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Dive into the research topics where Xiaohui Tao is active.

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Featured researches published by Xiaohui Tao.


IEEE Transactions on Knowledge and Data Engineering | 2011

A Personalized Ontology Model for Web Information Gathering

Xiaohui Tao; Yuefeng Li; Ning Zhong

As a model for knowledge description and formalization, ontologies are widely used to represent user profiles in personalized web information gathering. However, when representing user profiles, many models have utilized only knowledge from either a global knowledge base or a user local information. In this paper, a personalized ontology model is proposed for knowledge representation and reasoning over user profiles. This model learns ontological user profiles from both a world knowledge base and user local instance repositories. The ontology model is evaluated by comparing it against benchmark models in web information gathering. The results show that this ontology model is successful.


web intelligence | 2007

Ontology Mining for Personalized Web Information Gathering

Xiaohui Tao; Yuefeng Li; Ning Zhong; Richi Nayak

Due to the lack of semantic descriptions of the Web services, the search results returned by the service registries are effectively inadequate. This paper presents the Semantic Web services Clustering (SWSC) method that extends the semantic representation of services and groups the similar Web services in order to improve the service discovery. The empirical analysis shows the improvement in service discovery with the use of SWSC.


computer supported cooperative work in design | 2013

Sentiment analysis on tweets for social events

Xujuan Zhou; Xiaohui Tao; Jianming Yong; Zhenyu Yang

Sentiment analysis or opinion mining is an important type of text analysis that aims to support decision making by extracting and analyzing opinion oriented text, identifying positive and negative opinions, and measuring how positively or negatively an entity (i.e., people, organization, event, location, product, topic, etc.) is regarded. As more and more users express their political and religious views on Twitter, tweets become valuable sources of peoples opinions. Tweets data can be efficiently used to infer peoples opinions for marketing or social studies. This paper proposes a Tweets Sentiment Analysis Model (TSAM) that can spot the societal interest and general peoples opinions in regard to a social event. In this paper, Australian federal election 2010 event was taken as an example for sentiment analysis experiments. We are primarily interested in the sentiment of the specific political candidates, i.e., two primary minister candidates - Julia Gillard and Tony Abbot. Our experimental results demonstrate the effectiveness of the system.


World Wide Web | 2014

Outlier detection from large distributed databases

Ji Zhang; Xiaohui Tao; Hua Wang

In this paper, we present an innovative system, coined as DISTROD (a.k.a DISTRibuted Outlier Detector), for detecting outliers, namely abnormal instances or observations, from multiple large distributed databases. DISTROD is able to effectively detect the so-called global outliers from distributed databases that are consistent with those produced by the centralized detection paradigm. DISTROD is equipped with a number of optimization/boosting strategies which empower it to significantly enhance its speed performance and reduce its communication overhead. Experimental evaluation demonstrates the good performance of DISTROD in terms of speed and communication overhead.


Web Intelligence and Agent Systems: An International Journal | 2010

A knowledge-based model using ontologies for personalized web information gathering

Xiaohui Tao; Yuefeng Li; Ning Zhong

Nowadays, how to gather useful and meaningful information from the Web has become challenging to all users because of the explosion in the amount of Web information. However, the mainstream of Web information gathering techniques has many drawbacks, as they are mostly keyword-based. It is argued that the performance of Web information gathering systems can be significantly improved if user background knowledge is discovered and a knowledge-based methodology is used. In this paper, a knowledge-based model is proposed for Web information gathering. The model uses a world knowledge base and user local instance repositories for user profile acquisition and the capture of user information needs. The knowledge-based model was successfully evaluated by comparing a manually implemented user concept model. The proposed knowledge-based model contributes to better designs of knowledge-based and personalized Web information gathering systems.


web intelligence | 2008

An Ontology-Based Framework for Knowledge Retrieval

Xiaohui Tao; Yuefeng Li; Ning Zhong; Richi Nayak

Retrieving accurate information from the Web is a great challenge to users. The existing information retrieval systems are mostly term-based and thus need to be enhanced toward knowledge-based. User information needs need to be better captured in order to deliver personalized search results. In this paper, an ontology-based framework is proposed for capturing user information needs using a world knowledge base and the users local instance repository. The framework aims to discover a users background knowledge for knowledge retrieval. The evaluation result is encouraging, in which the proposed model achieved the same performance as a manual user model.


web intelligence | 2016

An intelligent recommender system based on predictive analysis in telehealthcare environment

Raid Lafta; Ji Zhang; Xiaohui Tao; Yan Li; Vincent S. Tseng; Yonglong Luo; Fulong Chen

The use of intelligent technologies for providing useful recommendations to patients suffering chronic diseases may play a positive role in improving the general life quality of patients and help reduce the workload and cost involved in their daily healthcare. The objective of this study is to develop an intelligent recommender system based on predictive analysis for advising patients in the telehealth environment concerning whether they need to take the body test one day in advance by analyzing medical measurements of a patient for the past k days. The proposed algorithms supporting the recommender system have been validated using a time series telehealth data recorded from heart disease patients which were collected from May to January 2012, from our industry collaborator Tunstall. The experimental results show that the proposed system yields satisfactory recommendation accuracy and offer a promising way for saving the workload for patients to conduct body tests every day. This study highlights the possible usefulness of the computerized analysis of time series telehealth data in providing appropriate recommendations to patients suffering chronic diseases such as heart diseases patients.


knowledge science engineering and management | 2009

Concept-Based, Personalized Web Information Gathering: A Survey

Xiaohui Tao; Yuefeng Li

Web information gathering surfers from the problems of information mismatching and overloading. In an attempt to solve these fundamental problems, many works have proposed to use concept-based techniques to perform personalized information gathering for Web users. These works have significantly improved the performance of Web information gathering systems. In this paper, a survey is conducted on these works. The reviewed scholar report that the concept-based, personalized techniques can gather more useful and meaningful information for Web users. The survey also suggests that improvement is needed for the representation and acquisition of user profiles in personalized Web information gathering.


conference on information and knowledge management | 2008

Effective pattern taxonomy mining in text documents

Yuefeng Li; Sheng-Tang Wu; Xiaohui Tao

Many data mining techniques have been proposed for mining useful patterns in databases. However, how to effectively utilize discovered patterns is still an open research issue, especially in the domain of text mining. Most existing methods adopt term-based approaches. However, they all suffer from the problems of polysemy and synonymy. This paper presents an innovative technique, pattern taxonomy mining, to improve the effectiveness of using discovered patterns for finding useful information. Substantial experiments on RCV1 demonstrate that the proposed solution achieves encouraging performance.


web intelligence | 2006

Automatically Acquiring Training Sets for Web Information Gathering

Xiaohui Tao; Yuefeng Li; Ning Zhong; Richi Nayak

The traditional techniques rely on human effort to acquire training sets, which is expensive and inefficient. In this paper we present an alternative method to automatically acquire training sets without heavy investment of user efforts. The proposed method tends to fill a gap for effectiveness of using Web data in Web mining, and contributes to Web information gathering. The evaluation shows that the method is adequate to yield an promising achievement

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Ji Zhang

University of Southern Queensland

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Yuefeng Li

Queensland University of Technology

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Jianming Yong

University of Southern Queensland

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Guangyuan Wang

University of Southern Queensland

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Raid Lafta

University of Southern Queensland

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Ning Zhong

Maebashi Institute of Technology

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Richi Nayak

Queensland University of Technology

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Xujuan Zhou

Queensland University of Technology

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Yan Li

University of Southern Queensland

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Yan Shen

Queensland University of Technology

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