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实际操作中,会存在一定的买入误差,所以在前hold_days天,等量使用资金;之后,尽量使用剩余资金(这里设置最多用等量的1.5倍)\n is_staging = context.trading_day_index < context.options['hold_days'] # 是否在建仓期间(前 hold_days 天)\n cash_avg = context.portfolio.portfolio_value / context.options['hold_days']\n cash_for_buy = min(context.portfolio.cash, (1 if is_staging else 1.5) * cash_avg)\n cash_for_sell = cash_avg - (context.portfolio.cash - cash_for_buy)\n positions = {e.symbol: p.amount * p.last_sale_price\n for e, p in context.perf_tracker.position_tracker.positions.items()}\n \n #----------------------------------------------止损模块START-----------------------------------------------------\n date = data.current_dt.strftime('%Y-%m-%d')\n costs = {e.symbol: p.cost_basis for e, p in context.portfolio.positions.items()}\n # 新建当日止损股票列表是为了handle_data策略逻辑分布不再对该股票进行判断\n current_stoploss_stock = []\n if len(costs) > 0:\n for i in costs.keys():\n stock_cost = costs[i]\n stock_market_price = data.current(context.symbol(i), 'price')\n # 亏5%就止损\n if (stock_market_price - stock_cost) / stock_cost <= -0.25:\n context.order_target_percent(context.symbol(i),0)\n current_stoploss_stock.append(i)\n print('日期:',date,'股票:',i,'出现止损情况')\n #-----------------------------------------------止损模块END-----------------------------------------------------\n \n # 2. 生成卖出订单:hold_days天之后才开始卖出;对持仓的股票,按机器学习算法预测的排序末位淘汰\n if not is_staging and cash_for_sell > 0:\n equities = {e.symbol: e for e, p in context.perf_tracker.position_tracker.positions.items()}\n instruments = list(reversed(list(ranker_prediction.instrument[ranker_prediction.instrument.apply(\n lambda x: x in equities and not context.has_unfinished_sell_order(equities[x]))])))\n # print('rank order for sell %s' % instruments)\n for instrument in instruments:\n context.order_target(context.symbol(instrument), 0)\n cash_for_sell -= positions[instrument]\n if cash_for_sell <= 0:\n break\n\n # 3. 生成买入订单:按机器学习算法预测的排序,买入前面的stock_count只股票\n buy_cash_weights = context.stock_weights\n buy_instruments = 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[2019-04-22 14:55:51.238491] INFO: bigquant: instruments.v2 开始运行..
[2019-04-22 14:55:51.241735] INFO: bigquant: 命中缓存
[2019-04-22 14:55:51.243330] INFO: bigquant: instruments.v2 运行完成[0.004836s].
[2019-04-22 14:55:51.247422] INFO: bigquant: advanced_auto_labeler.v2 开始运行..
[2019-04-22 14:55:51.250376] INFO: bigquant: 命中缓存
[2019-04-22 14:55:51.252145] INFO: bigquant: advanced_auto_labeler.v2 运行完成[0.004719s].
[2019-04-22 14:55:51.255880] INFO: bigquant: input_features.v1 开始运行..
[2019-04-22 14:55:51.334255] INFO: bigquant: input_features.v1 运行完成[0.078374s].
[2019-04-22 14:55:51.397309] INFO: bigquant: general_feature_extractor.v7 开始运行..
[2019-04-22 14:55:51.404673] INFO: bigquant: 命中缓存
[2019-04-22 14:55:51.406646] INFO: bigquant: general_feature_extractor.v7 运行完成[0.009344s].
[2019-04-22 14:55:51.410896] INFO: bigquant: derived_feature_extractor.v3 开始运行..
[2019-04-22 14:55:53.370245] INFO: general_feature_extractor: 提取完成 avg_amount_0/avg_amount_5, 0.017s
[2019-04-22 14:55:53.390025] INFO: general_feature_extractor: 提取完成 avg_amount_5/avg_amount_20, 0.017s
[2019-04-22 14:55:53.409878] INFO: general_feature_extractor: 提取完成 rank_avg_amount_0/rank_avg_amount_5, 0.017s
[2019-04-22 14:55:53.428049] INFO: general_feature_extractor: 提取完成 rank_avg_amount_5/rank_avg_amount_10, 0.016s
[2019-04-22 14:55:53.445840] INFO: general_feature_extractor: 提取完成 rank_return_0/rank_return_5, 0.013s
[2019-04-22 14:55:53.465370] INFO: general_feature_extractor: 提取完成 rank_return_5/rank_return_10, 0.017s
[2019-04-22 14:56:10.383287] INFO: general_feature_extractor: 提取完成 fs_net_profit_margin_0/group_mean(industry_sw_level1_0, fs_net_profit_margin_0), 16.915s
[2019-04-22 14:56:11.651327] INFO: general_feature_extractor: /y_2009, 375308
[2019-04-22 14:56:12.178524] INFO: general_feature_extractor: /y_2010, 431567
[2019-04-22 14:56:12.881009] INFO: general_feature_extractor: /y_2011, 511455
[2019-04-22 14:56:13.633385] INFO: general_feature_extractor: /y_2012, 565675
[2019-04-22 14:56:14.315937] INFO: general_feature_extractor: /y_2013, 564168
[2019-04-22 14:56:15.204275] INFO: general_feature_extractor: /y_2014, 569948
[2019-04-22 14:56:15.960099] INFO: bigquant: derived_feature_extractor.v3 运行完成[24.549192s].
