{"description":"实验创建于2017/8/26","graph":{"edges":[{"to_node_id":"287d2cb0-f53c-4101-bdf8-104b137c8601-15:instruments","from_node_id":"287d2cb0-f53c-4101-bdf8-104b137c8601-8:data"},{"to_node_id":"-404:instruments","from_node_id":"287d2cb0-f53c-4101-bdf8-104b137c8601-8:data"},{"to_node_id":"287d2cb0-f53c-4101-bdf8-104b137c8601-53:data1","from_node_id":"287d2cb0-f53c-4101-bdf8-104b137c8601-15:data"},{"to_node_id":"287d2cb0-f53c-4101-bdf8-104b137c8601-43:features","from_node_id":"287d2cb0-f53c-4101-bdf8-104b137c8601-24:data"},{"to_node_id":"-404:features","from_node_id":"287d2cb0-f53c-4101-bdf8-104b137c8601-24:data"},{"to_node_id":"-411:features","from_node_id":"287d2cb0-f53c-4101-bdf8-104b137c8601-24:data"},{"to_node_id":"-418:features","from_node_id":"287d2cb0-f53c-4101-bdf8-104b137c8601-24:data"},{"to_node_id":"-425:features","from_node_id":"287d2cb0-f53c-4101-bdf8-104b137c8601-24:data"},{"to_node_id":"287d2cb0-f53c-4101-bdf8-104b137c8601-60:model","from_node_id":"287d2cb0-f53c-4101-bdf8-104b137c8601-43:model"},{"to_node_id":"-149:input_1","from_node_id":"287d2cb0-f53c-4101-bdf8-104b137c8601-53:data"},{"to_node_id":"-1918:options_data","from_node_id":"287d2cb0-f53c-4101-bdf8-104b137c8601-60:predictions"},{"to_node_id":"-418:instruments","from_node_id":"287d2cb0-f53c-4101-bdf8-104b137c8601-62:data"},{"to_node_id":"-1918:instruments","from_node_id":"287d2cb0-f53c-4101-bdf8-104b137c8601-62:data"},{"to_node_id":"287d2cb0-f53c-4101-bdf8-104b137c8601-43:training_ds","from_node_id":"287d2cb0-f53c-4101-bdf8-104b137c8601-84:data"},{"to_node_id":"287d2cb0-f53c-4101-bdf8-104b137c8601-60:data","from_node_id":"-86:data"},{"to_node_id":"-411:input_data","from_node_id":"-404:data"},{"to_node_id":"287d2cb0-f53c-4101-bdf8-104b137c8601-53:data2","from_node_id":"-411:data"},{"to_node_id":"-425:input_data","from_node_id":"-418:data"},{"to_node_id":"-152:input_1","from_node_id":"-425:data"},{"to_node_id":"287d2cb0-f53c-4101-bdf8-104b137c8601-84:input_data","from_node_id":"-149:data_1"},{"to_node_id":"-86:input_data","from_node_id":"-152:data_1"}],"nodes":[{"node_id":"287d2cb0-f53c-4101-bdf8-104b137c8601-8","module_id":"BigQuantSpace.instruments.instruments-v2","parameters":[{"name":"start_date","value":"2010-01-01","type":"Literal","bound_global_parameter":null},{"name":"end_date","value":"2015-01-01","type":"Literal","bound_global_parameter":null},{"name":"market","value":"CN_STOCK_A","type":"Literal","bound_global_parameter":null},{"name":"instrument_list","value":"","type":"Literal","bound_global_parameter":null},{"name":"max_count","value":"0","type":"Literal","bound_global_parameter":null}],"input_ports":[{"name":"rolling_conf","node_id":"287d2cb0-f53c-4101-bdf8-104b137c8601-8"}],"output_ports":[{"name":"data","node_id":"287d2cb0-f53c-4101-bdf8-104b137c8601-8"}],"cacheable":true,"seq_num":1,"comment":"","comment_collapsed":true},{"node_id":"287d2cb0-f53c-4101-bdf8-104b137c8601-15","module_id":"BigQuantSpace.advanced_auto_labeler.advanced_auto_labeler-v2","parameters":[{"name":"label_expr","value":"# 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[2018-10-23 22:24:04.335002] INFO: bigquant: instruments.v2 开始运行..
[2018-10-23 22:24:04.346388] INFO: bigquant: 命中缓存
[2018-10-23 22:24:04.347314] INFO: bigquant: instruments.v2 运行完成[0.012361s].
[2018-10-23 22:24:04.373213] INFO: bigquant: advanced_auto_labeler.v2 开始运行..
[2018-10-23 22:24:04.377968] INFO: bigquant: 命中缓存
[2018-10-23 22:24:04.379212] INFO: bigquant: advanced_auto_labeler.v2 运行完成[0.00601s].
[2018-10-23 22:24:04.382198] INFO: bigquant: input_features.v1 开始运行..
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[2018-10-23 22:24:04.395072] INFO: bigquant: general_feature_extractor.v7 开始运行..
[2018-10-23 22:24:04.398770] INFO: bigquant: 命中缓存
[2018-10-23 22:24:04.399498] INFO: bigquant: general_feature_extractor.v7 运行完成[0.004442s].
