מדעי המחשב
הטכניון - מכון טכנולוגי לישראל
פרופ'/ח' שאול מרקוביץ
- יצירת קשר
- דף בית:
- http://www.cs.technion.ac.il/~shaulm/
- דואר אלקטרוני:
- shaulm
cs.technion.ac.il
- משרד:
- 609
- טלפון:
- 4346
- שעות קבלה:
- Sunday, 14:00-15:00
- תחומי עניין במחקר
- מערכות לומדות; בינה מלאכותית; חיפוש יוריסטי; חיפוש בעצי משחק; למידה בסביבה מרובת סוכנים.
- פרסומים נבחרים
- Evgeniy Gabrilovich and Shaul Markovitch.
Wikipedia-based Semantic Interpretation.
Accepted for Publication in Journal of Artificial Intelligence Research, ():, 2009 [bibtex]
- Kira Radinsky, Sagie Davidovich and Shaul Markovitch.
Predicting the News of Tomorrow Using Patterns inWeb Search Queries.
In Proceedings of the 2008 IEEE/WIC/ACM International Conference on Web Intelligence (WI'08), , 2008 [bibtex]
- Saher Esmeir and Shaul Markovitch.
Anytime Induction of Low-cost, Low-error Classifiers: a Sampling-based Approach.
Journal of Artificial Intelligence Research, 33():1--31, 2008 [bibtex]
- Ofer Egozi, Evgeniy Gabrilovich and Shaul Markovitch.
Concept-Based Feature Generation and Selection for Information Retrieval.
In Proceedings of the Twenty-Third AAAI Conference on Artificial Intelligence, , 2008 [bibtex]
- Saher Esmeir and Shaul Markovitch.
Anytime Induction of Cost-sensitive Trees.
In Proceedings of The 21st Conference on Neural Information Processing Systems (NIPS-2007), , 2007 [bibtex]
- Evgeniy Gabrilovich and Shaul Markovitch.
Harnessing the Expertise of 70,000 Human Editors: Knowledge-Based Feature Generation for Text Categorization.
Journal of Machine Learning Research, 8():2297--2345, 2007 [bibtex]
- Saher Esmeir and Shaul Markovitch.
Anytime Learning of Decision Trees.
Journal of Machine Learning Research, 8():891--933, 2007 [bibtex]
- Saher Esmeir and Shaul Markovitch.
Occam's Razor Just Got Sharper.
In Proceedings of The Twentieth International Joint Conference for Artificial Intelligence, 768--773, 2007 [bibtex]
- Evgeniy Gabrilovich and Shaul Markovitch.
Computing Semantic Relatedness using Wikipedia-based Explicit Semantic Analysis.
In Proceedings of The Twentieth International Joint Conference for Artificial Intelligence, 1606--1611, 2007 [bibtex]
- Saher Esmeir and Shaul Markovitch.
When a Decision Tree Learner Has Plenty of Time.
In Proceedings of the Twenty-First National Conference on Artificial Intelligence, 1597--1600, 2006 [bibtex]
- Saher Esmeir and Shaul Markovitch.
Anytime Induction of Decision Trees: an Iterative Improvement Approach.
In Proceedings of the Twenty-First National Conference on Artificial Intelligence, 348--355, 2006 [bibtex]
- Nela Gurevich, Shaul Markovitch and Ehud Rivlin.
Active Learning with Near Misses.
In Proceedings of the Twenty-First National Conference on Artificial Intelligence, 362--367, 2006 [bibtex]
- Evgeniy Gabrilovich and Shaul Markovitch.
Overcoming the Brittleness Bottleneck using Wikipedia: Enhancing Text Categorization with Encyclopedic Knowledge.
In Proceedings of the Twenty-First National Conference on Artificial Intelligence, 1301--1306, 2006 [bibtex]
- Dmitry Davidov and Shaul Markovitch.
Multiple-goal Heuristic Search.
Journal of Artificial Intelligence Research, 26():417--451, 2006 [bibtex]
- Asaf Amit and Shaul Markovitch.
Learning to Bid in Bridge.
Machine Learning, 63(3):287--327, 2006 [bibtex]
- Shaul Markovitch and Oren Shnitzer.
Self-consistent Batch-Classification.
No. CIS-2005-04, Technion, 2005 [bibtex]
- Saher Esmeir and Shaul Markovitch.
Interruptible Anytime Algorithms for Iterative Improvement of Decision Trees.
In Proceedings of the 1st international workshop on Utility-based data mining, 78--85, 2005 [bibtex]
- Yaniv Hamo and Shaul Markovitch.
The Compset Algorithm for Subset Selection.