[2019-04-22 14:56:15.964935] INFO: bigquant: join.v3 开始运行..
[2019-04-22 14:56:19.605565] INFO: join: /y_2009, 行数=373820/375308, 耗时=2.413359s
[2019-04-22 14:56:21.718175] INFO: join: /y_2010, 行数=430772/431567, 耗时=2.097136s
[2019-04-22 14:56:23.901871] INFO: join: /y_2011, 行数=510609/511455, 耗时=2.167167s
[2019-04-22 14:56:26.367657] INFO: join: /y_2012, 行数=564406/565675, 耗时=2.445963s
[2019-04-22 14:56:29.052015] INFO: join: /y_2013, 行数=562514/564168, 耗时=2.649591s
[2019-04-22 14:56:31.664850] INFO: join: /y_2014, 行数=339145/569948, 耗时=2.581354s
[2019-04-22 14:56:32.892204] INFO: join: 最终行数: 2781266
[2019-04-22 14:56:32.896959] INFO: bigquant: join.v3 运行完成[16.932015s].
[2019-04-22 14:56:32.902112] INFO: bigquant: dropnan.v1 开始运行..
[2019-04-22 14:56:34.030151] INFO: dropnan: /y_2009, 369431/373820
[2019-04-22 14:56:35.375584] INFO: dropnan: /y_2010, 410088/430772
[2019-04-22 14:56:36.708805] INFO: dropnan: /y_2011, 491474/510609
[2019-04-22 14:56:38.127608] INFO: dropnan: /y_2012, 552549/564406
[2019-04-22 14:56:40.127378] INFO: dropnan: /y_2013, 561777/562514
[2019-04-22 14:56:40.934422] INFO: dropnan: /y_2014, 336067/339145
[2019-04-22 14:56:41.999783] INFO: dropnan: 行数: 2721386/2781266
[2019-04-22 14:56:42.027143] INFO: bigquant: dropnan.v1 运行完成[9.125016s].
[2019-04-22 14:56:42.031491] INFO: bigquant: filter.v3 开始运行..
[2019-04-22 14:56:42.037883] INFO: filter: 使用表达式 list_days_0 >=120 过滤
[2019-04-22 14:56:42.764526] INFO: filter: 过滤 /y_2009, 368321/0/369431
[2019-04-22 14:56:43.304963] INFO: filter: 过滤 /y_2010, 401935/0/410088
[2019-04-22 14:56:43.942565] INFO: filter: 过滤 /y_2011, 483669/0/491474
[2019-04-22 14:56:44.746734] INFO: filter: 过滤 /y_2012, 547541/0/552549
[2019-04-22 14:56:45.350750] INFO: filter: 过滤 /y_2013, 561662/0/561777
[2019-04-22 14:56:45.734293] INFO: filter: 过滤 /y_2014, 335091/0/336067
[2019-04-22 14:56:45.839096] INFO: bigquant: filter.v3 运行完成[3.807601s].
[2019-04-22 14:56:45.843893] INFO: bigquant: cached.v3 开始运行..
[2019-04-22 14:56:54.282567] INFO: bigquant: cached.v3 运行完成[8.438655s].
[2019-04-22 14:56:54.300531] INFO: bigquant: stock_ranker_train.v5 开始运行..
[2019-04-22 14:56:57.495648] INFO: StockRanker: 特征预处理 ..
[2019-04-22 14:57:01.640565] INFO: StockRanker: prepare data: training ..
[2019-04-22 14:57:09.890640] INFO: StockRanker: sort ..
[2019-04-22 14:57:47.866649] INFO: StockRanker训练: d01fedac 准备训练: 2444039 行数
[2019-04-22 14:57:47.948670] INFO: StockRanker训练: 正在训练 ..
[2019-04-22 15:00:39.347540] INFO: bigquant: stock_ranker_train.v5 运行完成[225.047s].
[2019-04-22 15:00:39.351663] INFO: bigquant: instruments.v2 开始运行..
[2019-04-22 15:00:39.354834] INFO: bigquant: 命中缓存
[2019-04-22 15:00:39.356468] INFO: bigquant: instruments.v2 运行完成[0.004799s].
