{"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":"-215: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":"-215:features","from_node_id":"287d2cb0-f53c-4101-bdf8-104b137c8601-24:data"},{"to_node_id":"-222:features","from_node_id":"287d2cb0-f53c-4101-bdf8-104b137c8601-24:data"},{"to_node_id":"-231:features","from_node_id":"287d2cb0-f53c-4101-bdf8-104b137c8601-24:data"},{"to_node_id":"-238: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":"287d2cb0-f53c-4101-bdf8-104b137c8601-84:input_data","from_node_id":"287d2cb0-f53c-4101-bdf8-104b137c8601-53:data"},{"to_node_id":"-250:options_data","from_node_id":"287d2cb0-f53c-4101-bdf8-104b137c8601-60:predictions"},{"to_node_id":"-231:instruments","from_node_id":"287d2cb0-f53c-4101-bdf8-104b137c8601-62:data"},{"to_node_id":"-250: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":"-222:input_data","from_node_id":"-215:data"},{"to_node_id":"287d2cb0-f53c-4101-bdf8-104b137c8601-53:data2","from_node_id":"-222:data"},{"to_node_id":"-238:input_data","from_node_id":"-231:data"},{"to_node_id":"-86:input_data","from_node_id":"-238:data"},{"to_node_id":"-114:input_1","from_node_id":"-250:raw_perf"}],"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":"2016-02-01","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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[2021-08-12 17:12:01.593018] INFO: moduleinvoker: instruments.v2 开始运行..
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[2021-08-12 17:12:02.190555] INFO: moduleinvoker: general_feature_extractor.v7 开始运行..
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[2021-08-12 17:12:02.416233] INFO: moduleinvoker: dropnan.v1 开始运行..
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[2021-08-12 17:12:02.582559] INFO: moduleinvoker: stock_ranker_train.v5 开始运行..
[2021-08-12 17:12:02.592921] INFO: moduleinvoker: 命中缓存
[2021-08-12 17:12:03.006498] INFO: moduleinvoker: stock_ranker_train.v5 运行完成[0.423943s].
[2021-08-12 17:12:03.019289] INFO: moduleinvoker: instruments.v2 开始运行..
[2021-08-12 17:12:03.032346] INFO: moduleinvoker: 命中缓存
[2021-08-12 17:12:03.034499] INFO: moduleinvoker: instruments.v2 运行完成[0.015216s].
[2021-08-12 17:12:03.068581] INFO: moduleinvoker: general_feature_extractor.v7 开始运行..
[2021-08-12 17:12:03.083149] INFO: moduleinvoker: 命中缓存
[2021-08-12 17:12:03.099640] INFO: moduleinvoker: general_feature_extractor.v7 运行完成[0.031116s].
[2021-08-12 17:12:03.110678] INFO: moduleinvoker: derived_feature_extractor.v3 开始运行..
[2021-08-12 17:12:03.119119] INFO: moduleinvoker: 命中缓存
[2021-08-12 17:12:03.121219] INFO: moduleinvoker: derived_feature_extractor.v3 运行完成[0.010548s].
[2021-08-12 17:12:03.157984] INFO: moduleinvoker: dropnan.v1 开始运行..
[2021-08-12 17:12:03.188782] INFO: moduleinvoker: 命中缓存
[2021-08-12 17:12:03.192791] INFO: moduleinvoker: dropnan.v1 运行完成[0.034814s].
[2021-08-12 17:12:03.366077] INFO: moduleinvoker: stock_ranker_predict.v5 开始运行..
[2021-08-12 17:12:03.380785] INFO: moduleinvoker: 命中缓存
[2021-08-12 17:12:03.453753] INFO: moduleinvoker: stock_ranker_predict.v5 运行完成[0.087687s].
[2021-08-12 17:12:07.189204] INFO: moduleinvoker: backtest.v8 开始运行..
[2021-08-12 17:12:07.202804] INFO: moduleinvoker: 命中缓存
[2021-08-12 17:12:08.903249] INFO: moduleinvoker: backtest.v8 运行完成[1.71407s].
[2021-08-12 17:12:08.905328] INFO: moduleinvoker: trade.v4 运行完成[5.268587s].
[2021-08-12 17:12:08.948353] INFO: moduleinvoker: barra_risk_factor_analysis1.v7 开始运行..
[2021-08-12 17:15:48.176935] INFO: moduleinvoker: barra_risk_factor_analysis1.v7 运行完成[219.228536s].
bigcharts-data-start/{"__type":"tabs","__id":"bigchart-a25e545147204780b56a906784709504"}/bigcharts-data-end
- 收益率37.78%
- 年化收益率43.41%
- 基准收益率12.35%
- 阿尔法0.26
- 贝塔1.31
- 夏普比率1.23
- 胜率0.59
- 盈亏比0.86
- 收益波动率30.97%
- 信息比率0.07
- 最大回撤16.9%
bigcharts-data-start/{"__type":"tabs","__id":"bigchart-1d0af712999f4a67b9216b6e215c815d"}/bigcharts-data-end