排序模型 通过召回的操作, 我们已经进行了问题规模的缩减, 对于每个用户, 选择出了N篇文章作为了候选集,并基于召回的候选集构建了与用户历史相关的特征,以及用户本身的属性特征,文章本省的属性特征,以及用户与文章之间的特征,下面就是使用机器学习模型来对构造好的特征进行学习,然后对测试集进行预测,得到测试集中的每个候选集用户点击的概率,返回点击概率最大的topk个文章,作为最终的结果。 排序阶段选择了三个比较有代表性的排序模型,它们分别是: LGB的排序模型 LGB的分类模型 深度学习的分类模型DIN 得到了最终的排序模型输出的结果之后,还选择了两种比较经典的模型集成的方法: 输出结果加权融合 Staking(将模型的输出结果再使用一个简单模型进行预测) 读取排序特征 返回排序后的结果
通过召回的操作, 我们已经进行了问题规模的缩减, 对于每个用户, 选择出了N篇文章作为了候选集,并基于召回的候选集构建了与用户历史相关的特征,以及用户本身的属性特征,文章本省的属性特征,以及用户与文章之间的特征,下面就是使用机器学习模型来对构造好的特征进行学习,然后对测试集进行预测,得到测试集中的每个候选集用户点击的概率,返回点击概率最大的topk个文章,作为最终的结果。
排序阶段选择了三个比较有代表性的排序模型,它们分别是:
得到了最终的排序模型输出的结果之后,还选择了两种比较经典的模型集成的方法:
import numpy as np import pandas as pd import pickle from tqdm import tqdm import gc, os import time from datetime import datetime import lightgbm as lgb from sklearn.preprocessing import MinMaxScaler import warnings warnings.filterwarnings('ignore')
data_path = './data_raw/' save_path = './temp_results/' offline = False
# 重新读取数据的时候,发现click_article_id是一个浮点数,所以将其转换成int类型 trn_user_item_feats_df = pd.read_csv(save_path + 'trn_user_item_feats_df.csv') trn_user_item_feats_df['click_article_id'] = trn_user_item_feats_df['click_article_id'].astype(int) if offline: val_user_item_feats_df = pd.read_csv(save_path + 'val_user_item_feats_df.csv') val_user_item_feats_df['click_article_id'] = val_user_item_feats_df['click_article_id'].astype(int) else: val_user_item_feats_df = None tst_user_item_feats_df = pd.read_csv(save_path + 'tst_user_item_feats_df.csv') tst_user_item_feats_df['click_article_id'] = tst_user_item_feats_df['click_article_id'].astype(int) # 做特征的时候为了方便,给测试集也打上了一个无效的标签,这里直接删掉就行 del tst_user_item_feats_df['label']
def submit(recall_df, topk=5, model_name=None): recall_df = recall_df.sort_values(by=['user_id', 'pred_score']) recall_df['rank'] = recall_df.groupby(['user_id'])['pred_score'].rank(ascending=False, method='first') # 判断是不是每个用户都有5篇文章及以上 tmp = recall_df.groupby('user_id').apply(lambda x: x['rank'].max()) assert tmp.min() >= topk del recall_df['pred_score'] submit = recall_df[recall_df['rank'] <= topk].set_index(['user_id', 'rank']).unstack(-1).reset_index() submit.columns = [int(col) if isinstance(col, int) else col for col in submit.columns.droplevel(0)] # 按照提交格式定义列名 submit = submit.rename(columns={'': 'user_id', 1: 'article_1', 2: 'article_2', 3: 'article_3', 4: 'article_4', 5: 'article_5'}) save_name = save_path + model_name + '_' + datetime.today().strftime('%m-%d') + '.csv' submit.to_csv(save_name, index=False, header=True)
# 排序结果归一化 def norm_sim(sim_df, weight=0.0): # print(sim_df.head()) min_sim = sim_df.min() max_sim = sim_df.max() if max_sim == min_sim: sim_df = sim_df.apply(lambda sim: 1.0) else: sim_df = sim_df.apply(lambda sim: 1.0 * (sim - min_sim) / (max_sim - min_sim)) sim_df = sim_df.apply(lambda sim: sim + weight) # plus one return sim_df
# 防止中间出错之后重新读取数据 trn_user_item_feats_df_rank_model = trn_user_item_feats_df.copy() if offline: val_user_item_feats_df_rank_model = val_user_item_feats_df.copy() tst_user_item_feats_df_rank_model = tst_user_item_feats_df.copy()
# 定义特征列 lgb_cols = ['sim0', 'time_diff0', 'word_diff0','sim_max', 'sim_min', 'sim_sum', 'sim_mean', 'score','click_size', 'time_diff_mean', 'active_level', 'click_environment','click_deviceGroup', 'click_os', 'click_country', 'click_region','click_referrer_type', 'user_time_hob1', 'user_time_hob2', 'words_hbo', 'category_id', 'created_at_ts','words_count']
# 排序模型分组 trn_user_item_feats_df_rank_model.sort_values(by=['user_id'], inplace=True) g_train = trn_user_item_feats_df_rank_model.groupby(['user_id'], as_index=False).count()["label"].values if offline: val_user_item_feats_df_rank_model.sort_values(by=['user_id'], inplace=True) g_val = val_user_item_feats_df_rank_model.groupby(['user_id'], as_index=False).count()["label"].values
# 排序模型定义 lgb_ranker = lgb.LGBMRanker(boosting_type='gbdt', num_leaves=31, reg_alpha=0.0, reg_lambda=1, max_depth=-1, n_estimators=100, subsample=0.7, colsample_bytree=0.7, subsample_freq=1, learning_rate=0.01, min_child_weight=50, random_state=2018, n_jobs= 16)
# 排序模型训练 if offline: lgb_ranker.fit(trn_user_item_feats_df_rank_model[lgb_cols], trn_user_item_feats_df_rank_model['label'], group=g_train, eval_set=[(val_user_item_feats_df_rank_model[lgb_cols], val_user_item_feats_df_rank_model['label'])], eval_group= [g_val], eval_at=[1, 2, 3, 4, 5], eval_metric=['ndcg', ], early_stopping_rounds=50, ) else: lgb_ranker.fit(trn_user_item_feats_df[lgb_cols], trn_user_item_feats_df['label'], group=g_train)
