This repo is the official implementation for the SIGIR 2023 paper: LOVF: Layered Organic View Fusion for Click-through Rate Prediction in Online Advertising.
Our released dataset ORAD-Pub could be found at JD JingPan with password 3jhbd6
.
In the data files, each row corresponds to a search session.
Each column is a piece of multiple sample data aggregated according to user-query. The organization form of each column is:
column[0]: user_id. int type
column[1]: query_id. int type
column[2]: The source of each sample(0:advertising. 1:organic). list type
column[3]: The label of each sample. list type
column[4:]: the side info [itemID, categoryID, brandID, vendorID and priceID] of each sample. list type
- python 3.6.13
- tensorflow 1.15.0
- scikit-learn 0.24.2
Create a new data
folder and put the downloaded dataset into the folder. Then,
python src/main.py