World's Best Scientists 2026 revealed!

D-Index & Metrics

Computer Science

D-Index
38
Citations
11974
World Ranking
9970
National Ranking
4196

Overview

Junghoo Cho is affiliated with the University of California, Los Angeles in the United States. Their research primarily focuses on computer science, with contributions in information systems, artificial intelligence, computer science applications, and management science and operations research. The scientist's work spans multiple subfields and topics, reflecting a multidisciplinary approach.

Their main topics of research include:

  • Recommender Systems and Techniques
  • Online Learning and Analytics
  • Topic Modeling
  • Advanced Bandit Algorithms Research
  • Domain Adaptation and Few-Shot Learning

Junghoo Cho has published research papers in notable venues such as User Modeling and User-Adapted Interaction and arXiv (Cornell University).

Their recent papers are:

  • Using autoencoders for session-based job recommendations, 2020, User Modeling and User-Adapted Interaction
  • Bayesian Prior Learning via Neural Networks for Next-item Recommendation, 2022, arXiv (Cornell University)

Throughout their career, Junghoo Cho has collaborated with several frequent coauthors, including:

  • Manoj Reddy Dareddy
  • Emanuel Lacić
  • Markus Reiter-Haas
  • Dominik Kowald
  • Elisabeth Lex

The scientist's scholarly contributions span a range of advanced topics such as recommender systems techniques, online learning methodologies, and topic modeling, illustrating a focus on both theoretical and applied research aspects.

Junghoo Cho's work in advanced bandit algorithms and domain adaptation also highlights an engagement with emerging areas in machine learning and personalized recommendation approaches. The combination of these research themes underlines a comprehensive engagement with adaptive systems and the analysis of user behavior.

Best Publications

  • Efficient crawling through URL ordering

    Junghoo Cho;Hector Garcia-Molina;Lawrence Page

  • Searching the Web

    Arvind Arasu;Junghoo Cho;Hector Garcia-Molina;Andreas Paepcke

  • The Evolution of the Web and Implications for an Incremental Crawler

    Junghoo Cho;Hector Garcia-Molina

  • What's new on the web?: the evolution of the web from a search engine perspective

    Alexandros Ntoulas;Junghoo Cho;Christopher Olston

  • Automatic identification of user interest for personalized search

    Feng Qiu;Junghoo Cho

  • Automatic identification of user goals in Web search

    Uichin Lee;Zhenyu Liu;Junghoo Cho

  • Synchronizing a database to improve freshness

    Junghoo Cho;Hector Garcia-Molina

  • Extracting Semistructured Information from the Web.

    J. Hammer;H. Garcia-Molina;J. Cho;R. Aranha

  • Parallel crawlers

    Junghoo Cho;Hector Garcia-Molina

  • Estimating frequency of change

    Junghoo Cho;Hector Garcia-Molina

  • Impact of search engines on page popularity

    Junghoo Cho;Sourashis Roy

  • Effective page refresh policies for Web crawlers

    Junghoo Cho;Hector Garcia-Molina

  • Downloading textual hidden web content through keyword queries

    A. Ntoulas;P. Pzerfos;Junghoo Cho

  • Exploiting Geographical Location Information of Web Pages

    O. Buyukokkten;J. Cho;H. Garcia-Molina;L. Gravano

  • Finding replicated Web collections

    Junghoo Cho;Narayanan Shivakumar;Hector Garcia-Molina

  • Page quality: in search of an unbiased web ranking

    Junghoo Cho;Sourashis Roy;Robert E. Adams

  • On the Evolution of Wikipedia

    Rodrigo B. Almeida;Barzan Mozafari;Junghoo Cho

  • Effective change detection using sampling

    Junghoo Cho;Alexandros Ntoulas

  • Topical semantics of twitter links

    Michael J. Welch;Uri Schonfeld;Dan He;Junghoo Cho

  • Soft set based association rule mining

    Feng Feng;Junghoo Cho;Witold Pedrycz;Hamido Fujita

Frequent Co-Authors

Hector Garcia-Molina
Hector Garcia-Molina Stanford University
Luis Gravano
Luis Gravano Columbia University
Andreas Paepcke
Andreas Paepcke Stanford University
Uichin Lee
Uichin Lee Korea Advanced Institute of Science and Technology
Yun Chi
Yun Chi Robinhood
Sougata Mukherjea
Sougata Mukherjea IBM (United States)
Soumen Chakrabarti
Soumen Chakrabarti Indian Institute of Technology Bombay
Dragomir R. Radev
Dragomir R. Radev Yale University
Panagiotis G. Ipeirotis
Panagiotis G. Ipeirotis New York University

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