References
- Ambite I, Knoblock C. Flexible and scalable cost-based query planning in mediators: a transformational approach. Artif Intell J. 2000;118(1–2):115–161.
- Ding H, Buyya R. Guided Google: a meta search engine and its implementation using the Google distributed Web services. Int J Comput Appl. 2004;26(3):1–7. doi:https://doi.org/10.1080/1206212X.2004.11441740.
- Lee W. Personalizing Internet information services: passive filtering and active retrieval. Int J Comput Appl. 2007;29(2):124–131. doi:https://doi.org/10.1080/1206212X.2007.11441840.
- Arya D, Ha-Thuc V, Sinha S. Personalized federated search at LinkedIn. In: Proceeding of the 24th ACM International Conference on Information and Knowledge Management; Melbourne, Australia, 2015. p. 1699–1702. doi:https://doi.org/10.1145/2806416.2806615.
- Gasser L. Large-scale concurrent computing in artificial intelligence research. In: Proceedings of the 3rd Conference on Hypercube Concurrent Computers and Applications; Pasadena, CA. 1988. Vol. 2. p. 1342–1351. doi:https://doi.org/10.1145/63047.63089.
- Kolisch A, Drexl A. Adaptive search for solving hard project scheduling problems. Naval Res Logist. 1996;43(1):23–40.
- Diaz F, Arguello I, Callan J, et al. Sources of evidence for vertical selection. In: Proceedings of the 32nd International ACM SIGIR Conference on Research and Development in Information Retrieval; Boston, MA. 2009; p. 315–322.
- Boughanem M, Kopliku A, Pinel-Sauvagnat K. Aggregated search: a new information retrieval paradigm. ACM Computing Surveys J. 2014;46(3):1–31.
- Arguello A, Diaz F, Callan I. Learning to aggregate vertical results into web search results. In: International Conference on Information and Knowledge Management; Glasgow, Scotland, UK, 2011. p. 201–210.
- Arguello J, Diaz F, Callan J, et al. A methodology for evaluating aggregated search results. In: European Conference on Information Retrieval; Dublin, Ireland. Springer; 2011. p. 141–152.
- Rijke M, Kenter T, Vries A, et al. Advances in information retrieval. In: 36th European Conference on IR Research, ECIR; Amsterdam, The Netherlands, April 13–16. 2014. p. 184–196.
- Al-akashi F. Using wikipedia knowledge and query types in a new indexing approach for web search engines [Ph.D. thesis]. University of Ottawa; 2014.
- Chen C, Li F, Ooi C, et al. TI: An efficient indexing mechanism for real--time search on tweets. In: Proceedings of the ACM SIGMOD International Conference on Management of Data; Athens, Greece. 2011. p. 649–660.
- Zhao F, Liu J, Zhou J, et al. LS-AMS: an adaptive indexing structure for real-time search on micro-blogs. IEEE Transactions on Big Data. 2015;1(4):125–137.
- Limsopatham N, McCreadie R, Albakour M, et al. University of Glasgow at TREC 2012: experiments with terrier in medical records, microblog, and web tracks. In: Proceedings of the Twenty-First Text Retrieval Conference; Gaithersburg, MD. NIST Special Publication, SP 500-298; 2012.
- Al-akashi F, Inkpen D. Ranking web pages using collective knowledge. In: Proceedings of the Twentieth Text Retrieval Conference (NIST); Gaithersburg, MD. Special Publication 500-298; 2012.
- Wang S, Tuor T, Salonidis T, et al. Adaptive federated learning in resource Constrained Edge computing systems. J Sel Areas Commun. 2019;37:1205–1221.
- Li T, Sahu A, Talwalkar A, et al. Federated learning: challenges, methods, and future directions. arXiv preprint arXiv:1908.07873, 2019.
- Kim J. Hybrid Filtering of web pages for a Recommendation Agent. Int J Comput Appl. 2001;23(2):99–105. doi:https://doi.org/10.1080/1206212X.2001.11441638.
- Graefe G, Halim F, Idreos S, et al. Concurrency control for adaptive indexing. PVLDB. 2012;5(7):656–667.
- Zhao H, Hu X. Drexel at TREC 2014 federated web search track. In: Proceedings of the 23rd Text Retrieval Conference (NIST); Gaithersburg, MD. Special Publication 500–308; 2014.
- Jin S, Lan M. Simple may be best - a simple and effective method for federated web search via search engine impact factor estimation. In: Proceedings of the 23rd Text Retrieval Conference (NIST); Gaithersburg, MD. Special Publication 500–308; 2014.
- Lu J. Full-text federated search in peer-to-peer networks [Ph.D. Thesis]. Carnegie Mellon University; 2007.
- Vasco P. Federated ontology search [Ph.D. Thesis]. Carnegie Mellon University; 2009.
- Nguyen D, Demeester T, Trieschnigg D, et al. Resource selection for federated search on the web. ArXiv:1609.04556, Technical Report TR-CTIT-16-12, 2007.
- Robertson S, Walker S. Some simple effective approximations to the 2-Poisson model for probabilistic weighted retrieval. In: Proceedings of the SIGIR Conference on Research and Development in Information Retrieval; 1994. p. 345–354.
- Sparck-Jones K, Walker S, Robertson S. A probabilistic model of information retrieval: development and comparative experiment. Informat Process Manag 2000;36(6):809–840.
- Arens Y, Hsu C-N, Knoblock A. Query processing in the SIMS information mediator. In: Huhns S, editor. Proceedings of the ARPA/Rome laboratory knowledge-based planning and scheduling initiative workshop; reprinted in readings in agents. Tucson (AZ): Morgan Kaufmann; 1996. p. 82–90.
- Agarwal S, Panda A, Mozafari B, et al. Blink and it’s done: interactive queries on very large data. Proc VLDB Endow. 2012;5(12):1902–1905.
- Kekäläinen J, Järvelin K. Using graded relevance assessments in IR evaluation. in Proc SIGIR Conf, JASIST. 2013;53(13):1120–1129.
- Cormack V, Lynam R. Statistical precision of information retrieval evaluation. In: Proceedings of the 29th Annual International ACM SIGIR Conference on Research and Development in Information Retrieval; Seattle, Washington, DC, USA; 2006.