Contents
1  Data Processing Technology in TCM Records	1
1.1  Structural Technology Research on Symptom Data	1
1.1.1  Analyze the Symptoms	2
1.1.2  Structure the Symptoms	4
1.1.3  Conclusions	7
1.2  Semantic Feature Expansion Technology Based on Knowledge Graph	7
1.2.1  Knowledge Graph and Feature Acquisition Analysis	8
1.2.2  Symptom Normalization in TCM	9
1.2.3  Acquisition of Semantic Features Based on Knowledge Path	13
1.2.4  Experiment Analysis	16
1.2.5  Conclusions	21
1.3  Medical Case Retrieval Method Based on Machine Learning	22
1.3.1  Medical Record Representation	22
1.3.2  Case Retrieval Based on Learning Ranking	25
1.3.3  Experiment and Analysis	28
1.3.4  Conclusions	32

2  Data Processing Technology in TCM Medication	33
2.1  An Intelligent Medication Matching Method for TCM	33
2.1.1  Measure the Correlation between Medications	33
2.1.2  Random Walk Similarity of Nodes	37
2.1.3  The Graph Clustering	39
2.1.4  Experiment	39
2.2  The Core Medications Analysis Based on Social Network Analysis	41
2.2.1  The Social Network Construction about Semantic Relations of 
      TCM Records	41
2.2.2  Core Medications Analysis Based on Social Network Analysis	42
2.2.3  The Implementation of Core Medications Algorithms	46
2.2.4  Conclusions	48
2.3  Analysis and Mining of Core Prescription Using Fuzzy Cognitive Map	48
2.3.1  Construction of Fuzzy Cognitive Map	49
2.3.2  Realization of Core Prescription Mining	51
2.3.3  Systematic Review	55
2.3.4  Conclusions	57

3  The Medical Records-based Knowledge Acquisition	59
3.1  Centrality Research on the Traditional Chinese Medicine Network	59
3.1.1  Basic Thought and Concept	60
3.1.2  Method to Calculate Betweenness Centrality	62
3.1.3  Betweenness Centrality Algorithm	63
3.1.4  Example Analyses	64
3.1.5  Conclusions	66
3.2  Cognitive Induction Based Knowledge Acquisition	66
3.2.1  Data Preprocessing	66
3.2.2  Inductive Logic Based Inductive Learning Algorithm	68
3.2.3  Graph-based Inductive Learning Algorithm	71
3.2.4  Application of Inductive Learning Algorithm	73
3.3  Analysis on Interactive Structure of Knowledge Acquisition	77
3.3.1  Relevant Work	78
3.3.2  Structural Modeling Analyzing	79
3.3.3  Construction of Structural Model	81
3.3.4  Algorithms	81
3.3.5  Verification & Application	82
3.3.6  Conclusions	84
3.4  Application of Structural Analysis in Knowledge Acquisition of 
Traditional Chinese Medicine	84
3.4.1  Structural Modeling	85
3.4.2  Arithmetic and Analysis	87
3.4.3  Application Example	88
3.4.4  Conclusions	91

4  Text-based Knowledge Acquisition	93
4.1  Knowledge Acquisition Based on Open Data Source	93
4.2  Unsupervised TCM Text Segmentation Combined with Domain Dictionary	101
4.2.1  Related Work	102
4.2.2  Method	103
4.2.3  Experience	106
4.2.4  Conclusions	109
4.3  A Phrase Mining Method for TCM	110
4.3.1  Methods	110
4.3.2  Results	115
4.3.3  Conclusions	117
4.4  Improving Distantly-Supervised Named Entity Recognition	117
4.4.1  Related work	119
4.4.2  NER Scheme	120
4.4.3  Experiment	127
4.4.4  Relation Extraction Frame	132
4.5  Nested Named Entity Recognition Method	133
4.5.1  Methodology	135
4.5.2  Experiments	137
4.5.3  Conclusions	141

5  Application of Knowledge of TCM	143
5.1  Fuzzy Ontology Constructing and its Application in TCM	143
5.1.1  Structure of Fuzzy Ontology	143
5.1.2  Application of Fuzzy Ontology	147
5.1.3  Conclusions	150
5.2  Personalized Diagnostic Modal Discovery of TCM Knowledge Graph	150
5.2.1  Access to Medical Data and Normalization	150
5.2.2  Obtain the Medical Records Node and Get the Path and Storage	153
5.2.3  Overlay All Medical Path Results	157
5.2.4  Using the Template	159
5.2.5  Result Analysis	160
5.2.6  Conclusions	168
5.3  Assistant Diagnostic Method of TCM	168
5.3.1  Data Pretreatment	169
5.3.2  Research on Integrated Diagnosis Based on Multi Classification	170
5.3.3  Conclusions	176
5.4  Auxiliary Diagnosis Based on the Knowledge Graph of TCM Syndrome	177
5.4.1  Related Work	177
5.4.2  TCM Diagnosis Path Discovery	181
5.4.3  Meta-path Based on Reasoning Strategy	182
?
5.4.4  Experiment	186
5.4.5  Conclusions	189

References	191

Figure List	195

Table List	199