[Objective] Through the combination of crowdsourcing knowledge graph and teaching system, research methods to generate knowledge graph and its applications. [Method]Using two crowdsourcing approaches, crowdsourcing task distribution and reverse captcha generation, to construct knowledge graph in the field of teaching system. [Results] Generating a complete hierarchical knowledge graph of the teaching domain by nodes of school, student, teacher, course, knowledge point and exercise type. [Limitations] The knowledge graph constructed in a crowdsourcing manner requires many users to participate collaboratively with fully consideration of teachers’ guidance and users’ mobilization issues. [Conclusion] Based on the three subgraphs of knowledge graph, prominent teacher, student learning situation and suitable learning route could be visualized. [Application] Personalized exercises recommendation model is used to formulate the personalized exercise by algorithm based on the knowledge graph. Collaborative creation model is developed to realize the crowdsourcing construction mechanism. [Evaluation] Though unfamiliarity with the learning mode of knowledge graph and learners’ less attention to the knowledge structure, system based on Crowdsourcing Knowledge Graph can still get high acceptance around students and teachers.
[1]
Yuji Matsumoto,et al.
Japanese Named Entity Extraction with Redundant Morphological Analysis
,
2003,
NAACL.
[2]
Ralph Grishman,et al.
NYU: Description of the MENE Named Entity System as Used in MUC-7
,
1998,
MUC.
[3]
Shruti Kohli,et al.
Domain Specific Search Engine Based on Semantic Web
,
2013,
SocProS.
[4]
Edmund A. Mennis.
The Wisdom of Crowds: Why the Many Are Smarter than the Few and How Collective Wisdom Shapes Business, Economies, Societies, and Nations
,
2006
.
[5]
Satoshi Sekine,et al.
Description of the Japanese NE System Used for MET-2
,
1998,
MUC.
[6]
Jason Weston,et al.
Translating Embeddings for Modeling Multi-relational Data
,
2013,
NIPS.
[7]
Satoshi Sekine,et al.
A survey of named entity recognition and classification
,
2007
.
[8]
Wei Li,et al.
Early results for Named Entity Recognition with Conditional Random Fields, Feature Induction and Web-Enhanced Lexicons
,
2003,
CoNLL.