[2019-04-22 15:00:39.439012] INFO: bigquant: general_feature_extractor.v7 开始运行..
[2019-04-22 15:00:39.443513] INFO: bigquant: 命中缓存
[2019-04-22 15:00:39.445528] INFO: bigquant: general_feature_extractor.v7 运行完成[0.00652s].
[2019-04-22 15:00:39.449055] INFO: bigquant: derived_feature_extractor.v3 开始运行..
[2019-04-22 15:00:40.083623] INFO: general_feature_extractor: 提取完成 avg_amount_0/avg_amount_5, 0.009s
[2019-04-22 15:00:40.092987] INFO: general_feature_extractor: 提取完成 avg_amount_5/avg_amount_20, 0.007s
[2019-04-22 15:00:40.105572] INFO: general_feature_extractor: 提取完成 rank_avg_amount_0/rank_avg_amount_5, 0.011s
[2019-04-22 15:00:40.117120] INFO: general_feature_extractor: 提取完成 rank_avg_amount_5/rank_avg_amount_10, 0.009s
[2019-04-22 15:00:40.127844] INFO: general_feature_extractor: 提取完成 rank_return_0/rank_return_5, 0.008s
[2019-04-22 15:00:40.136771] INFO: general_feature_extractor: 提取完成 rank_return_5/rank_return_10, 0.007s
[2019-04-22 15:00:45.514843] INFO: general_feature_extractor: 提取完成 fs_net_profit_margin_0/group_mean(industry_sw_level1_0, fs_net_profit_margin_0), 5.376s
[2019-04-22 15:00:46.112825] INFO: general_feature_extractor: /y_2015, 569698
[2019-04-22 15:00:46.859979] INFO: general_feature_extractor: /y_2016, 641546
[2019-04-22 15:00:48.062658] INFO: bigquant: derived_feature_extractor.v3 运行完成[8.613582s].
[2019-04-22 15:00:48.066619] INFO: bigquant: dropnan.v1 开始运行..
[2019-04-22 15:00:49.288209] INFO: dropnan: /y_2015, 556049/569698
[2019-04-22 15:00:50.739504] INFO: dropnan: /y_2016, 630438/641546
[2019-04-22 15:00:51.810150] INFO: dropnan: 行数: 1186487/1211244
[2019-04-22 15:00:51.838838] INFO: bigquant: dropnan.v1 运行完成[3.772202s].
[2019-04-22 15:00:51.844279] INFO: bigquant: stock_ranker_predict.v5 开始运行..
[2019-04-22 15:00:52.672835] INFO: StockRanker预测: /y_2015 ..
[2019-04-22 15:00:54.525570] INFO: StockRanker预测: /y_2016 ..
[2019-04-22 15:00:59.682817] INFO: bigquant: stock_ranker_predict.v5 运行完成[7.838529s].
[2019-04-22 15:00:59.747215] INFO: bigquant: backtest.v8 开始运行..
[2019-04-22 15:00:59.753270] INFO: bigquant: biglearning backtest:V8.1.11
[2019-04-22 15:00:59.755858] INFO: bigquant: product_type:stock by specified
[2019-04-22 15:01:15.898974] INFO: bigquant: 读取股票行情完成:1990277
[2019-04-22 15:01:45.813057] INFO: algo: TradingAlgorithm V1.4.12
[2019-04-22 15:02:01.718649] INFO: algo: trading transform...
[2019-04-22 15:02:16.332196] INFO: Performance: Simulated 488 trading days out of 488.
[2019-04-22 15:02:16.334708] INFO: Performance: first open: 2015-01-05 09:30:00+00:00
[2019-04-22 15:02:16.337315] INFO: Performance: last close: 2016-12-30 15:00:00+00:00
[2019-04-22 15:02:21.335948] INFO: bigquant: backtest.v8 运行完成[81.588725s].
