그림 1. 활용된 LSTM 네트워크 구조
그림 2. 학습 데이터 구조
표 1. 농산물 가격 예측 관련 변수
표 2. 농산물 가격 예측을 위한 변수
표 3. 학습 데이터 출처
표 4. 학습 데이터
표 5. 초기 수집 데이터
표 6. 전처리 후 데이터
표 7. 학습/테스트 데이터셋 건수
표 8. hyper-parameters 값
표 9. 도시별/농산물별 가격 예측 정확도
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