# -*- encoding:utf-8 -*-from __future__ import print_functionimport seaborn as snsimport numpy as npfrom sklearn import metricsimport warningsimport ast# noinspection PyUnresolvedReferencesimport abu_local_envimport abupyfrom abupy import mlfrom abupy import AbuMetricsBase, EStoreAbu, abufrom abupy import ABuMarketDrawingfrom abupy import AbuFactorBuyBreakfrom abupy import AbuFactorAtrNStopfrom abupy import AbuFactorPreAtrNStopfrom abupy import AbuFactorCloseAtrNStopfrom abupy import EMarketTargetType, EMarketDataFetchModefrom abupy import AbuUmpMainDegfrom abupy import AbuUmpMainJumpfrom abupy import AbuUmpMainPricefrom abupy import AbuUmpMainWave# 设置选股因子,None为不使用选股因子stock_pickers = None# 买入因子依然延用向上突破因子buy_factors = [{'xd': 60, 'class': AbuFactorBuyBreak},{'xd': 42, 'class': AbuFactorBuyBreak}]# 卖出因子继续使用上一章使用的因子sell_factors = [{'stop_loss_n': 1.0, 'stop_win_n': 3.0, 'class': AbuFactorAtrNStop},{'class': AbuFactorPreAtrNStop, 'pre_atr_n': 1.5},{'class': AbuFactorCloseAtrNStop, 'close_atr_n': 1.5}]warnings.filterwarnings('ignore')sns.set_context(rc={'figure.figsize': (14, 7)})"""第11章 量化系统-机器学习•ABUabu量化系统github地址:https://github.com/bbfamily/abu (您的star是我的动力!)abu量化文档教程ipython notebook:https://github.com/bbfamily/abu/tree/master/abupy_lecture* 因为需要全市场回测所以本章无法使用沙盒数据,《量化交易之路》中的原始示例使用的是美股市场,这里的示例改为使用A股市场。* 本节可以对照阅读abu量化文档第20-23节内容* 本节的基础是在abu量化文档中第20节内容完成运行后有A股训练集交易和A股测试集交易数据之后"""def load_abu_result_tuple():abupy.env.g_market_target = EMarketTargetType.E_MARKET_TARGET_CNabupy.env.g_data_fetch_mode = EMarketDataFetchMode.E_DATA_FETCH_FORCE_LOCALabu_result_tuple_train = abu.load_abu_result_tuple(n_folds=5, store_type=EStoreAbu.E_STORE_CUSTOM_NAME,custom_name='train_cn')abu_result_tuple_test = abu.load_abu_result_tuple(n_folds=5, store_type=EStoreAbu.E_STORE_CUSTOM_NAME,custom_name='test_cn')metrics_train = AbuMetricsBase(*abu_result_tuple_train)metrics_train.fit_metrics()metrics_test = AbuMetricsBase(*abu_result_tuple_test)metrics_test.fit_metrics()return abu_result_tuple_train, abu_result_tuple_test, metrics_train, metrics_testdef sample_110():abu_result_tuple_train, abu_result_tuple_test, metrics_train, metrics_test = load_abu_result_tuple()metrics_train.plot_returns_cmp(only_show_returns=True)metrics_test.plot_returns_cmp(only_show_returns=True)def sample_111():"""11.1 搜索引擎与量化交易请对照阅读ABU量化系统使用文档 :第16节 UMP主裁交易决策 中相关内容:return:"""abu_result_tuple_train, abu_result_tuple_test, metrics_train, metrics_test = load_abu_result_tuple()orders_pd_train = abu_result_tuple_train.orders_pd# 选择失败的前20笔交易绘制交易快照# 这里只是示例,实战中根据需要挑选,rank或者其他方式plot_simple = orders_pd_train[orders_pd_train.profit_cg < 