TY - JOUR
T1 - Efficient Representative Subset Selection over Sliding Windows
AU - Wang, Yanhao
AU - Li, Yuchen
AU - Tan, Kian Lee
N1 - Publisher Copyright:
© 1989-2012 IEEE.
PY - 2019/7/1
Y1 - 2019/7/1
N2 - Representative subset selection (RSS) is an important tool for users to draw insights from massive datasets. Existing literature models RSS as the submodular maximization problem to capture the diminishing returns property of the representativeness of selected subsets, but often only has a single constraint (e.g., cardinality), which limits its applications in many real-world problems. To capture the data recency issue and support different types of constraints, we formulate dynamic RSS in data streams as maximizing submodular functions subject to general dd-knapsack constraints (SMDK) over sliding windows. We propose a KnapWindow framework (KW) for SMDK. KW utilizes the KnapStream algorithm (KS) for SMDK in append-only streams as a subroutine. It maintains a sequence of checkpoints and KS instances over the sliding window. Theoretically, KW is frac{1-varepsilon }{1+d}1-1+d-approximate for SMDK. Furthermore, we propose a KnapWindowPlus framework (KW{+}+) to improve upon KW. KW{+}+ builds an index SubKnapChk to manage the checkpoints and KS instances. SubKnapChk deletes a checkpoint whenever it can be approximated by its successors. By keeping much fewer checkpoints, KW{+}+ achieves higher efficiency than KW while still guaranteeing a frac{1-varepsilon {prime }}{2+2d}1-'2+2d-approximate solution for SMDK. Finally, we evaluate the efficiency and solution quality of KW and KW{+}+ in real-world datasets. The experimental results demonstrate that KW achieves more than two orders of magnitude speedups over the batch baseline and preserves high-quality solutions for SMDK over sliding windows. KW{+}+ further runs 5-10 times faster than KW while providing solutions with equivalent or even better utilities.
AB - Representative subset selection (RSS) is an important tool for users to draw insights from massive datasets. Existing literature models RSS as the submodular maximization problem to capture the diminishing returns property of the representativeness of selected subsets, but often only has a single constraint (e.g., cardinality), which limits its applications in many real-world problems. To capture the data recency issue and support different types of constraints, we formulate dynamic RSS in data streams as maximizing submodular functions subject to general dd-knapsack constraints (SMDK) over sliding windows. We propose a KnapWindow framework (KW) for SMDK. KW utilizes the KnapStream algorithm (KS) for SMDK in append-only streams as a subroutine. It maintains a sequence of checkpoints and KS instances over the sliding window. Theoretically, KW is frac{1-varepsilon }{1+d}1-1+d-approximate for SMDK. Furthermore, we propose a KnapWindowPlus framework (KW{+}+) to improve upon KW. KW{+}+ builds an index SubKnapChk to manage the checkpoints and KS instances. SubKnapChk deletes a checkpoint whenever it can be approximated by its successors. By keeping much fewer checkpoints, KW{+}+ achieves higher efficiency than KW while still guaranteeing a frac{1-varepsilon {prime }}{2+2d}1-'2+2d-approximate solution for SMDK. Finally, we evaluate the efficiency and solution quality of KW and KW{+}+ in real-world datasets. The experimental results demonstrate that KW achieves more than two orders of magnitude speedups over the batch baseline and preserves high-quality solutions for SMDK over sliding windows. KW{+}+ further runs 5-10 times faster than KW while providing solutions with equivalent or even better utilities.
KW - Data summarization
KW - approximation algorithm
KW - data stream
KW - sliding window
KW - submodular maximization
UR - https://www.scopus.com/pages/publications/85049777152
U2 - 10.1109/TKDE.2018.2854182
DO - 10.1109/TKDE.2018.2854182
M3 - 文章
AN - SCOPUS:85049777152
SN - 1041-4347
VL - 31
SP - 1327
EP - 1340
JO - IEEE Transactions on Knowledge and Data Engineering
JF - IEEE Transactions on Knowledge and Data Engineering
IS - 7
M1 - 8410031
ER -