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Published 2020 | Version v3

Advertisement CTR Prediction Data

Creators

Description

Description

Advertisement CTR (click-through-rate) prediction is the key problem in the area of computational advertising. Increasing the accuracy of advertisement CTR prediction is critical to improve the effectiveness of precision marketing. Based on the following datasets, a Kaggle competition was run for optimal advertisement CTR prediction models. The underlying datasets contain advertising behavior data collected from seven consecutive days, split up into a training dataset and a testing dataset. It is about 7GB large.

Files

test_data_A.csv__100lines.csv

Files (50.6 kB)

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md5:5307c34b55f50753e3d7f1d6269afc7f
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md5:127cca503caa2ba08a778ef99aec75c2
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md5:61f8fec1a4bea2ca1b00ba3d31707011
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Variables

Name Description
label Label
uid Unique user ID after data anonymization
task_id Unique ID of an ad task
adv_id Unique ID of an ad material
creat_type_cd Unique ID of an ad creative type
adv_prim_id Advertiser ID of an ad task
dev_id Developer ID of an ad task
inter_typ_cd Display form of an ad material
slot_id Ad slot ID
spread_app_id App ID of an ad task
tags App tag of an ad task
app_first_class App level-1 category of an ad task
app_second_class App level-2 category of an ad task
age User age
city Resident city of a user
city_rank Level of the resident city of a user
device_name Phone model used by a user
device_size Size of the phone used by a user
career User occupation
gender User gender
net_type Network status when a behavior occurs
residence Resident province of a user
his_app_size App storage size
his_on_shelf_time Release time
app_score App rating score
emui_dev EMUI version
list_time Model release time
device_price Device price
up_life_duration HUAWEI ID lifecycle
up_membership_grade Service membership level
membership_life_duration Membership lifecycle
consume_purchase Paid user tag
communication_onlinerate Active time by mobile phone
communication_avgonline_30d Daily active time by mobile phone
indu_name Ad industry information
pt_d Date when a behavior occurs