TY - GEN
T1 - Graph mining based knowledge discovery in designing decision-making context models
AU - Jiang, Hao
AU - Liu, Jihong
AU - Zhao, Zhenjie
N1 - Publisher Copyright:
© 2014 IEEE.
PY - 2015/1/13
Y1 - 2015/1/13
N2 - At present, researches on design rationale focus on the model representation and retrieval, which lack deeply mining in the design rationale model and cannot support innovative design. This paper proposes a decision-making context model and a graph mining based method to mine the model. This method could get large amount of tacit design rules, design consensus and design evidences in decision-making context model, which has great significance for innovative design. At first we calculate the similarities among the nodes in the models, and then find the similar nodes in different graphs and then unify the graphs, nodes and edges. Second, generate frequent edge set based on support degree, select the edge with the highest degree as the start, add outer edges in frequent edge set and generate frequent subgraph set. At last, modify and explain the graphs in the frequent sungraph set which results in final knowledge. At the end of this paper, we take the design process of automatic marking machine as example and get knowledge about cam design, transmission mechanism and feed mechanism, which substantiates the effectiveness of the mehod.
AB - At present, researches on design rationale focus on the model representation and retrieval, which lack deeply mining in the design rationale model and cannot support innovative design. This paper proposes a decision-making context model and a graph mining based method to mine the model. This method could get large amount of tacit design rules, design consensus and design evidences in decision-making context model, which has great significance for innovative design. At first we calculate the similarities among the nodes in the models, and then find the similar nodes in different graphs and then unify the graphs, nodes and edges. Second, generate frequent edge set based on support degree, select the edge with the highest degree as the start, add outer edges in frequent edge set and generate frequent subgraph set. At last, modify and explain the graphs in the frequent sungraph set which results in final knowledge. At the end of this paper, we take the design process of automatic marking machine as example and get knowledge about cam design, transmission mechanism and feed mechanism, which substantiates the effectiveness of the mehod.
KW - Design decision context
KW - graph mining
KW - knowledge discovery
UR - https://www.scopus.com/pages/publications/84922519160
U2 - 10.1109/ICSAI.2014.7009422
DO - 10.1109/ICSAI.2014.7009422
M3 - 会议稿件
AN - SCOPUS:84922519160
T3 - 2014 2nd International Conference on Systems and Informatics, ICSAI 2014
SP - 948
EP - 953
BT - 2014 2nd International Conference on Systems and Informatics, ICSAI 2014
PB - Institute of Electrical and Electronics Engineers Inc.
T2 - 2014 2nd International Conference on Systems and Informatics, ICSAI 2014
Y2 - 15 November 2014 through 17 November 2014
ER -