起始数据量: 2698219
去除创业板后数据量: 2444039
bigcharts-data-start/{"__type":"tabs","__id":"bigchart-66cf240bb46f41f0b39bc0ce7c0b196b"}/bigcharts-data-end
日期: 2015-06-26 股票: 000611.SZA 出现止损情况
日期: 2015-06-29 股票: 000611.SZA 出现止损情况
日期: 2015-06-30 股票: 000611.SZA 出现止损情况
日期: 2015-07-01 股票: 000611.SZA 出现止损情况
日期: 2015-07-01 股票: 002352.SZA 出现止损情况
日期: 2015-07-02 股票: 600242.SHA 出现止损情况
日期: 2015-07-02 股票: 600071.SHA 出现止损情况
日期: 2015-07-02 股票: 000560.SZA 出现止损情况
日期: 2015-07-02 股票: 000611.SZA 出现止损情况
日期: 2015-07-02 股票: 000025.SZA 出现止损情况
日期: 2015-07-03 股票: 600071.SHA 出现止损情况
日期: 2015-07-03 股票: 000018.SZA 出现止损情况
日期: 2015-07-03 股票: 000560.SZA 出现止损情况
日期: 2015-07-03 股票: 600242.SHA 出现止损情况
日期: 2015-07-03 股票: 000025.SZA 出现止损情况
日期: 2015-07-03 股票: 000611.SZA 出现止损情况
日期: 2015-07-06 股票: 600071.SHA 出现止损情况
日期: 2015-07-06 股票: 000018.SZA 出现止损情况
日期: 2015-07-06 股票: 000560.SZA 出现止损情况
日期: 2015-07-06 股票: 000020.SZA 出现止损情况
日期: 2015-07-06 股票: 600242.SHA 出现止损情况
日期: 2015-07-06 股票: 000025.SZA 出现止损情况
日期: 2015-07-06 股票: 000611.SZA 出现止损情况
日期: 2015-07-07 股票: 600071.SHA 出现止损情况
日期: 2015-07-07 股票: 000018.SZA 出现止损情况
日期: 2015-07-07 股票: 000560.SZA 出现止损情况
日期: 2015-07-07 股票: 000020.SZA 出现止损情况
日期: 2015-07-07 股票: 600242.SHA 出现止损情况
日期: 2015-07-07 股票: 000025.SZA 出现止损情况
日期: 2015-07-07 股票: 000611.SZA 出现止损情况
日期: 2015-07-08 股票: 600071.SHA 出现止损情况
日期: 2015-07-08 股票: 000018.SZA 出现止损情况
日期: 2015-07-08 股票: 000560.SZA 出现止损情况
日期: 2015-07-08 股票: 000020.SZA 出现止损情况
日期: 2015-07-08 股票: 600242.SHA 出现止损情况
日期: 2015-07-08 股票: 000025.SZA 出现止损情况
日期: 2015-07-08 股票: 600883.SHA 出现止损情况
日期: 2015-07-08 股票: 000611.SZA 出现止损情况
日期: 2015-07-09 股票: 600242.SHA 出现止损情况
日期: 2015-07-09 股票: 000560.SZA 出现止损情况
日期: 2015-07-09 股票: 000020.SZA 出现止损情况
日期: 2015-07-10 股票: 000560.SZA 出现止损情况
日期: 2015-07-10 股票: 000020.SZA 出现止损情况
日期: 2015-07-10 股票: 600242.SHA 出现止损情况
日期: 2015-07-13 股票: 000560.SZA 出现止损情况
日期: 2015-07-13 股票: 000020.SZA 出现止损情况
日期: 2015-07-14 股票: 000560.SZA 出现止损情况
日期: 2015-07-14 股票: 000020.SZA 出现止损情况
日期: 2015-07-15 股票: 000560.SZA 出现止损情况
日期: 2015-07-15 股票: 000020.SZA 出现止损情况
日期: 2015-07-16 股票: 000560.SZA 出现止损情况
日期: 2015-07-16 股票: 000020.SZA 出现止损情况
日期: 2015-07-17 股票: 000560.SZA 出现止损情况
日期: 2015-07-17 股票: 000020.SZA 出现止损情况
日期: 2015-07-20 股票: 000560.SZA 出现止损情况
日期: 2015-07-21 股票: 000560.SZA 出现止损情况
日期: 2015-07-22 股票: 000560.SZA 出现止损情况
日期: 2015-07-23 股票: 000560.SZA 出现止损情况
日期: 2015-07-24 股票: 000560.SZA 出现止损情况
日期: 2015-07-27 股票: 000560.SZA 出现止损情况
日期: 2015-08-24 股票: 600619.SHA 出现止损情况
日期: 2015-08-24 股票: 000564.SZA 出现止损情况
日期: 2015-08-25 股票: 600619.SHA 出现止损情况
日期: 2015-08-25 股票: 000564.SZA 出现止损情况
日期: 2015-08-25 股票: 600841.SHA 出现止损情况
日期: 2015-08-26 股票: 600071.SHA 出现止损情况
日期: 2015-08-26 股票: 000564.SZA 出现止损情况
日期: 2015-09-01 股票: 600163.SHA 出现止损情况
日期: 2015-09-02 股票: 600163.SHA 出现止损情况
日期: 2016-01-12 股票: 600841.SHA 出现止损情况
日期: 2016-01-14 股票: 600071.SHA 出现止损情况
日期: 2016-06-14 股票: 600230.SHA 出现止损情况
- 收益率146.51%
- 年化收益率59.35%
- 基准收益率-6.33%
- 阿尔法0.5
- 贝塔0.69
- 夏普比率1.47
- 胜率0.6
- 盈亏比0.9
- 收益波动率33.64%
- 信息比率0.12
- 最大回撤50.32%
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