conv1d_1/kernel:0
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conv1d_1/bias:0
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conv1d_2/kernel:0
(1, 5, 64)
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LSTM+CNN基于TensorFlow回归模型和分类模型对国债数据进行预测源码+模型+数据(连续型与离散型预测).zip
共57个文件
ipynb:16个
csv:9个
png:9个
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LSTM+CNN基于TensorFlow回归模型和分类模型对国债数据进行预测源码+模型+数据(连续型与离散型预测).zip 【项目介绍】 这个项目主要是使用Tensorflow 2.x,搭建了多种模型对5年期的国债数据进行了预测,分为连续型的预测(回归)和离散型的预测(分类)两部分。 【目录】 checkpoint/ 模型 data/ 数据目录,主要包括原始数据和生成的中间数据 logs/ 日志 img/ cnn.ipynb conv1卷积神经网络目录 lstm.ipynb lstm神经网络目录 cnn-lstm.ipynb cnn-lstm神经网络目录 arma.ipynb arma模型目录 feature_engineer.ipynb 常用的金融时间序列特征工程挖掘方法目录 shibor数据获取.ipynb shibor目录 for_paper.ipynb 该目录下主要有一个将多张图片合成为一张图片的代码 金融时间序列特征分析.ipynb 该目录主要对金融时间序列进行了分析
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LSTM+CNN基于TensorFlow回归模型和分类模型对国债数据进行预测源码+模型+数据(连续型与离散型预测).zip (57个子文件)
checkpoint
LSTM
checkpoint 87B
LSTM_stock.ckpt.data-00000-of-00001 463KB
LSTM_stock.ckpt.index 2KB
CMM-LSTM
checkpoint 107B
CNN-LSTM_nation_debt.ckpt.data-00000-of-00001 1009KB
CNN-LSTM_nation_debt.ckpt.index 5KB
CNN
checkpoint 97B
CNN_nation_debt.ckpt.data-00000-of-00001 1.43MB
CNN_nation_debt.ckpt.index 4KB
项目说明.md 2KB
金融时间序列特征分析.ipynb 394KB
data
shape_info_by_cnn-lstm.png 77KB
weights_of_nation_debt_by_lstm.txt 26KB
national_debt_5y.csv 60KB
weights_of_nation_debt_by_cnn-lstm.txt 38KB
bitcoin.csv 145KB
bitcoin_new.csv 121KB
黄金期货历史数据.csv 158KB
黄金期货历史数据_new.csv 136KB
shibor_nation_debt.csv 84KB
shibor.csv 90KB
weights_of_nation_debt_by_cnn.txt 29KB
中国五年期国债收益率历史数据.csv 61KB
goods.csv 6.93MB
lstm.ipynb 280KB
cnn.ipynb 281KB
img
regression-predict
ARMA拟合曲线.png 27KB
CNN-LSTM拟合曲线.png 27KB
pred_combine.png 770KB
CNN拟合曲线.png 26KB
LSTM拟合曲线.png 26KB
data-count
data-count.png 243KB
02test-data-count.png 13KB
01total-data-count.png 14KB
feature_engineer.ipynb 73KB
for_paper.ipynb 57KB
arma.ipynb 727KB
logs
fit
20220407-131819
train
plugins
profile
2022_04_07_05_18_22
DESKTOP-ETQRUOF.tensorflow_stats.pb 81KB
DESKTOP-ETQRUOF.xplane.pb 155KB
DESKTOP-ETQRUOF.trace.json.gz 53KB
DESKTOP-ETQRUOF.kernel_stats.pb 0B
DESKTOP-ETQRUOF.memory_profile.json.gz 73B
DESKTOP-ETQRUOF.input_pipeline.pb 7KB
DESKTOP-ETQRUOF.overview_page.pb 8KB
events.out.tfevents.1649308702.DESKTOP-ETQRUOF.profile-empty 40B
events.out.tfevents.1649308699.DESKTOP-ETQRUOF.40152.1351.v2 171KB
validation
events.out.tfevents.1649308703.DESKTOP-ETQRUOF.40152.6421.v2 5KB
shibor数据获取.ipynb 18KB
.ipynb_checkpoints
ARMA-checkpoint.ipynb 722KB
shibor数据获取-checkpoint.ipynb 18KB
淘宝网爬虫-checkpoint.ipynb 117KB
cnn-checkpoint.ipynb 281KB
cnn-lstm-checkpoint.ipynb 452KB
for_paper-checkpoint.ipynb 20KB
lstm-checkpoint.ipynb 280KB
金融时间序列特征分析-checkpoint.ipynb 72B
cnn-lstm.ipynb 452KB
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