# 模型预测 tst_user_item_feats_df['pred_score'] = lgb_ranker.predict(tst_user_item_feats_df[lgb_cols], num_iteration=lgb_ranker.best_iteration_) # 将这里的排序结果保存一份,用户后面的模型融合 tst_user_item_feats_df[['user_id', 'click_article_id', 'pred_score']].to_csv(save_path + 'lgb_ranker_score.csv', index=False)
# 预测结果重新排序, 及生成提交结果 rank_results = tst_user_item_feats_df[['user_id', 'click_article_id', 'pred_score']] rank_results['click_article_id'] = rank_results['click_article_id'].astype(int) submit(rank_results, topk=5, model_name='lgb_ranker')
# 五折交叉验证,这里的五折交叉是以用户为目标进行五折划分 # 这一部分与前面的单独训练和验证是分开的 def get_kfold_users(trn_df, n=5): user_ids = trn_df['user_id'].unique() user_set = [user_ids[i::n] for i in range(n)] return user_set k_fold = 5 trn_df = trn_user_item_feats_df_rank_model user_set = get_kfold_users(trn_df, n=k_fold) score_list = [] score_df = trn_df[['user_id', 'click_article_id','label']] sub_preds = np.zeros(tst_user_item_feats_df_rank_model.shape[0]) # 五折交叉验证,并将中间结果保存用于staking for n_fold, valid_user in enumerate(user_set): train_idx = trn_df[~trn_df['user_id'].isin(valid_user)] # add slide user valid_idx = trn_df[trn_df['user_id'].isin(valid_user)] # 训练集与验证集的用户分组 train_idx.sort_values(by=['user_id'], inplace=True) g_train = train_idx.groupby(['user_id'], as_index=False).count()["label"].values valid_idx.sort_values(by=['user_id'], inplace=True) g_val = valid_idx.groupby(['user_id'], as_index=False).count()["label"].values # 定义模型 lgb_ranker = lgb.LGBMRanker(boosting_type='gbdt', num_leaves=31, reg_alpha=0.0, reg_lambda=1, max_depth=-1, n_estimators=100, subsample=0.7, colsample_bytree=0.7, subsample_freq=1, learning_rate=0.01, min_child_weight=50, random_state=2018, n_jobs= 16) # 训练模型 lgb_ranker.fit(train_idx[lgb_cols], train_idx['label'], group=g_train, eval_set=[(valid_idx[lgb_cols], valid_idx['label'])], eval_group= [g_val], eval_at=[1, 2, 3, 4, 5], eval_metric=['ndcg', ], early_stopping_rounds=50, ) # 预测验证集结果 valid_idx['pred_score'] = lgb_ranker.predict(valid_idx[lgb_cols], num_iteration=lgb_ranker.best_iteration_) # 对输出结果进行归一化 valid_idx['pred_score'] = valid_idx[['pred_score']].transform(lambda x: norm_sim(x)) valid_idx.sort_values(by=['user_id', 'pred_score']) valid_idx['pred_rank'] = valid_idx.groupby(['user_id'])['pred_score'].rank(ascending=False, method='first') # 将验证集的预测结果放到一个列表中,后面进行拼接 score_list.append(valid_idx[['user_id', 'click_article_id', 'pred_score', 'pred_rank']]) # 如果是线上测试,需要计算每次交叉验证的结果相加,最后求平均 if not offline: sub_preds += lgb_ranker.predict(tst_user_item_feats_df_rank_model[lgb_cols], lgb_ranker.best_iteration_) score_df_ = pd.concat(score_list, axis=0) score_df = score_df.merge(score_df_, how='left', on=['user_id', 'click_article_id']) # 保存训练集交叉验证产生的新特征 score_df[['user_id', 'click_article_id', 'pred_score', 'pred_rank', 'label']].to_csv(save_path + 'trn_lgb_ranker_feats.csv', index=False) # 测试集的预测结果,多次交叉验证求平均,将预测的score和对应的rank特征保存,可以用于后面的staking,这里还可以构造其他更多的特征 tst_user_item_feats_df_rank_model['pred_score'] = sub_preds / k_fold tst_user_item_feats_df_rank_model['pred_score'] = tst_user_item_feats_df_rank_model['pred_score'].transform(lambda x: norm_sim(x)) tst_user_item_feats_df_rank_model.sort_values(by=['user_id', 'pred_score']) tst_user_item_feats_df_rank_model['pred_rank'] = tst_user_item_feats_df_rank_model.groupby(['user_id'])['pred_score'].rank(ascending=False, method='first') # 保存测试集交叉验证的新特征 tst_user_item_feats_df_rank_model[['user_id', 'click_article_id', 'pred_score', 'pred_rank']].to_csv(save_path + 'tst_lgb_ranker_feats.csv', index=False)
# 预测结果重新排序, 及生成提交结果 # 单模型生成提交结果 rank_results = tst_user_item_feats_df_rank_model[['user_id', 'click_article_id', 'pred_score']] rank_results['click_article_id'] = rank_results['click_article_id'].astype(int) submit(rank_results, topk=5, model_name='lgb_ranker')
# 模型及参数的定义 lgb_Classfication = lgb.LGBMClassifier(boosting_type='gbdt', num_leaves=31, reg_alpha=0.0, reg_lambda=1, max_depth=-1, n_estimators=500, subsample=0.7, colsample_bytree=0.7, subsample_freq=1, learning_rate=0.01, min_child_weight=50, random_state=2018, n_jobs= 16, verbose=10)
# 模型训练 if offline: lgb_Classfication.fit(trn_user_item_feats_df_rank_model[lgb_cols], trn_user_item_feats_df_rank_model['label'], eval_set=[(val_user_item_feats_df_rank_model[lgb_cols], val_user_item_feats_df_rank_model['label'])], eval_metric=['auc', ],early_stopping_rounds=50, ) else: