Version 1.0.
This repository hosts the code for our IEEE ICDM 2017 paper and follow-up KAIS journal paper on inferring networks from time series efficiently:
Tara Safavi, Chandra Sripada, Danai Koutra. Scalable Hashing-Based Network Discovery. IEEE International Conference on Data Mining, 2017.
Tara Safavi, Chandra Sekhar Sripada, Danai Koutra: Fast network discovery on sequence data via time-aware hashing. Knowl. Inf. Syst. 61(2): 987-1017 (2019)
Link to the conference paper: https://gemslab.github.io/papers/safavi-2017-scalable.pdf
Link to the journal paper: https://gemslab.github.io/papers/safavi-2018-fast.pdf
@INPROCEEDINGS{SafaviSK17,
author = {T. {Safavi} and C. {Sripada} and D. {Koutra}},
title = {Scalable Hashing-Based Network Discovery},
booktitle = {IEEE International Conference on Data Mining (ICDM)},
year = {2017},
pages = {405-414},
}
@INPROCEEDINGS{SafaviSK19journal,
author = {T. {Safavi} and C. {Sripada} and D. {Koutra}},
title = {Fast network discovery on sequence data via time-aware hashing},
journal = {Knowl. Inf. Syst.},
volume = {61},
number = {2},
pages = {987--1017},
year = {2019},
}
To run, change directories to the discovery
directory and type make
.
This will generate a sample graph from synthetic data using the pairwise correlation and window LSH methods.
If you have questions about the code, please email Tara Safavi at tsafavi@umich.edu.