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ijcai-18-top2-single-mole-solution's Introduction

IJCAI-18 阿里妈妈搜索广告转化预测亚军解决方案

-1 赛题介绍 https://tianchi.aliyun.com/competition/introduction.htm?raceId=231647

-2 数据下载

   初赛数据链接:https://share.weiyun.com/56y91Fx 密码:89kry5
   复赛数据链接:https://share.weiyun.com/5HRPNUU 密码:qrs04d

-3 file文件中包含 特征重要性,特征群线下测试结果,比赛攻略,答辩ppt

-4 代码讲解 https://tianchi.aliyun.com/forum/liveStream.html?spm=5176.11409386.0.0.6ea0311felWkGr&postsId=5531#postsId=5531

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ijcai-18-top2-single-mole-solution's Issues

代码讲解链接失效

你好,最近在学习数据挖掘相关的知识,想学一下您的代码,代码讲解链接失效了,能重新发一份吗

平滑问题

耀神, user['user_7days_cvr']=(user['user_buy'])/(user['user_cnt']+3)
你这行能直接平滑吗,还是怎么弄的?

为什么线下训练集是以第七天为的样本instance_id 和提出来的所有特征群做左连接,这样不是空的么?

在 cross_feature.py 中,我看线下训练集竟然是以第七天需要预测的样本左连接提取出来的前7天的特征,而且是以 instance_id 连接,难道第七天的 instance_id 还和前面六天的有一样的id 么?不明白这是为什么。
data = add(train,[query, leak, day6_cvr, days7_cvr,
day6_rank, days7_rank, comp, nobuy, trend, full,day6, days7, var
])
data.to_csv('../data/final_base.csv',index=False)
base = pd.read_csv('../data/final_base.csv')
cross=base[['hour48', 'hour', 'user_id','query1','query','is_trade','day','item_category_list',
'instance_id', 'item_property_list', 'context_id', 'context_timestamp', 'predict_category_property']]
features=off_test_split(base)

这里的train 是第七天需要预测的样本,而后面的特征都是以前提取好的前面7天或者第6天的,为啥可以连接起来,传递给off_test_split 线下训练的我想应该是前面7天的样本啊,这里我就不明白了,你传递的是第7天要预测的,而在off_test_split里面又是 data = org[org.is_trade >-1], 这个时候的org 压根都没得 is_trade>-1的样本吧。

难道不是 org 连接,这样后面的做链接才有公共的 instance_id 啊,真的不太明白

data = add(org,[query, leak, day6_cvr, days7_cvr,
day6_rank, days7_rank, comp, nobuy, trend, full,day6, days7, var
])

data=encode(data) 里面获取不到 "top1" 报错

pd.merge(data,property_feature(data),on='instance_id',how='left') #拆分属性
这行代码执行完了以后 data里面的 top字段都是: 'top1_x', 'top2_x','top3_x', 'top4_x', 'top5_x', 'top10_x', 'top1_y', 'top2_y', 'top3_y','top4_y', 'top5_y', 'top10_y'],

data=encode(data) 里面获取不到 "top1" 报错

id 类特征重编码后 为什么 效果和 one hot相当?

id 类特征重编码,直接当作特征,树模型深度设置-1,避免了 onehot 大量占用内存空间,实际效果和 onehot 相当。

耀神,请问你经验分享里上面这句话怎么理解,为什么重新编码后就可以达到one hot的效果?

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