Our CIKM21 Paper "Incorporating Query Reformulating Behavior into Web Search Evaluation"

Overview

Reformulation-Aware-Metrics

License made-with-python

Introduction

This codebase contains source-code of the Python-based implementation of our CIKM 2021 paper.

Requirements

  • python 2.7
  • sklearn
  • scipy

Data Preparation

Preprocess two datasets TianGong-SS-FSD and TianGong-Qref into the the following format:

[Reformulation Type][Click List][Usefulness List][Satisfaction Label]
  • Reformulation Type: A (Add), D (Delete), K (Keep), T (Transform or Change), O (Others), F (First Query).
  • Click List: 1 -- Clicked, 0 -- Not Clicked.
  • Usefulness List: Usefulness or Relevance, 4-scale in TianGong-QRef, 5-scale in TianGong-SS-FSD.
  • Satisfaction Label: 5-scale for both datasets.

Then, bootsrap them into N samples and put the bootstapped data (directories) into ./data/bootstrap_fsd and ./data/bootstrap_qref.

Results

The results for each metrics are shown in the following table:

Metric Qref-Spearman Qref-Pearson Qref-MSE FSD-Spearman FSD-Pearson FSD-MSE
RBP 0.4375 0.4180 N/A 0.4898 0.5222 N/A
DCG 0.4434 0.4182 N/A 0.5022 0.5290 N/A
BPM 0.4552 0.3915 N/A 0.5801 0.6052 N/A
RBP sat 0.4389 0.4170 N/A 0.5165 0.5527 N/A
DCG sat 0.4446 0.4166 N/A 0.5047 0.5344 N/A
BPM sat 0.4622 0.3674 N/A 0.5960 0.6029 N/A
rrDBN 0.4123 0.3670 1.1508 0.5908 0.5602 1.0767
rrSDBN 0.4177 0.3713 1.1412 0.5991 0.5703 1.0524
uUBM 0.4812 0.4303 1.0607 0.6242 0.5775 0.8795
uPBM 0.4827 0.4369 1.0524 0.6210 0.5846 0.8644
uSDBN 0.4837 0.4375 1.1443 0.6290 0.6081 0.8840
uDBN 0.4928 0.4458 1.0801 0.6339 0.6207 0.8322

To reproduce the results of traditional metrics such as RBP, DCG and BPM, we recommend you to use this repo: cwl_eval. 🤗

Quick Start

To train RAMs, run the script as follows:

python run.py --click_model DBN \
	--data qref \
	--id 0 \
	--metric_type expected_utility \
	--max_usefulness 3 \
	--k_num 6 \
	--max_dnum 10 \
	--iter_num 10000 \
	--alpha 0.01 \
	--alpha_decay 0.99 \
	--lamda 0.85 \
	--patience 5 \
	--use_knowledge True
  • click_model: options: ['DBN', 'SDBN', 'UBM', 'PBM']
  • data: options: ['fsd', 'qref']
  • metric_type: options: ['expected_utility', 'effort']
  • id: the bootstrapped sample id.
  • k_num: the number of user intent shift type will be considered, should be less than or equal to six.
  • max_dnum: the maximum number of top documents to be considered for a specific query.
  • use_knowledge: whether to use the transition probability from syntactic reformulation types to intent-level ones derived from the TianGong-Qref dataset.

Citation

If you find the resources in this repo useful, please do not save your star and cite our work:

@inproceedings{chen2021incorporating,
  title={Incorporating Query Reformulating Behavior into Web Search Evaluation},
  author={Chen, Jia and Liu, Yiqun and Mao, Jiaxin and Zhang, Fan and Sakai, Tetsuya and Ma, Weizhi and Zhang, Min and Ma, Shaoping},
  booktitle={Proceedings of the 30th ACM International Conference on Information and Knowledge Management},
  year={2021},
  organization={ACM}
}

Contact

If you have any questions, please feel free to contact me via [email protected] or open an issue.

Owner
xuanyuan14
Jia Chen 陈佳
xuanyuan14
A computational optimization project towards the goal of gerrymandering the results of a hypothetical election in the UK.

A computational optimization project towards the goal of gerrymandering the results of a hypothetical election in the UK.

