Portfolio item number 1
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Published in TKDE, 2017
A framework for efficient ride-sharing with theoretical guarantees.
Published in ICDE, 2018
A system for maximizing shared routes in ride-sharing applications.
Published in KDD, 2019
Methods for discovering backbone structures in large attributed graphs.
Published in VLDB, 2019
Ontology-based techniques for entity matching in attributed graphs.
Published in BigData, 2020
A few-shot adversarial learning framework for detecting errors in knowledge graphs.
Published in ICDE, 2021
Constraint-based techniques to explain missing answers in graph queries.
Published in VLDB, 2021
An interactive system for detecting erroneous nodes using few labeled examples.
Published in SIGMOD, 2021
A system for explaining missing query answers using constraints and visualization.
Published in WSDM, 2022
Techniques for generating diverse and fair subgraph query results in knowledge graphs.
Published in ICDE, 2022
Algorithms for subgraph query generation under fairness and diversity constraints.
Published in IJCAI, 2022
A framework for robust node classification under adversarial graph perturbations.
Published in CIKM, 2022
A platform for scientific data management, workflow exploration, and reproducibility.
Published in ICDE, 2023
A framework for fair group summarization in knowledge graphs to mitigate bias and improve representation.
Published in ICDE, 2023
GALE combines active learning and adversarial training for efficient error detection in knowledge graphs.
Published in CIKM, 2023
An exemplar-based approach for ranking candidate models based on representative datasets.
Published in VLDB, 2024
ModsNet proposes a learning-based framework using exemplar datasets to efficiently search large model spaces without exhaustive evaluation.
Published in EDBT, 2025
Data science practitioners often face the challenge of selecting appropriate models for their datasets. This paper proposes a framework for generating skyline datasets that optimally distinguish between competing models.
Published:
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Undergraduate course, University 1, Department, 2014
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Workshop, University 1, Department, 2015
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