0][:20]# save=True保存在本地,文件保存在~/abu/data/save_png/中ABuMarketDrawing.plot_candle_from_order(plot_simple, save=True)"""11.2 主裁请对照阅读ABU量化系统使用文档 :第15节 中相关内容"""def sample_112():"""11.2.1 角度主裁, 11.2.2 使用全局最优对分类簇集合进行筛选:return:"""abu_result_tuple_train, abu_result_tuple_test, metrics_train, metrics_test = load_abu_result_tuple()orders_pd_train = abu_result_tuple_train.orders_pd# 参数为orders_pdump_deg = AbuUmpMainDeg(orders_pd_train)# df即由之前ump_main_make_xy生成的类df,表11-1所示print('ump_deg.fiter.df.head():\n', ump_deg.fiter.df.head())# 耗时操作,大概需要10几分钟,具体根据电脑性能,cpu情况_ = ump_deg.fit(brust_min=False)print('ump_deg.cprs:\n', ump_deg.cprs)max_failed_cluster = ump_deg.cprs.loc[ump_deg.cprs.lrs.argmax()]print('失败概率最大的分类簇{0}, 失败率为{1:.2f}%, 簇交易总数{2}, 簇平均交易获利{3:.2f}%'.format(ump_deg.cprs.lrs.argmax(), max_failed_cluster.lrs * 100, max_failed_cluster.lcs, max_failed_cluster.lms * 100))cpt = int(ump_deg.cprs.lrs.argmax().split('_')[0])print('cpt:\n', cpt)ump_deg.show_parse_rt(ump_deg.rts[cpt])max_failed_cluster_orders = ump_deg.nts[ump_deg.cprs.lrs.argmax()]print('max_failed_cluster_orders:\n', max_failed_cluster_orders)ml.show_orders_hist(max_failed_cluster_orders,['buy_deg_ang21', 'buy_deg_ang42', 'buy_deg_ang60', 'buy_deg_ang252'])print('分类簇中deg_ang60平均值为{0:.2f}'.format(max_failed_cluster_orders.buy_deg_ang60.mean()))print('分类簇中deg_ang21平均值为{0:.2f}'.format(max_failed_cluster_orders.buy_deg_ang21.mean()))print('分类簇中deg_ang42平均值为{0:.2f}'.format(max_failed_cluster_orders.buy_deg_ang42.mean()))print('分类簇中deg_ang252平均值为{0:.2f}'.format(max_failed_cluster_orders.buy_deg_ang252.mean()))ml.show_orders_hist(orders_pd_train, ['buy_deg_ang21', 'buy_deg_ang42', 'buy_deg_ang60', 'buy_deg_ang252'])print('训练数据集中deg_ang60平均值为{0:.2f}'.format(orders_pd_train.buy_deg_ang60.mean()))print('训练数据集中deg_ang21平均值为{0:.2f}'.format(orders_pd_train.buy_deg_ang21.mean()))print('训练数据集中deg_ang42平均值为{0:.2f}'.format(orders_pd_train.buy_deg_ang42.mean()))print('训练数据集中deg_ang252平均值为{0:.2f}'.format(orders_pd_train.buy_deg_ang252.mean()))"""11.2.2 使用全局最优对分类簇集合进行筛选"""brust_min = ump_deg.brust_min()print('brust_min:', brust_min)llps = ump_deg.cprs[(ump_deg.cprs['lps'] <= brust_min[0]) & (ump_deg.cprs['lms'] <= brust_min[1]) & (ump_deg.cprs['lrs'] >= brust_min[2])]print('llps:\n', llps)print(ump_deg.choose_cprs_component(llps))ump_deg.dump_clf(llps)"""11.2.3 跳空主裁"""def sample_1123():"""11.2.3 跳空主裁:return:"""abu_result_tuple_train, abu_result_tuple_test, metrics_train, metrics_test = load_abu_result_tuple()orders_pd_train = abu_result_tuple_train.orders_pdump_jump = AbuUmpMainJump.ump_main_clf_dump(orders_pd_train, save_order=False)print(ump_jump.fiter.df.head())print('失败概率最大的分类簇{0}'.format(ump_jump.cprs.lrs.argmax()))# 拿出跳空失败概率最大的分类簇max_failed_cluster_orders = ump_jump.nts[ump_jump.cprs.lrs.argmax()]# 显示失败概率最大的分类簇,表11-6所示print('max_failed_cluster_orders:\n', max_failed_cluster_orders)ml.show_orders_hist(max_failed_cluster_orders, feature_columns=['buy_diff_up_days', 'buy_jump_up_power','buy_diff_down_days', 'buy_jump_down_power'])print('分类簇中jump_up_power平均值为{0:.2f}, 向上跳空平均天数{1:.2f}'.format(max_failed_cluster_orders.buy_jump_up_power.mean(), max_failed_cluster_orders.buy_diff_up_days.mean()))print('分类簇中jump_down_power平均值为{0:.2f}, 向下跳空平均天数{1:.2f}'.format(max_failed_cluster_orders.buy_jump_down_power.mean(), max_failed_cluster_orders.buy_diff_down_days.mean()))print('训练数据集中jump_up_power平均值为{0:.2f},向上跳空平均天数{1:.2f}'.format(orders_pd_train.buy_jump_up_power.mean(), orders_pd_train.buy_diff_up_days.mean()))print('训练数据集中jump_down_power平均值为{0:.2f}, 向下跳空平均天数{1:.2f}'.format(orders_pd_train.buy_jump_down_power.mean(), orders_pd_train.buy_diff_down_days.mean()))"""11.2.4 价格主裁"""def sample_1124():"""11.2.4 价格主裁:return:"""abu_result_tuple_train, abu_result_tuple_test, metrics_train, metrics_test = load_abu_result_tuple()orders_pd_train = abu_result_tuple_train.orders_pdump_price = AbuUmpMainPrice.ump_main_clf_dump(orders_pd_train, save_order=False)print('ump_price.fiter.df.head():\n', ump_price.fiter.df.head())print('失败概率最大的分类簇{0}'.format(ump_price.cprs.lrs.argmax()))# 拿出价格失败概率最大的分类簇max_failed_cluster_orders = ump_price.nts[ump_price.cprs.lrs.argmax()]# 表11-8所示print('max_failed_cluster_orders:\n', max_failed_cluster_orders)"""11.2.5 波动主裁"""def sample_1125():"""11.2.5 波动主裁:return:"""abu_result_tuple_train, abu_result_tuple_test, metrics_train, metrics_test = load_abu_result_tuple()orders_pd_train = abu_result_tuple_train.orders_pd# 文件保存在~/abu/data/save_png/中ump_wave = AbuUmpMainWave.ump_main_clf_dump(orders_pd_train, save_order=True)print('ump_wave.fiter.df.head():\n', ump_wave.fiter.df.head())print('失败概率最大的分类簇{0}'.format(ump_wave.cprs.lrs.argmax()))# 拿出波动特征失败概率最大的分类簇max_failed_cluster_orders = ump_wave.nts[ump_wave.cprs.lrs.argmax()]# 表11-10所示print('max_failed_cluster_orders:\n', max_failed_cluster_orders)ml.show_orders_hist(max_failed_cluster_orders, feature_columns=['buy_wave_score1', 'buy_wave_score3'])print('分类簇中wave_score1平均值为{0:.2f}'.format(max_failed_cluster_orders.buy_wave_score1.mean()))print('分类簇中wave_score3平均值为{0:.2f}'.format(max_failed_cluster_orders.buy_wave_score3.mean()))ml.show_orders_hist(orders_pd_train, feature_columns=['buy_wave_score1', 'buy_wave_score1'])print('训练数据集中wave_score1平均值为{0:.2f}'.format(orders_pd_train.buy_wave_score1.mean()))print('训练数据集中wave_score3平均值为{0:.2f}'.format(orders_pd_train.buy_wave_score1.mean()))"""11.2.6 验证主裁是否称职请对照阅读ABU量化系统使用文档 :第21节 A股UMP决策 