A large-scale distributed framework for information retrieval in large dynamic search spaces
作者:Eugene Santos Jr., Eunice E. Santos, Hien Nguyen, Long Pan, John Korah
摘要
One of the main problems facing human analysts dealing with large amounts of dynamic data is that important information may not be assessed in time to aid the decision making process. We present a novel distributed processing framework called Intelligent Foraging, Gathering and Matching (I-FGM) that addresses this problem by concentrating on resource allocation and adapting to computational needs in real-time. It serves as an umbrella framework in which the various tools and techniques available in information retrieval can be used effectively and efficiently. We implement a prototype of I-FGM and validate it through both empirical studies and theoretical performance analysis.
论文关键词:Information search and retrieval, Distributed processing, Multi-agent architecture, Dynamic anytime processing, Content analysis and indexing
论文评审过程:
论文官网地址:https://doi.org/10.1007/s10489-010-0229-0