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Wang-Chien Lee

Bio: Wang-Chien Lee is an academic researcher from Pennsylvania State University. The author has contributed to research in topics: Wireless sensor network & Nearest neighbor search. The author has an hindex of 60, co-authored 366 publications receiving 14123 citations. Previous affiliations of Wang-Chien Lee include Ohio State University & Verizon Communications.


Papers
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Proceedings ArticleDOI
28 Mar 2011
TL;DR: A travelogue service to discover and convey various travelogue digests, in form of theme locations and geographical scope to their readers, and explores the textual and geographical features of locations to perform location relevance classification for theme location discovery.
Abstract: In this paper, we aim to develop a travelogue service to discover and convey various travelogue digests, in form of theme locations and geographical scope to their readers. In this service, theme locations in a travelogue are the core information to discover. Due to the inherent ambiguity of location relevance, we explore the textual (e.g., surrounding words) and geographical (e.g., geographical relationship among locations) features of locations to perform location relevance classification for theme location discovery. Finally, we conduct comprehensive experiments on collected travelogues to evaluate the performance of our location relevance classification technique and demonstrate the effectiveness of the travelogue service.

3 citations

Proceedings ArticleDOI
19 Oct 2020
TL;DR: This paper introduces Multi-Stream Party (MSP) and forms a new multi-streaming recommendation problem, called Donation and MSP Recommendation (DAMRec), and proposes Multi-stream Party Recommender System (MARS) to extract latent features via socio-temporal coupled donation-response tensor factorization for donation and M SP recommendations.
Abstract: In contrast to traditional online videos, live multi-streaming supports real-time social interactions between multiple streamers and viewers, such as donations. However, donation and multi-streaming channel recommendations are challenging due to complicated streamer and viewer relations, asymmetric communications, and the tradeoff between personal interests and group interactions. In this paper, we introduce Multi-Stream Party (MSP) and formulate a new multi-streaming recommendation problem, called Donation and MSP Recommendation (DAMRec). We propose Multi-stream Party Recommender System (MARS) to extract latent features via socio-temporal coupled donation-response tensor factorization for donation and MSP recommendations. Experimental results on Twitch and Douyu manifest that MARS significantly outperforms existing recommenders by at least 38.8% in terms of hit ratio and mean average precision.

3 citations

Proceedings Article
10 Jun 2007
TL;DR: This year's MobiDE'07 in Beijing continues its tradition of being the premier forum for researchers and technologists to discuss the state-of-the-art, present research results, experiences and contributions, and setting future directions in data management for mobile and wireless access.
Abstract: Welcome to MobiDE'07 in Beijing! This is the sixth of a successful series of workshops that aim to bring together the data management, wireless networking, and mobile computing communities. This year's workshop, held in conjunction with SIGMOD 2007, continues its tradition of being the premier forum for researchers and technologists to discuss the state-of-the-art, present research results, experiences and contributions, and setting future directions in data management for mobile and wireless access. It is very fitting to have MOBIDE 2007 in Beijing, one year before the Olympic capital is engaged in a very ambitious process of enabling extensive tourist information to mobile users through the Olympia 2008 project. The workshop program presents new and controversial research ideas so as to foster interaction among researchers from around the world. The call for papers attracted 28 submissions. All submissions were reviewed by at least 3 members of the Program Committee. Many of these submissions were of very high quality, making the selection process quite competitive. As a result, 9 submissions were accepted as full papers, and 2 submissions that reported on promising works in progress were accepted as poster papers.