lgb_Classfication.fit(trn_user_item_feats_df_rank_model[lgb_cols], trn_user_item_feats_df_rank_model['label'])
# 模型预测 tst_user_item_feats_df['pred_score'] = lgb_Classfication.predict_proba(tst_user_item_feats_df[lgb_cols])[:,1] # 将这里的排序结果保存一份,用户后面的模型融合 tst_user_item_feats_df[['user_id', 'click_article_id', 'pred_score']].to_csv(save_path + 'lgb_cls_score.csv', index=False)
# 预测结果重新排序, 及生成提交结果 rank_results = tst_user_item_feats_df[['user_id', 'click_article_id', 'pred_score']] rank_results['click_article_id'] = rank_results['click_article_id'].astype(int) submit(rank_results, topk=5, model_name='lgb_cls')
# 五折交叉验证,这里的五折交叉是以用户为目标进行五折划分 # 这一部分与前面的单独训练和验证是分开的 def get_kfold_users(trn_df, n=5): user_ids = trn_df['user_id'].unique() user_set = [user_ids[i::n] for i in range(n)] return user_set k_fold = 5 trn_df = trn_user_item_feats_df_rank_model user_set = get_kfold_users(trn_df, n=k_fold) score_list = [] score_df = trn_df[['user_id', 'click_article_id', 'label']] sub_preds = np.zeros(tst_user_item_feats_df_rank_model.shape[0]) # 五折交叉验证,并将中间结果保存用于staking for n_fold, valid_user in enumerate(user_set): train_idx = trn_df[~trn_df['user_id'].isin(valid_user)] # add slide user valid_idx = trn_df[trn_df['user_id'].isin(valid_user)] # 模型及参数的定义 lgb_Classfication = lgb.LGBMClassifier(boosting_type='gbdt', num_leaves=31, reg_alpha=0.0, reg_lambda=1, max_depth=-1, n_estimators=100, subsample=0.7, colsample_bytree=0.7, subsample_freq=1, learning_rate=0.01, min_child_weight=50, random_state=2018, n_jobs= 16, verbose=10) # 训练模型 lgb_Classfication.fit(train_idx[lgb_cols], train_idx['label'],eval_set=[(valid_idx[lgb_cols], valid_idx['label'])], eval_metric=['auc', ],early_stopping_rounds=50, ) # 预测验证集结果 valid_idx['pred_score'] = lgb_Classfication.predict_proba(valid_idx[lgb_cols], num_iteration=lgb_Classfication.best_iteration_)[:,1] # 对输出结果进行归一化 分类模型输出的值本身就是一个概率值不需要进行归一化 # valid_idx['pred_score'] = valid_idx[['pred_score']].transform(lambda x: norm_sim(x)) valid_idx.sort_values(by=['user_id', 'pred_score']) valid_idx['pred_rank'] = valid_idx.groupby(['user_id'])['pred_score'].rank(ascending=False, method='first') # 将验证集的预测结果放到一个列表中,后面进行拼接 score_list.append(valid_idx[['user_id', 'click_article_id', 'pred_score', 'pred_rank']]) # 如果是线上测试,需要计算每次交叉验证的结果相加,最后求平均 if not offline: sub_preds += lgb_Classfication.predict_proba(tst_user_item_feats_df_rank_model[lgb_cols], num_iteration=lgb_Classfication.best_iteration_)[:,1] score_df_ = pd.concat(score_list, axis=0) score_df = score_df.merge(score_df_, how='left', on=['user_id', 'click_article_id']) # 保存训练集交叉验证产生的新特征 score_df[['user_id', 'click_article_id', 'pred_score', 'pred_rank', 'label']].to_csv(save_path + 'trn_lgb_cls_feats.csv', index=False) # 测试集的预测结果,多次交叉验证求平均,将预测的score和对应的rank特征保存,可以用于后面的staking,这里还可以构造其他更多的特征 tst_user_item_feats_df_rank_model['pred_score'] = sub_preds / k_fold tst_user_item_feats_df_rank_model['pred_score'] = tst_user_item_feats_df_rank_model['pred_score'].transform(lambda x: norm_sim(x)) tst_user_item_feats_df_rank_model.sort_values(by=['user_id', 'pred_score']) tst_user_item_feats_df_rank_model['pred_rank'] = tst_user_item_feats_df_rank_model.groupby(['user_id'])['pred_score'].rank(ascending=False, method='first') # 保存测试集交叉验证的新特征 tst_user_item_feats_df_rank_model[['user_id', 'click_article_id', 'pred_score', 'pred_rank']].to_csv(save_path + 'tst_lgb_cls_feats.csv', index=False)
# 预测结果重新排序, 及生成提交结果 rank_results = tst_user_item_feats_df_rank_model[['user_id', 'click_article_id', 'pred_score']] rank_results['click_article_id'] = rank_results['click_article_id'].astype(int) submit(rank_results, topk=5, model_name='lgb_cls')
这个是为后面的DIN模型服务的
if offline: all_data = pd.read_csv('./data_raw/train_click_log.csv') else: trn_data = pd.read_csv('./data_raw/train_click_log.csv') tst_data = pd.read_csv('./data_raw/testA_click_log.csv') all_data = trn_data.append(tst_data)
hist_click =all_data[['user_id', 'click_article_id']].groupby('user_id').agg({list}).reset_index() his_behavior_df = pd.DataFrame() his_behavior_df['user_id'] = hist_click['user_id'] his_behavior_df['hist_click_article_id'] = hist_click['click_article_id']
trn_user_item_feats_df_din_model = trn_user_item_feats_df.copy() if offline: val_user_item_feats_df_din_model = val_user_item_feats_df.copy() else: val_user_item_feats_df_din_model = None tst_user_item_feats_df_din_model = tst_user_item_feats_df.copy()
