Research on Distributed Search Technology of Multiple Data Sources Intelligent Information Based on Knowledge Graph

The traditional information search technology performs full-text indexing on the data in the Internet, searches for information by means of keyword matching index, and returns information to the user. This retrieval method does not accurately understand the user’s needs, and returns relevant links rather than the information the user needs. The user needs to find relevant information from the linked documents. In order to improve the shortcomings of the above traditional search technology, this paper is based on the knowledge map of multi-data source intelligent information distributed search technology, through data acquisition in the Internet, complete the transformation of data to knowledge to form a knowledge network and provide information retrieval. This paper studies the construction of knowledge maps for application domain representation, proposes a semantic similarity model with constraints and implicit feedback correction mechanism, and explores the realization of intelligent information search under certain conditions. Through the analysis of prototype experimental data in the application field, the accuracy of information search based on knowledge map can reach 90%, which has strong practicability.

[1]  Yinghui Wu,et al.  Schemaless and Structureless Graph Querying , 2014, Proc. VLDB Endow..

[2]  Wilfred Ng,et al.  Blogel: A Block-Centric Framework for Distributed Computation on Real-World Graphs , 2014, Proc. VLDB Endow..

[3]  Lise Getoor,et al.  Knowledge Graph Identification , 2013, SEMWEB.

[4]  Peng Wang,et al.  Link prediction in social networks: the state-of-the-art , 2014, Science China Information Sciences.

[5]  Yang Yang,et al.  Distributed tracking control of a class of multi-agent systems in non-affine pure-feedback form under a directed topology , 2018, IEEE/CAA Journal of Automatica Sinica.

[6]  Ju Jia Zou,et al.  Inexact graph matching using a hierarchy of matching processes , 2015, Computational Visual Media.

[7]  Jie Chen,et al.  Cooperative transportation control of multiple mobile manipulators through distributed optimization , 2018, Science China Information Sciences.

[8]  Pawel Czarnul,et al.  Comparison of selected algorithms for scheduling workflow applications with dynamically changing service availability , 2014, Journal of Zhejiang University SCIENCE C.

[9]  Friederike Wall Organizational dynamics in adaptive distributed search processes: effects on performance and the role of complexity , 2016, Frontiers of Information Technology & Electronic Engineering.

[10]  Wei Sun,et al.  Effect of chromium micro-alloying on the corrosion behavior of a low-carbon steel rebar in simulated concrete pore solutions , 2017, Journal of Wuhan University of Technology-Mater. Sci. Ed..

[11]  Gerd Stumme,et al.  Temporal evolution of contacts and communities in networks of face-to-face human interactions , 2014, Science China Information Sciences.

[12]  Weigang Li,et al.  Querying dynamic communities in online social networks , 2014, Journal of Zhejiang University SCIENCE C.

[13]  MengChu Zhou,et al.  Macro liveness graph and liveness of ω-independent unbounded nets , 2014, Science China Information Sciences.

[14]  Yuan Liu,et al.  A simple implementation of distributed vertical search and information integration technology , 2013, Wuhan University Journal of Natural Sciences.

[15]  Tom Geller Talking to machines , 2012, CACM.

[16]  Yuan Wu,et al.  Fast distributed demand response algorithm in smart grid , 2017, IEEE/CAA Journal of Automatica Sinica.

[17]  Cheng Cheng,et al.  Background knowledge based privacy metric model for online social networks , 2014 .

[18]  Evgeniy Gabrilovich,et al.  A Review of Relational Machine Learning for Knowledge Graphs , 2015, Proceedings of the IEEE.