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Liang Zhang
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Incorporating rich features into deep knowledge tracing
L Zhang, X Xiong, S Zhao, A Botelho, NT Heffernan
Proceedings of the fourth (2017) ACM conference on learning@ scale, 169-172, 2017
1272017
TARDIS: Distributed indexing framework for big time series data
L Zhang, N Alghamdi, MY Eltabakh, EA Rundensteiner
2019 IEEE 35th International Conference on Data Engineering (ICDE), 1202-1213, 2019
272019
Chainlink: indexing big time series data for long subsequence matching
N Alghamdi, L Zhang, H Zhang, EA Rundensteiner, MY Eltabakh
2020 IEEE 36th international conference on data engineering (ICDE), 529-540, 2020
172020
Unravelling psychiatric heterogeneity and predicting suicide attempts in women with trauma-related dissociation using artificial intelligence
S Srinivasan, NG Harnett, L Zhang, MK Dahlgren, J Jang, S Lu, ...
European journal of psychotraumatology 13 (2), 2143693, 2022
32022
Big data series analytics using TARDIS and its exploitation in geospatial applications
L Zhang, N Alghamdi, MY Eltabakh, EA Rundensteiner
Proceedings of the 2020 ACM SIGMOD International Conference on Management of …, 2020
32020
PARROT: pattern-based correlation exploitation in big partitioned data series
L Zhang, N Alghamdi, H Zhang, MY Eltabakh, EA Rundensteiner
The VLDB Journal 32 (3), 665-688, 2023
22023
Scalable time series compound infrastructure
NS Alghamdi, L Zhang, EA Rundensteiner, MY Eltabakh
Proceedings of the 2022 International Conference on Management of Data, 1685 …, 2022
22022
climber++: Pivot-Based Approximate Similarity Search over Big Data Series
L Zhang, MY Eltabakh, EA Rundensteiner, K Alnuaim
arXiv preprint arXiv:2404.09637, 2024
2024
Scalable Similarity Search over Big Data Series
L Zhang
WPI.Dissertation, 2022
2022
A Compression Algorithm Supporting Similarity Search over High-dimensional DataSeries with Missing Values
L Zhang
2020
Spark-ITS: Time Series Indexing on Apache Spark
L Zhang
Spark+AI Summit Europe 2018, 2018
2018
Chainlink: Indexing Big Time Series Data For Long Subsequence Matching.(Technical Report Version)
N Alghamdi, L Zhang, H Zhang, EA Rundensteiner, MY Eltabakh
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Articles 1–12