[2018-10-23 22:24:04.402414] INFO: bigquant: derived_feature_extractor.v3 开始运行..
[2018-10-23 22:24:04.405515] INFO: bigquant: 命中缓存
[2018-10-23 22:24:04.406243] INFO: bigquant: derived_feature_extractor.v3 运行完成[0.003814s].
[2018-10-23 22:24:04.409081] INFO: bigquant: join.v3 开始运行..
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[2018-10-23 22:24:04.412988] INFO: bigquant: join.v3 运行完成[0.003901s].
[2018-10-23 22:24:04.418549] INFO: bigquant: filtet_st_stock.v2 开始运行..
[2018-10-23 22:24:30.789548] INFO: bigquant: filtet_st_stock.v2 运行完成[26.370953s].
[2018-10-23 22:24:30.793764] INFO: bigquant: dropnan.v1 开始运行..
[2018-10-23 22:24:35.220838] INFO: dropnan: /data, 2502159/2520930
[2018-10-23 22:24:35.260464] INFO: dropnan: 行数: 2502159/2520930
[2018-10-23 22:24:35.432899] INFO: bigquant: dropnan.v1 运行完成[4.639113s].
[2018-10-23 22:24:35.436456] INFO: bigquant: stock_ranker_train.v5 开始运行..
[2018-10-23 22:24:37.917357] INFO: df2bin: prepare bins ..
[2018-10-23 22:24:41.464008] INFO: df2bin: prepare data: training ..
[2018-10-23 22:24:47.892206] INFO: df2bin: sort ..
[2018-10-23 22:25:16.973665] INFO: stock_ranker_train: 5dc2629c 准备训练: 2502159 行数
[2018-10-23 22:25:17.015004] INFO: stock_ranker_train: 正在训练 ..
[2018-10-23 22:29:50.386414] INFO: bigquant: stock_ranker_train.v5 运行完成[314.949907s].
[2018-10-23 22:29:50.389236] INFO: bigquant: instruments.v2 开始运行..
[2018-10-23 22:29:50.393732] INFO: bigquant: 命中缓存
[2018-10-23 22:29:50.394760] INFO: bigquant: instruments.v2 运行完成[0.005538s].
[2018-10-23 22:29:50.399761] INFO: bigquant: general_feature_extractor.v7 开始运行..
[2018-10-23 22:29:50.403578] INFO: bigquant: 命中缓存
[2018-10-23 22:29:50.404465] INFO: bigquant: general_feature_extractor.v7 运行完成[0.004712s].
[2018-10-23 22:29:50.406551] INFO: bigquant: derived_feature_extractor.v3 开始运行..
[2018-10-23 22:29:50.410101] INFO: bigquant: 命中缓存
[2018-10-23 22:29:50.410952] INFO: bigquant: derived_feature_extractor.v3 运行完成[0.004404s].
[2018-10-23 22:29:50.413442] INFO: bigquant: filtet_st_stock.v2 开始运行..
[2018-10-23 22:29:57.856987] INFO: bigquant: filtet_st_stock.v2 运行完成[7.443494s].
[2018-10-23 22:29:57.860015] INFO: bigquant: dropnan.v1 开始运行..
[2018-10-23 22:29:59.524401] INFO: dropnan: /data, 1182628/1191814
[2018-10-23 22:29:59.588884] INFO: dropnan: 行数: 1182628/1191814
[2018-10-23 22:29:59.705795] INFO: bigquant: dropnan.v1 运行完成[1.845722s].
[2018-10-23 22:29:59.709873] INFO: bigquant: stock_ranker_predict.v5 开始运行..
[2018-10-23 22:30:00.558910] INFO: df2bin: prepare data: prediction ..
[2018-10-23 22:30:15.423503] INFO: stock_ranker_predict: 准备预测: 1182628 行
[2018-10-23 22:30:15.424911] INFO: stock_ranker_predict: 正在预测 ..
[2018-10-23 22:30:36.002152] INFO: bigquant: stock_ranker_predict.v5 运行完成[36.292235s].
[2018-10-23 22:30:36.025470] INFO: bigquant: backtest.v8 开始运行..
[2018-10-23 22:30:36.027411] INFO: bigquant: biglearning backtest:V8.1.3
[2018-10-23 22:30:36.028173] INFO: bigquant: product_type:stock by specified
[2018-10-23 22:31:06.517548] INFO: algo: TradingAlgorithm V1.3.3
[2018-10-23 22:31:34.411341] INFO: Performance: Simulated 488 trading days out of 488.
[2018-10-23 22:31:34.412421] INFO: Performance: first open: 2015-01-05 09:30:00+00:00
[2018-10-23 22:31:34.413195] INFO: Performance: last close: 2016-12-30 15:00:00+00:00
- 收益率221.42%
- 年化收益率82.75%
- 基准收益率-6.33%
- 阿尔法0.69
- 贝塔1.01
- 夏普比率1.51
- 胜率0.61
- 盈亏比0.88
- 收益波动率44.81%
- 信息比率0.14
- 最大回撤44.46%
[2018-10-23 22:31:37.887339] INFO: bigquant: backtest.v8 运行完成[61.861831s].