TY - GEN
T1 - Demonstration of DPClustX
T2 - 2025 ACM SIGMOD/PODS International Conference on Management of Data, SIGMOD-Companion 2025
AU - Gilad, Amir
AU - Milo, Tova
AU - Razmadze, Kathy
AU - Zadicario, Ron
N1 - Publisher Copyright:
© 2025 ACM.
PY - 2025/6/22
Y1 - 2025/6/22
N2 - We present DPClustX, a framework designed to generate Differential Privacy (DP)-compliant histogram-based explanations for black-box clustering results. Interpreting clustering results is challenging even without privacy constraints, and the challenge is amplified under DP, as analysts receive noisy query responses. By addressing these challenges, DPClustX enables the selection of high-quality explaining attributes and the generation of informative histograms that balance privacy and utility. Compatible with any DP-clustering algorithm, our framework provides explanations that uncover significant patterns even under strict privacy constraints. This demonstration highlights DPClustX's capabilities using real datasets, illustrating its practical utility in sensitive data analysis and its potential for enhancing the interpretability of clustering methods.
AB - We present DPClustX, a framework designed to generate Differential Privacy (DP)-compliant histogram-based explanations for black-box clustering results. Interpreting clustering results is challenging even without privacy constraints, and the challenge is amplified under DP, as analysts receive noisy query responses. By addressing these challenges, DPClustX enables the selection of high-quality explaining attributes and the generation of informative histograms that balance privacy and utility. Compatible with any DP-clustering algorithm, our framework provides explanations that uncover significant patterns even under strict privacy constraints. This demonstration highlights DPClustX's capabilities using real datasets, illustrating its practical utility in sensitive data analysis and its potential for enhancing the interpretability of clustering methods.
KW - clustering
KW - differential privacy
KW - explanations
KW - interpretability
UR - https://www.scopus.com/pages/publications/105010232970
U2 - 10.1145/3722212.3725102
DO - 10.1145/3722212.3725102
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AN - SCOPUS:105010232970
T3 - Proceedings of the ACM SIGMOD International Conference on Management of Data
SP - 99
EP - 102
BT - SIGMOD-Companion 2025 - Companion of the 2025 International Conference on Management of Data
A2 - Deshpande, Amol
A2 - Aboulnaga, Ashraf
A2 - Salimi, Babak
A2 - Chandramouli, Badrish
A2 - Howe, Bill
A2 - Loo, Boon Thau
A2 - Glavic, Boris
A2 - Curino, Carlo
A2 - Zhe Wang, Daisy
A2 - Suciu, Dan
A2 - Abadi, Daniel
A2 - Srivastava, Divesh
A2 - Wu, Eugene
A2 - Nawab, Faisal
A2 - Ilyas, Ihab
A2 - Naughton, Jeffrey
A2 - Rogers, Jennie
A2 - Patel, Jignesh
A2 - Arulraj, Joy
A2 - Yang, Jun
A2 - Echihabi, Karima
A2 - Ross, Kenneth
A2 - Daudjee, Khuzaima
A2 - Lakshmanan, Laks
A2 - Garofalakis, Minos
A2 - Riedewald, Mirek
A2 - Mokbel, Mohamed
A2 - Ouzzani, Mourad
A2 - Kennedy, Oliver
A2 - Kennedy, Oliver
A2 - Papotti, Paolo
A2 - Alvaro, Peter
A2 - Bailis, Peter
A2 - Miller, Renee
A2 - Roy, Senjuti Basu
A2 - Melnik, Sergey
A2 - Idreos, Stratos
A2 - Roy, Sudeepa
A2 - Rekatsinas, Theodoros
A2 - Leis, Viktor
A2 - Zhou, Wenchao
A2 - Gatterbauer, Wolfgang
A2 - Ives, Zack
PB - Association for Computing Machinery
Y2 - 22 June 2025 through 27 June 2025
ER -