In Proceedings of The Nineteenth International Joint Conference for Artificial Intelligence, 728--733, 2005 [bibtex]
- Evgeniy Gabrilovich and Shaul Markovitch.
Feature Generation for Text Categorization Using World Knowledge.
In Proceedings of The Nineteenth International Joint Conference for Artificial Intelligence, 1048--1053, 2005 [bibtex]
- Shaul Markovitch and Ronit Reger.
Learning and Exploiting Relative Weaknesses of Opponent Agents.
Autonomous Agents and Multi-agent Systems, 10(2):103--130, 2005 [bibtex]
- Evgeniy Gabrilovich and Shaul Markovitch.
Text Categorization with Many Redundant Features: Using Aggressive Feature Selection to Make SVMs Competitive with C4.5.
In Proceedings of The Twenty-First International Conference on Machine Learning, 321--328, Morgan Kaufmann, 2004 [bibtex]
- Dmitry Davidov, Evgeniy Gabrilovich and Shaul Markovitch.
Parameterized Generation of Labeled Datasets for Text Categorization Based on a Hierarchical Directory.
In Proceedings of The 27th Annual International ACM SIGIR Conference, 250--257, ACM Press, 2004 [bibtex]
- Saher Esmeir and Shaul Markovitch.
Lookahead-based Algorithms for Anytime Induction of Decision Trees.
In Proceedings of The Twenty-First International Conference on Machine Learning, 257--264, Morgan Kaufmann, 2004 [bibtex]
- Lev Finkelstein, Shaul Markovitch and Ehud Rivlin.
Optimal Schedules for Parallelizing Anytime Algorithms: The Case of Shared Resources.
Journal of Artificial Intelligence Research, 19:73--138, 2003 [bibtex]
- Shaul Markovitch and Asaf Shatil.
Speedup Learning for Repair-based Search by Identifying Redundant Steps.
Journal of Machine Learning Research, 4:649--682, 2003 [bibtex]
- Orna Grumberg, Shlomi Livne and Shaul Markovitch.
Learning to Order {BDD} Variables in Verification.
Journal of Artificial Intelligence Research, 18:83-116, 2003 [bibtex]
- Lev Finkelstein, Shaul Markovitch and Ehud Rivlin.
Optimal Schedules for Parallelizing Anytime Algorithms: The Case of Independent Processes.
In Proceedings of the Eighteenth National Conference on Artificial Intelligence, 719--724, 2002 [bibtex]
- Dmitry Davidov and Shaul Markovitch.
Multiple-goal Search Algorithms and their Application to Web Crawling.
In Proceedings of the Eighteenth National Conference on Artificial Intelligence, 713--718, 2002 [bibtex]
- Lev Finkelstein, Shaul Markovitch and Ehud Rivlin.
Optimal Schedules for Parallelizing Anytime Algorithms.
In Proceedings of The AAAI Fall Symposium on Using Uncertainty within Computation, 49--56, 2001 [bibtex]
- Shaul Markovitch.
Applications of Macro Learning to Path Planning.
No. CIS9907, Technion, 1999 [bibtex]
- Michael Lindenbaum, Shaul Markovitch and Dmitry Rusakov.
Selective Sampling for Nearest Neighbor Classifiers.
Machine Learning, 54(2):125--152, 2004 [bibtex]
- Michael Lindenbaum, Shaul Markovitch and Dmitry Rusakov.
Selective Sampling for Nearest Neighbor Classifiers.
In The Proceedings of the Sixteenth National Confernce on Artificial Intelligence, 366--371, 1999 [bibtex]
- Lev Finkelstein and Shaul Markovitch.
Optimal schedules for monitoring anytime algorithms.
Artificial Intelligence, 126:63-108, 2001 [bibtex]
- Shaul Markovitch and Danny Rosenstein.
Feature Generation Using General Constructor Functions.
Machine Learning, 49:59--98, 2002 [bibtex]
- David Carmel and Shaul Markovitch.
Exploration Strategies for Model-based Learning in Multiagent Systems.
Autonomous Agents and Multi-agent Systems, 2(2):141--172, 1999 [bibtex]
- Oleg Ledeniov and Shaul Markovitch.
The Divide-and-Conquer Subgoal-Ordering Algorithm for Speeding up Logic Inference.
Journal of Artificial Intelligence Research, 9:37--97, 1998 [bibtex]
- Lev Finkelstein and Shaul Markovitch.
A Selective Macro-learning Algorithm and its Application to the NxN Sliding-Tile Puzzle.
Journal of Artificial Intelligence Research, 8:223--263, 1998 [bibtex]
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