trn_user_item_feats_df_din_model = trn_user_item_feats_df_din_model.merge(his_behavior_df, on='user_id') if offline: val_user_item_feats_df_din_model = val_user_item_feats_df_din_model.merge(his_behavior_df, on='user_id') else: val_user_item_feats_df_din_model = None tst_user_item_feats_df_din_model = tst_user_item_feats_df_din_model.merge(his_behavior_df, on='user_id')
我们下面尝试使用DIN模型, DIN的全称是Deep Interest Network, 这是阿里2018年基于前面的深度学习模型无法表达用户多样化的兴趣而提出的一个模型, 它可以通过考虑【给定的候选广告】和【用户的历史行为】的相关性,来计算用户兴趣的表示向量。具体来说就是通过引入局部激活单元,通过软搜索历史行为的相关部分来关注相关的用户兴趣,并采用加权和来获得有关候选广告的用户兴趣的表示。与候选广告相关性较高的行为会获得较高的激活权重,并支配着用户兴趣。该表示向量在不同广告上有所不同,大大提高了模型的表达能力。所以该模型对于此次新闻推荐的任务也比较适合, 我们在这里通过当前的候选文章与用户历史点击文章的相关性来计算用户对于文章的兴趣。 该模型的结构如下:

我们这里直接调包来使用这个模型, 关于这个模型的详细细节部分我们会在下一期的推荐系统组队学习中给出。下面说一下该模型如何具体使用:deepctr的函数原型如下:
def DIN(dnn_feature_columns, history_feature_list, dnn_use_bn=False,
dnn_hidden_units=(200, 80), dnn_activation='relu', att_hidden_size=(80, 40), att_activation="dice",
att_weight_normalization=False, l2_reg_dnn=0, l2_reg_embedding=1e-6, dnn_dropout=0, seed=1024,
task='binary'):
- dnn_feature_columns: 特征列, 包含数据所有特征的列表
- history_feature_list: 用户历史行为列, 反应用户历史行为的特征的列表
- dnn_use_bn: 是否使用BatchNormalization
- dnn_hidden_units: 全连接层网络的层数和每一层神经元的个数, 一个列表或者元组
- dnn_activation_relu: 全连接网络的激活单元类型
- att_hidden_size: 注意力层的全连接网络的层数和每一层神经元的个数
- att_activation: 注意力层的激活单元类型
- att_weight_normalization: 是否归一化注意力得分
- l2_reg_dnn: 全连接网络的正则化系数
- l2_reg_embedding: embedding向量的正则化稀疏
- dnn_dropout: 全连接网络的神经元的失活概率
- task: 任务, 可以是分类, 也可是是回归
在具体使用的时候, 我们必须要传入特征列和历史行为列, 但是再传入之前, 我们需要进行一下特征列的预处理。具体如下:
下面根据具体的代码感受一下, 逻辑是这样, 首先我们需要写一个数据准备函数, 在这里面就是根据上面的具体步骤准备数据, 得到数据和特征列, 然后就是建立DIN模型并训练, 最后基于模型进行测试。
# 导入deepctr from deepctr.models import DIN from deepctr.feature_column import SparseFeat, VarLenSparseFeat, DenseFeat, get_feature_names from tensorflow.keras.preprocessing.sequence import pad_sequences from tensorflow.keras import backend as K from tensorflow.keras.layers import * from tensorflow.keras.models import * from tensorflow.keras.callbacks import * import tensorflow as tf import os os.environ["CUDA_DEVICE_ORDER"] = "PCI_BUS_ID" os.environ["CUDA_VISIBLE_DEVICES"] = "2"
# 数据准备函数 def get_din_feats_columns(df, dense_fea, sparse_fea, behavior_fea, his_behavior_fea, emb_dim=32, max_len=100): """ 数据准备函数: df: 数据集 dense_fea: 数值型特征列 sparse_fea: 离散型特征列 behavior_fea: 用户的候选行为特征列 his_behavior_fea: 用户的历史行为特征列 embedding_dim: embedding的维度, 这里为了简单, 统一把离散型特征列采用一样的隐向量维度 max_len: 用户序列的最大长度 """ sparse_feature_columns = [SparseFeat(feat, vocabulary_size=df[feat].nunique() + 1, embedding_dim=emb_dim) for feat in sparse_fea] dense_feature_columns = [DenseFeat(feat, 1, ) for feat in dense_fea] var_feature_columns = [VarLenSparseFeat(SparseFeat(feat, vocabulary_size=df['click_article_id'].nunique() + 1, embedding_dim=emb_dim, embedding_name='click_article_id'), maxlen=max_len) for feat in hist_behavior_fea] dnn_feature_columns = sparse_feature_columns + dense_feature_columns + var_feature_columns # 建立x, x是一个字典的形式 x = {} for name in get_feature_names(dnn_feature_columns): if name in his_behavior_fea: # 这是历史行为序列 his_list = [l for l in df[name]] x[name] = pad_sequences(his_list, maxlen=max_len, padding='post') # 二维数组 else: x[name] = df[name].values return x, dnn_feature_columns
# 把特征分开 sparse_fea = ['user_id', 'click_article_id', 'category_id', 'click_environment', 'click_deviceGroup', 'click_os', 'click_country', 'click_region', 'click_referrer_type', 'is_cat_hab'] behavior_fea = ['click_article_id'] hist_behavior_fea = ['hist_click_article_id'] dense_fea = ['sim0', 'time_diff0', 'word_diff0', 'sim_max', 'sim_min', 'sim_sum', 'sim_mean', 'score', 'rank','click_size','time_diff_mean','active_level','user_time_hob1','user_time_hob2', 'words_hbo','words_count']
# dense特征进行归一化, 神经网络训练都需要将数值进行归一化处理 mm = MinMaxScaler() # 下面是做一些特殊处理,当在其他的地方出现无效值的时候,不处理无法进行归一化,刚开始可以先把他注释掉,在运行了下面的代码 # 之后如果发现报错,应该先去想办法处理如何不出现inf之类的值 # trn_user_item_feats_df_din_model.replace([np.inf, -np.inf], 0, inplace=True) # tst_user_item_feats_df_din_model.replace([np.inf, -np.inf], 0, inplace=True) for feat in dense_fea: trn_user_item_feats_df_din_model[feat] = mm.fit_transform(trn_user_item_feats_df_din_model[[feat]]) if val_user_item_feats_df_din_model is not None: val_user_item_feats_df_din_model[feat] = mm.fit_transform(val_user_item_feats_df_din_model[[feat]]) tst_user_item_feats_df_din_model[feat] = mm.fit_transform(tst_user_item_feats_df_din_model[[feat]])
# 准备训练数据 x_trn, dnn_feature_columns = get_din_feats_columns(trn_user_item_feats_df_din_model, dense_fea, sparse_fea, behavior_fea, hist_behavior_fea, max_len=50) y_trn = trn_user_item_feats_df_din_model['label'].values if offline: # 准备验证数据 x_val, dnn_feature_columns = get_din_feats_columns(val_user_item_feats_df_din_model, dense_fea, sparse_fea, behavior_fea, hist_behavior_fea, max_len=50) y_val = val_user_item_feats_df_din_model['label'].values dense_fea = [x for x in dense_fea if x != 'label'] x_tst, dnn_feature_columns = get_din_feats_columns(tst_user_item_feats_df_din_model, dense_fea, sparse_fea, behavior_fea, hist_behavior_fea, max_len=50)
WARNING:tensorflow:From /home/ryluo/anaconda3/lib/python3.6/site-packages/tensorflow/python/keras/initializers.py:143: calling RandomNormal.__init__ (from tensorflow.python.ops.init_ops) with dtype is deprecated and will be removed in a future version. Instructions for updating: Call initializer instance with the dtype argument instead of passing it to the constructor
# 建立模型 model = DIN(dnn_feature_columns, behavior_fea) # 查看模型结构 model.summary() # 模型编译 model.compile('adam', 'binary_crossentropy',metrics=['binary_crossentropy', tf.keras.metrics.AUC()])
WARNING:tensorflow:From /home/ryluo/anaconda3/lib/python3.6/site-packages/tensorflow/python/ops/init_ops.py:1288: calling VarianceScaling.__init__ (from tensorflow.python.ops.init_ops) with dtype is deprecated and will be removed in a future version. Instructions for updating: Call initializer instance with the dtype argument instead of passing it to the constructor WARNING:tensorflow:From /home/ryluo/anaconda3/lib/python3.6/site-packages/tensorflow/python/autograph/impl/api.py:255: add_dispatch_support.<locals>.wrapper (from tensorflow.python.ops.array_ops) is deprecated and will be removed in a future version. Instructions for updating: Use tf.where in 2.0, which has the same broadcast rule as np.where Model: "model" __________________________________________________________________________________________________ Layer (type) Output Shape Param # Connected to ================================================================================================== user_id (InputLayer) [(None, 1)] 0 __________________________________________________________________________________________________ click_article_id (InputLayer) [(None, 1)] 0 __________________________________________________________________________________________________ category_id (InputLayer) [(None, 1)] 0 __________________________________________________________________________________________________ click_environment (InputLayer) [(None, 1)] 0 __________________________________________________________________________________________________ click_deviceGroup (InputLayer) [(None, 1)] 0 __________________________________________________________________________________________________ click_os (InputLayer) [(None, 1)] 0 __________________________________________________________________________________________________ click_country (InputLayer) [(None, 1)] 0 __________________________________________________________________________________________________ click_region (InputLayer) [(None, 1)] 0 __________________________________________________________________________________________________ click_referrer_type (InputLayer [(None, 1)] 0 __________________________________________________________________________________________________ is_cat_hab (InputLayer) [(None, 1)] 0 __________________________________________________________________________________________________ sparse_emb_user_id (Embedding) (None, 1, 32) 1600032 user_id[0][0] __________________________________________________________________________________________________ sparse_seq_emb_hist_click_artic multiple 525664 click_article_id[0][0] hist_click_article_id[0][0] click_article_id[0][0] __________________________________________________________________________________________________ sparse_emb_category_id (Embeddi (None, 1, 32) 7776 category_id[0][0] __________________________________________________________________________________________________ sparse_emb_click_environment (E (None, 1, 32) 128 click_environment[0][0] __________________________________________________________________________________________________ sparse_emb_click_deviceGroup (E (None, 1, 32) 160 click_deviceGroup[0][0] __________________________________________________________________________________________________ sparse_emb_click_os (Embedding) (None, 1, 32) 288 click_os[0][0] __________________________________________________________________________________________________ sparse_emb_click_country (Embed (None, 1, 32) 384 click_country[0][0] __________________________________________________________________________________________________ sparse_emb_click_region (Embedd (None, 1, 32) 928 click_region[0][0] __________________________________________________________________________________________________ sparse_emb_click_referrer_type (None, 1, 32) 256 click_referrer_type[0][0] __________________________________________________________________________________________________ sparse_emb_is_cat_hab (Embeddin (None, 1, 32) 64 is_cat_hab[0][0] __________________________________________________________________________________________________ no_mask (NoMask) (None, 1, 32) 0 sparse_emb_user_id[0][0] sparse_seq_emb_hist_click_article sparse_emb_category_id[0][0] sparse_emb_click_environment[0][0 sparse_emb_click_deviceGroup[0][0 sparse_emb_click_os[0][0] sparse_emb_click_country[0][0] sparse_emb_click_region[0][0] sparse_emb_click_referrer_type[0] sparse_emb_is_cat_hab[0][0] __________________________________________________________________________________________________ hist_click_article_id (InputLay [(None, 50)] 0 __________________________________________________________________________________________________ concatenate (Concatenate) (None, 1, 320) 0 no_mask[0][0] no_mask[1][0] no_mask[2][0] no_mask[3][0] no_mask[4][0] no_mask[5][0] no_mask[6][0] no_mask[7][0] no_mask[8][0] no_mask[9][0] __________________________________________________________________________________________________ no_mask_1 (NoMask) (None, 1, 320) 0 concatenate[0][0] __________________________________________________________________________________________________ attention_sequence_pooling_laye (None, 1, 32) 13961 sparse_seq_emb_hist_click_article sparse_seq_emb_hist_click_article __________________________________________________________________________________________________ concatenate_1 (Concatenate) (None, 1, 352) 0 no_mask_1[0][0] attention_sequence_pooling_layer[ __________________________________________________________________________________________________ sim0 (InputLayer) [(None, 1)] 0 __________________________________________________________________________________________________ time_diff0 (InputLayer) [(None, 1)] 0 __________________________________________________________________________________________________ word_diff0 (InputLayer) [(None, 1)] 0 __________________________________________________________________________________________________ sim_max (InputLayer) [(None, 1)] 0 __________________________________________________________________________________________________ sim_min (InputLayer) [(None, 1)] 0 __________________________________________________________________________________________________ sim_sum (InputLayer) [(None, 1)] 0 __________________________________________________________________________________________________ sim_mean (InputLayer) [(None, 1)] 0 __________________________________________________________________________________________________ score (InputLayer) [(None, 1)] 0 __________________________________________________________________________________________________ rank (InputLayer) [(None, 1)] 0 __________________________________________________________________________________________________ click_size (InputLayer) [(None, 1)] 0 __________________________________________________________________________________________________ time_diff_mean (InputLayer) [(None, 1)] 0 __________________________________________________________________________________________________ active_level (InputLayer) [(None, 1)] 0 __________________________________________________________________________________________________ user_time_hob1 (InputLayer) [(None, 1)] 0 __________________________________________________________________________________________________ user_time_hob2 (InputLayer) [(None, 1)] 0 __________________________________________________________________________________________________ words_hbo (InputLayer) [(None, 1)] 0 __________________________________________________________________________________________________ words_count (InputLayer) [(None, 1)] 0 __________________________________________________________________________________________________ flatten (Flatten) (None, 352) 0 concatenate_1[0][0] __________________________________________________________________________________________________ no_mask_3 (NoMask) (None, 1) 0 sim0[0][0] time_diff0[0][0] word_diff0[0][0] sim_max[0][0] sim_min[0][0] sim_sum[0][0] sim_mean[0][0] score[0][0] rank[0][0] click_size[0][0] time_diff_mean[0][0] active_level[0][0] user_time_hob1[0][0] user_time_hob2[0][0] words_hbo[0][0] words_count[0][0] __________________________________________________________________________________________________ no_mask_2 (NoMask) (None, 352) 0 flatten[0][0] __________________________________________________________________________________________________ concatenate_2 (Concatenate) (None, 16) 0 no_mask_3[0][0] no_mask_3[1][0] no_mask_3[2][0] no_mask_3[3][0] no_mask_3[4][0] no_mask_3[5][0] no_mask_3[6][0] no_mask_3[7][0] no_mask_3[8][0] no_mask_3[9][0] no_mask_3[10][0] no_mask_3[11][0] no_mask_3[12][0] no_mask_3[13][0] no_mask_3[14][0] no_mask_3[15][0] __________________________________________________________________________________________________ flatten_1 (Flatten) (None, 352) 0 no_mask_2[0][0] __________________________________________________________________________________________________ flatten_2 (Flatten) (None, 16) 0 concatenate_2[0][0] __________________________________________________________________________________________________ no_mask_4 (NoMask) multiple 0 flatten_1[0][0] flatten_2[0][0] __________________________________________________________________________________________________ concatenate_3 (Concatenate) (None, 368) 0 no_mask_4[0][0] no_mask_4[1][0] __________________________________________________________________________________________________ dnn_1 (DNN) (None, 80) 89880 concatenate_3[0][0] __________________________________________________________________________________________________ dense (Dense) (None, 1) 80 dnn_1[0][0] __________________________________________________________________________________________________ prediction_layer (PredictionLay (None, 1) 1 dense[0][0] ================================================================================================== Total params: 2,239,602 Trainable params: 2,239,362 Non-trainable params: 240 __________________________________________________________________________________________________
# 模型训练 if offline: history = model.fit(x_trn, y_trn, verbose=1, epochs=10, validation_data=(x_val, y_val) , batch_size=256) else: # 也可以使用上面的语句用自己采样出来的验证集 # history = model.fit(x_trn, y_trn, verbose=1, epochs=3, validation_split=0.3, batch_size=256) history = model.fit(x_trn, y_trn, verbose=1, epochs=2, batch_size=256)
Epoch 1/2 290964/290964 [==============================] - 55s 189us/sample - loss: 0.4209 - binary_crossentropy: 0.4206 - auc: 0.7842 Epoch 2/2 290964/290964 [==============================] - 52s 178us/sample - loss: 0.3630 - binary_crossentropy: 0.3618 - auc: 0.8478
# 模型预测 tst_user_item_feats_df_din_model['pred_score'] = model.predict(x_tst, verbose=1, batch_size=256) tst_user_item_feats_df_din_model[['user_id', 'click_article_id', 'pred_score']].to_csv(save_path + 'din_rank_score.csv', index=False)
500000/500000 [==============================] - 20s 39us/sample
# 预测结果重新排序, 及生成提交结果 rank_results = tst_user_item_feats_df_din_model[['user_id', 'click_article_id', 'pred_score']] submit(rank_results, topk=5, model_name='din')
# 五折交叉验证,这里的五折交叉是以用户为目标进行五折划分 # 这一部分与前面的单独训练和验证是分开的 def get_kfold_users(trn_df, n=5): user_ids = trn_df['user_id'].unique() user_set = [user_ids[i::n] for i in range(n)] return user_set k_fold = 5 trn_df = trn_user_item_feats_df_din_model user_set = get_kfold_users(trn_df, n=k_fold) score_list = [] score_df = trn_df[['user_id', 'click_article_id', 'label']] sub_preds = np.zeros(tst_user_item_feats_df_rank_model.shape[0]) dense_fea = [x for x in dense_fea if x != 'label'] x_tst, dnn_feature_columns = get_din_feats_columns(tst_user_item_feats_df_din_model, dense_fea, sparse_fea, behavior_fea, hist_behavior_fea, max_len=50) # 五折交叉验证,并将中间结果保存用于staking for n_fold, valid_user in enumerate(user_set): train_idx = trn_df[~trn_df['user_id'].isin(valid_user)] # add slide user valid_idx = trn_df[trn_df['user_id'].isin(valid_user)] # 准备训练数据 x_trn, dnn_feature_columns = get_din_feats_columns(train_idx, dense_fea, sparse_fea, behavior_fea, hist_behavior_fea, max_len=50) y_trn = train_idx['label'].values # 准备验证数据 x_val, dnn_feature_columns = get_din_feats_columns(valid_idx, dense_fea, sparse_fea, behavior_fea, hist_behavior_fea, max_len=50) y_val = valid_idx['label'].values history = model.fit(x_trn, y_trn, verbose=1, epochs=2, validation_data=(x_val, y_val) , batch_size=256) # 预测验证集结果 valid_idx['pred_score'] = model.predict(x_val, verbose=1, batch_size=256) valid_idx.sort_values(by=['user_id', 'pred_score']) valid_idx['pred_rank'] = valid_idx.groupby(['user_id'])['pred_score'].rank(ascending=False, method='first') # 将验证集的预测结果放到一个列表中,后面进行拼接 score_list.append(valid_idx[['user_id', 'click_article_id', 'pred_score', 'pred_rank']]) # 如果是线上测试,需要计算每次交叉验证的结果相加,最后求平均 if not offline: sub_preds += model.predict(x_tst, verbose=1, batch_size=256)[:, 0] score_df_ = pd.concat(score_list, axis=0) score_df = score_df.merge(score_df_, how='left', on=['user_id', 'click_article_id']) # 保存训练集交叉验证产生的新特征 score_df[['user_id', 'click_article_id', 'pred_score', 'pred_rank', 'label']].to_csv(save_path + 'trn_din_cls_feats.csv', index=False) # 测试集的预测结果,多次交叉验证求平均,将预测的score和对应的rank特征保存,可以用于后面的staking,这里还可以构造其他更多的特征 tst_user_item_feats_df_din_model['pred_score'] = sub_preds / k_fold tst_user_item_feats_df_din_model['pred_score'] = tst_user_item_feats_df_din_model['pred_score'].transform(lambda x: norm_sim(x)) tst_user_item_feats_df_din_model.sort_values(by=['user_id', 'pred_score']) tst_user_item_feats_df_din_model['pred_rank'] = tst_user_item_feats_df_din_model.groupby(['user_id'])['pred_score'].rank(ascending=False, method='first') # 保存测试集交叉验证的新特征 tst_user_item_feats_df_din_model[['user_id', 'click_article_id', 'pred_score', 'pred_rank']].to_csv(save_path + 'tst_din_cls_feats.csv', index=False)
# 读取多个模型的排序结果文件 lgb_ranker = pd.read_csv(save_path + 'lgb_ranker_score.csv') lgb_cls = pd.read_csv(save_path + 'lgb_cls_score.csv') din_ranker = pd.read_csv(save_path + 'din_rank_score.csv') # 这里也可以换成交叉验证输出的测试结果进行加权融合
rank_model = {'lgb_ranker': lgb_ranker, 'lgb_cls': lgb_cls, 'din_ranker': din_ranker}
def get_ensumble_predict_topk(rank_model, topk=5): final_recall = rank_model['lgb_cls'].append(rank_model['din_ranker']) rank_model['lgb_ranker']['pred_score'] = rank_model['lgb_ranker']['pred_score'].transform(lambda x: norm_sim(x)) final_recall = final_recall.append(rank_model['lgb_ranker']) final_recall = final_recall.groupby(['user_id', 'click_article_id'])['pred_score'].sum().reset_index() submit(final_recall, topk=topk, model_name='ensemble_fuse')
get_ensumble_predict_topk(rank_model)
# 读取多个模型的交叉验证生成的结果文件 # 训练集 trn_lgb_ranker_feats = pd.read_csv(save_path + 'trn_lgb_ranker_feats.csv') trn_lgb_cls_feats = pd.read_csv(save_path + 'trn_lgb_cls_feats.csv') trn_din_cls_feats = pd.read_csv(save_path + 'trn_din_cls_feats.csv') # 测试集 tst_lgb_ranker_feats = pd.read_csv(save_path + 'tst_lgb_ranker_feats.csv') tst_lgb_cls_feats = pd.read_csv(save_path + 'tst_lgb_cls_feats.csv') tst_din_cls_feats = pd.read_csv(save_path + 'tst_din_cls_feats.csv')
# 将多个模型输出的特征进行拼接 finall_trn_ranker_feats = trn_lgb_ranker_feats[['user_id', 'click_article_id', 'label']] finall_tst_ranker_feats = tst_lgb_ranker_feats[['user_id', 'click_article_id']] for idx, trn_model in enumerate([trn_lgb_ranker_feats, trn_lgb_cls_feats, trn_din_cls_feats]): for feat in [ 'pred_score', 'pred_rank']: col_name = feat + '_' + str(idx) finall_trn_ranker_feats[col_name] = trn_model[feat] for idx, tst_model in enumerate([tst_lgb_ranker_feats, tst_lgb_cls_feats, tst_din_cls_feats]): for feat in [ 'pred_score', 'pred_rank']: col_name = feat + '_' + str(idx) finall_tst_ranker_feats[col_name] = tst_model[feat]
# 定义一个逻辑回归模型再次拟合交叉验证产生的特征对测试集进行预测 # 这里需要注意的是,在做交叉验证的时候可以构造多一些与输出预测值相关的特征,来丰富这里简单模型的特征 from sklearn.linear_model import LogisticRegression feat_cols = ['pred_score_0', 'pred_rank_0', 'pred_score_1', 'pred_rank_1', 'pred_score_2', 'pred_rank_2'] trn_x = finall_trn_ranker_feats[feat_cols] trn_y = finall_trn_ranker_feats['label'] tst_x = finall_tst_ranker_feats[feat_cols] # 定义模型 lr = LogisticRegression() # 模型训练 lr.fit(trn_x, trn_y) # 模型预测 finall_tst_ranker_feats['pred_score'] = lr.predict_proba(tst_x)[:, 1]
# 预测结果重新排序, 及生成提交结果 rank_results = finall_tst_ranker_feats[['user_id', 'click_article_id', 'pred_score']] submit(rank_results, topk=5, model_name='ensumble_staking')
本章主要学习了三个排序模型,包括LGB的Rank, LGB的Classifier还有深度学习的DIN模型, 当然,对于这三个模型的原理部分,我们并没有给出详细的介绍, 请大家课下自己探索原理,也欢迎大家把自己的探索与所学分享出来,我们一块学习和进步。最后,我们进行了简单的模型融合策略,包括简单的加权和Stacking。
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