proposed MCRI-Tree, an index structure designed to solve multi-dimensional categorical range aggregation queries, which can utilize main memory to maximize the efficiency of CRA queries. Specifically, the MCRI-Tree answers any query in O(nkn-1) I/Os (where n is the number of dimensions, and k denotes the maximum number of pages covered in one dimension among all the n dimensions during a query). The practical efficiency of our technique is demonstrated with extensive experiments.

      • KCI등재

        A Hybrid Query Disambiguation Adaptive Approach for Web Information Retrieval

        ( Roliana Ibrahim ),( Shahid Kamal ),( Imran Ghani ),( Seung Ryul Jeong ) 한국인터넷정보학회 2015 KSII Transactions on Internet and Information Syst Vol.9 No.7

        In web searching, trustable and precise results are greatly affected by the inherent uncertainty in the input queries. Queries submitted to search engines are by nature ambiguous and constitute a significant proportion of the instances given to web search engines. Ambiguous queries pose real challenges for the web search engines due to versatility of information. Temporal based approaches whereas somehow reduce the uncertainty in queries but still lack to provide results according to users aspirations. Web search science has created an interest for the researchers to incorporate contextual information for resolving the uncertainty in search results. In this paper, we propose an Adaptive Disambiguation Approach (ADA) of hybrid nature that makes use of both the temporal and contextual information to improve user experience. The proposed hybrid approach presents the search results to the users based on their location and temporal information. A Java based prototype of the systems is developed and evaluated using standard dataset to determine its efficacy in terms of precision, accuracy, recall, and F1-measure. Supported by experimental results, ADA demonstrates better results along all the axes as compared to temporal based approaches.

      • Query Categorization from Web Search Logs Using Machine Learning Algorithms

        Christian Højgaard,Joachim Sejr,Yun-Gyung Cheong 보안공학연구지원센터 2016 International Journal of Database Theory and Appli Vol.9 No.9

        This paper presents a data-driven methodology to disambiguate a query by suggesting relevant subcategories within a specific domain. This is achieved by finding correlations between the user’s search history and the context of the current search keyword. We apply automatic categorization on each query to identify a list of categories which can describe the query given. To predict the categories of a user input query, we employed machine learning algorithms. We present the preliminary evaluation results and conclude with future work.

      • Supporting personalized ranking over categorical attributes

        You, G.w.,Hwang, S.w.,Yu, H. North-Holland [etc ; Elsevier Science Ltd 2008 Information sciences Vol.178 No.18

        This paper studies how to enable an effective ranked retrieval over data with categorical attributes, in particular, by supporting personalized ranked retrieval of highly relevant data. While ranked retrieval has been actively studied lately, existing efforts have focused only on supporting ranking over numerical or text data. However, many real-life data contain a large amount of categorical attributes, in combination with numerical and text attributes, which cannot be efficiently supported - unlike numerical attributes where a natural ordering is inherent, the existence of categorical attributes with no such ordering complicates both the formulation and processing of ranking. This paper studies the efficient and effective support of ranking over categorical data, as well as uniform support with other types of attributes.

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