Emma 1 Jan 18, 2022
Implementation of CrossViT: Cross-Attention Multi-Scale Vision Transformer for Image Classification

CrossViT : Cross-Attention Multi-Scale Vision Transformer for Image Classification This is an unofficial PyTorch implementation of CrossViT: Cross-Att

Rishikesh (ऋषिकेश) 103 Nov 25, 2022
Hcaptcha-challenger - Gracefully face hCaptcha challenge with Yolov5(ONNX) embedded solution

hCaptcha Challenger 🚀 Gracefully face hCaptcha challenge with Yolov5(ONNX) embe

593 Jan 03, 2023
[ICLR 2021] HW-NAS-Bench: Hardware-Aware Neural Architecture Search Benchmark

HW-NAS-Bench: Hardware-Aware Neural Architecture Search Benchmark Accepted as a spotlight paper at ICLR 2021. Table of content File structure Prerequi

72 Jan 03, 2023
Pytorch implementation of the unsupervised object discovery method LOST.

LOST Pytorch implementation of the unsupervised object discovery method LOST. More details can be found in the paper: Localizing Objects with Self-Sup

Valeo.ai 189 Dec 25, 2022
Certis - Certis, A High-Quality Backtesting Engine

Certis - Backtesting For y'all Certis is a powerful, lightweight, simple backtes

Yeachan-Heo 46 Oct 30, 2022
Multiple-criteria decision-making (MCDM) with Electre, Promethee, Weighted Sum and Pareto

EasyMCDM - Quick Installation methods Install with PyPI Once you have created your Python environment (Python 3.6+) you can simply type: pip3 install

Labrak Yanis 6 Nov 22, 2022
Code for paper "Vocabulary Learning via Optimal Transport for Neural Machine Translation"

**Codebase and data are uploaded in progress. ** VOLT(-py) is a vocabulary learning codebase that allows researchers and developers to automaticaly ge

416 Jan 09, 2023
A computer vision pipeline to identify the "icons" in Christian paintings

Christian-Iconography A computer vision pipeline to identify the "icons" in Christian paintings. A bit about iconography. Iconography is related to id

Rishab Mudliar 3 Jul 30, 2022
This is the official implementation of the paper "Object Propagation via Inter-Frame Attentions for Temporally Stable Video Instance Segmentation".

[CVPRW 2021] - Object Propagation via Inter-Frame Attentions for Temporally Stable Video Instance Segmentation

Anirudh S Chakravarthy 6 May 03, 2022
SAN for Product Attributes Prediction

SAN Heterogeneous Star Graph Attention Network for Product Attributes Prediction This repository contains the official PyTorch implementation for ADVI

Xuejiao Zhao 9 Dec 12, 2022
For IBM Quantum Challenge 2021 (May 20 - 26)

IBM Quantum Challenge 2021 Introduction Commemorating the 40-year anniversary of the Physics of Computation conference, and 5-year anniversary of IBM

Qiskit Community 140 Jan 01, 2023
Simple image captioning model - CLIP prefix captioning.

Simple image captioning model - CLIP prefix captioning.

688 Jan 04, 2023
Source code for paper "Deep Superpixel-based Network for Blind Image Quality Assessment"

DSN-IQA Source code for paper "Deep Superpixel-based Network for Blind Image Quality Assessment" Requirements Python =3.8.0 Pytorch =1.7.1 Usage wit

7 Oct 13, 2022
[CVPR22] Official codebase of Semantic Segmentation by Early Region Proxy.

RegionProxy Figure 2. Performance vs. GFLOPs on ADE20K val split. Semantic Segmentation by Early Region Proxy Yifan Zhang, Bo Pang, Cewu Lu CVPR 2022

Yifan 54 Nov 29, 2022
Code for KDD'20 "Generative Pre-Training of Graph Neural Networks"

GPT-GNN: Generative Pre-Training of Graph Neural Networks GPT-GNN is a pre-training framework to initialize GNNs by generative pre-training. It can be

Ziniu Hu 346 Dec 19, 2022
PULSE: Self-Supervised Photo Upsampling via Latent Space Exploration of Generative Models

PULSE: Self-Supervised Photo Upsampling via Latent Space Exploration of Generative Models Code accompanying CVPR'20 paper of the same title. Paper lin

Alex Damian 7k Dec 30, 2022
Differentiable architecture search for convolutional and recurrent networks

Differentiable Architecture Search Code accompanying the paper DARTS: Differentiable Architecture Search Hanxiao Liu, Karen Simonyan, Yiming Yang. arX

Hanxiao Liu 3.7k Jan 09, 2023
This package proposes simplified exporting pytorch models to ONNX and TensorRT, and also gives some base interface for model inference.

PyTorch Infer Utils This package proposes simplified exporting pytorch models to ONNX and TensorRT, and also gives some base interface for model infer

Alex Gorodnitskiy 11 Mar 20, 2022
Makes patches from huge resolution .svs slide files using openslide

openslide_patcher Makes patches from huge resolution .svs slide files using openslide Example collage I made from outputs:

2 Dec 23, 2021