3 citations

Proceedings ArticleDOI
11 Jul 2021
TL;DR: A novel Citation Network and Event Sequence (CINES) Model is proposed to encode signals in the citation network and related citation event sequences into various types of embeddings for decoding to the arrivals of future citations.
Abstract: Citations of scientific papers and patents reveal the knowledge flow and usually serve as the metric for evaluating their novelty and impacts in the field. Citation Forecasting thus has various applications in the real world. Existing works on citation forecasting typically exploit the sequential properties of citation events, without exploring the citation network. In this paper, we propose to explore both the citation network and the related citation event sequences which provide valuable information for future citation forecasting. We propose a novel \em Citation Network and Event Sequence (CINES) Model to encode signals in the citation network and related citation event sequences into various types of embeddings for decoding to the arrivals of future citations. Moreover, we propose atemporal network attention and three alternative designs of \em bidirectional feature propagation to aggregate the retrospective and prospective aspects of publications in the citation network, coupled with the citation event sequence embeddings learned by a \em two-level attention mechanism for the citation forecasting. We evaluate our models and baselines on both a U.S. patent dataset and a DBLP dataset. Experimental results show that our models outperform the state-of-the-art methods, i.e., RMTPP, CYAN-RNN, Intensity-RNN, and PC-RNN, reducing the forecasting error by 37.76% - 75.32%.

3 citations

Proceedings Article
01 Jan 2000
TL;DR: An algorithm for mapping a DTD to the Entity-Relationship (ER) model (and thus the relational model) is proposed and some of the issues in loading XML data into the generated model are examined.
Abstract: XML technology is pushing the world into the ecommerce era. Relational database systems, today's dominant data management tool for business, must be able to accommodate the XML data, since collecting, analyzing, mining and managing that data will be tremendously important tasks. In this paper, we investigate the problem of managing XML data in relational database systems. We are speci cally concerned with storing and accessing the XML data using relational technology. We propose an algorithm for mapping a DTD to the Entity-Relationship (ER) model (and thus the relational model) and examine some of the issues in loading XML data into the generated model.

3 citations


Cited by
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01 Jan 2002

9,314 citations

Journal ArticleDOI

6,278 citations

Proceedings ArticleDOI
21 Aug 2011
TL;DR: A model of human mobility that combines periodic short range movements with travel due to the social network structure is developed and it is shown that this model reliably predicts the locations and dynamics of future human movement and gives an order of magnitude better performance.
Abstract: Even though human movement and mobility patterns have a high degree of freedom and variation, they also exhibit structural patterns due to geographic and social constraints. Using cell phone location data, as well as data from two online location-based social networks, we aim to understand what basic laws govern human motion and dynamics. We find that humans experience a combination of periodic movement that is geographically limited and seemingly random jumps correlated with their social networks. Short-ranged travel is periodic both spatially and temporally and not effected by the social network structure, while long-distance travel is more influenced by social network ties. We show that social relationships can explain about 10% to 30% of all human movement, while periodic behavior explains 50% to 70%. Based on our findings, we develop a model of human mobility that combines periodic short range movements with travel due to the social network structure. We show that our model reliably predicts the locations and dynamics of future human movement and gives an order of magnitude better performance than present models of human mobility.

2,922 citations

01 Nov 2008

2,686 citations

Journal ArticleDOI
TL;DR: This review presents the emergent field of temporal networks, and discusses methods for analyzing topological and temporal structure and models for elucidating their relation to the behavior of dynamical systems.
Abstract: A great variety of systems in nature, society and technology -- from the web of sexual contacts to the Internet, from the nervous system to power grids -- can be modeled as graphs of vertices coupled by edges The network structure, describing how the graph is wired, helps us understand, predict and optimize the behavior of dynamical systems In many cases, however, the edges are not continuously active As an example, in networks of communication via email, text messages, or phone calls, edges represent sequences of instantaneous or practically instantaneous contacts In some cases, edges are active for non-negligible periods of time: eg, the proximity patterns of inpatients at hospitals can be represented by a graph where an edge between two individuals is on throughout the time they are at the same ward Like network topology, the temporal structure of edge activations can affect dynamics of systems interacting through the network, from disease contagion on the network of patients to information diffusion over an e-mail network In this review, we present the emergent field of temporal networks, and discuss methods for analyzing topological and temporal structure and models for elucidating their relation to the behavior of dynamical systems In the light of traditional network theory, one can see this framework as moving the information of when things happen from the dynamical system on the network, to the network itself Since fundamental properties, such as the transitivity of edges, do not necessarily hold in temporal networks, many of these methods need to be quite different from those for static networks

2,452 citations