中相关内容"""def sample_1126():"""11.2.6 验证主裁是否称职:return:""""""需要有运行之前的代码即有本地化后的裁判,然后通过如下代码直接加载"""ump_deg = AbuUmpMainDeg(predict=True)ump_jump = AbuUmpMainJump(predict=True)ump_price = AbuUmpMainPrice(predict=True)ump_wave = AbuUmpMainWave(predict=True)def apply_ml_features_ump(order, predicter, need_hit_cnt):if not isinstance(order.ml_features, dict):# 低版本pandas dict对象取出来会成为strml_features = ast.literal_eval(order.ml_features)else:ml_features = order.ml_featuresreturn predicter.predict_kwargs(need_hit_cnt=need_hit_cnt, **ml_features)abu_result_tuple_train, abu_result_tuple_test, metrics_train, metrics_test = load_abu_result_tuple()# 选取有交易结果的数据order_has_resultorder_has_result = abu_result_tuple_test.orders_pd[abu_result_tuple_test.orders_pd.result != 0]# 角度主裁开始裁决order_has_result['ump_deg'] = order_has_result.apply(apply_ml_features_ump, axis=1, args=(ump_deg, 2,))# 跳空主裁开始裁决order_has_result['ump_jump'] = order_has_result.apply(apply_ml_features_ump, axis=1, args=(ump_jump, 2,))# 波动主裁开始裁决order_has_result['ump_wave'] = order_has_result.apply(apply_ml_features_ump, axis=1, args=(ump_wave, 2,))# 价格主裁开始裁决order_has_result['ump_price'] = order_has_result.apply(apply_ml_features_ump, axis=1, args=(ump_price, 2,))block_pd = order_has_result.filter(regex='^ump_*')block_pd['sum_bk'] = block_pd.sum(axis=1)block_pd['result'] = order_has_result['result']block_pd = block_pd[block_pd.sum_bk > 0]print('四个裁判整体拦截正确率{:.2f}%'.format(block_pd[block_pd.result == -1].result.count() / block_pd.result.count() * 100))print('block_pd.tail():\n', block_pd.tail())def sub_ump_show(block_name):sub_block_pd = block_pd[(block_pd[block_name] == 1)]# 如果失败就正确 -1->1 1->0# noinspection PyTypeCheckersub_block_pd.result = np.where(sub_block_pd.result == -1, 1, 0)return metrics.accuracy_score(sub_block_pd[block_name], sub_block_pd.result)print('角度裁判拦截正确率{:.2f}%'.format(sub_ump_show('ump_deg') * 100))print('跳空裁判拦截正确率{:.2f}%'.format(sub_ump_show('ump_jump') * 100))print('波动裁判拦截正确率{:.2f}%'.format(sub_ump_show('ump_wave') * 100))print('价格裁判拦截正确率{:.2f}%'.format(sub_ump_show('ump_price') * 100))"""11.2.7 在abu系统中开启主裁拦截模式请对照阅读ABU量化系统使用文档 :第21节 A股UMP决策 中相关内容""""""11.3.1 角度边裁请对照阅读ABU量化系统使用文档 :第17节 UMP边裁交易决策,第21节 A股UMP决策 中相关内容11.3.2 价格边裁请对照阅读ABU量化系统使用文档 :第17节 UMP边裁交易决策,第21节 A股UMP决策 中相关内容11.3.3 波动边裁请对照阅读ABU量化系统使用文档 :第17节 UMP边裁交易决策,第21节 A股UMP决策 中相关内容11.3.4 综合边裁请对照阅读ABU量化系统使用文档 :第17节 UMP边裁交易决策,第21节 A股UMP决策 中相关内容11.3.5 验证边裁是否称职请对照阅读ABU量化系统使用文档 :第21节 A股UMP决策 中相关内容11.3.6 在abu系统中开启边裁拦截模式请对照阅读ABU量化系统使用文档 :第21节 A股UMP决策 中相关内容"""if __name__ == "__main__":sample_111()# sample_112()# sample_1123()# sample_1124()# sample_1125()# sample_1126()
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