Fig. 1. Distributed Momory(DM) Model
Fig. 2. Distributed Bag of Words(DBOW) Model
Fig. 3. Flow of Natural Language Processing
Fig. 4. System Configuration
Fig. 5. Structure of Judgment Document
FIg. 6. Visualization of Analytical Data
Table 1. Extract the Top 10 Words
Table 2. Most Words and Highly Similar Word List
Table 3. Change in Cosine Similarity
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