Learning to Rank from Noisy Data

被引:6
|
作者
Ding, Wenkui [1 ]
Geng, Xiubo [2 ]
Zhang, Xu-Dong [1 ]
机构
[1] Tsinghua Univ, Dept Elect Engn, Beijing, Peoples R China
[2] Yahoo Labs Beijing, Beijing, Peoples R China
关键词
Noisy data; robust learning;
D O I
10.1145/2576230
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Learning to rank, which learns the ranking function from training data, has become an emerging research area in information retrieval and machine learning. Most existing work on learning to rank assumes that the training data is clean, which is not always true, however. The ambiguity of query intent, the lack of domain knowledge, and the vague definition of relevance levels all make it difficult for common annotators to give reliable relevance labels to some documents. As a result, the relevance labels in the training data of learning to rank usually contain noise. If we ignore this fact, the performance of learning-to-rank algorithms will be damaged. In this article, we propose considering the labeling noise in the process of learning to rank and using a two-step approach to extend existing algorithms to handle noisy training data. In the first step, we estimate the degree of labeling noise for a training document. To this end, we assume that the majority of the relevance labels in the training data are reliable and we use a graphical model to describe the generative process of a training query, the feature vectors of its associated documents, and the relevance labels of these documents. The parameters in the graphical model are learned by means of maximum likelihood estimation. Then the conditional probability of the relevance label given the feature vector of a document is computed. If the probability is large, we regard the degree of labeling noise for this document as small; otherwise, we regard the degree as large. In the second step, we extend existing learning-to-rank algorithms by incorporating the estimated degree of labeling noise into their loss functions. Specifically, we give larger weights to those training documents with smaller degrees of labeling noise and smaller weights to those with larger degrees of labeling noise. As examples, we demonstrate the extensions for McRank, RankSVM, RankBoost, and RankNet. Empirical results on benchmark datasets show that the proposed approach can effectively distinguish noisy documents from clean ones, and the extended learning-to-rank algorithms can achieve better performances than baselines.
引用
收藏
页数:21
相关论文
共 50 条
  • [31] An incremental multivariate regression method for function approximation from noisy data
    Carozza, M
    Rampone, S
    PATTERN RECOGNITION, 2001, 34 (03) : 695 - 702
  • [32] Computing high-dimensional invariant distributions from noisy data
    Lin, Bo
    Li, Qianxiao
    Ren, Weiqing
    JOURNAL OF COMPUTATIONAL PHYSICS, 2023, 474
  • [33] Non-parametric drift estimation for diffusions from noisy data
    Schmisser, Emeline
    STATISTICS & RISK MODELING, 2011, 28 (02) : 119 - 150
  • [34] Non-parametric estimation of the diffusion coefficient from noisy data
    Emeline Schmisser
    Statistical Inference for Stochastic Processes, 2012, 15 (3) : 193 - 223
  • [35] Non compact estimation of the conditional density from direct or noisy data
    Comte, F.
    Lacour, C.
    ANNALES DE L INSTITUT HENRI POINCARE-PROBABILITES ET STATISTIQUES, 2023, 59 (03): : 1463 - 1507
  • [36] A stable computation of log-derivatives from noisy drawdown data
    Ramos, Gustavo
    Carrera, Jesus
    Gomez, Susana
    Minutti, Carlos
    Camacho, Rodolfo
    WATER RESOURCES RESEARCH, 2017, 53 (09) : 7904 - 7916
  • [37] Fault Detection and Classification in PV Arrays Using Machine Learning Algorithms in the Presence of Noisy data
    Vahidi, Ali
    Golkar, Masoud Aliakbar
    2022 9TH IRANIAN CONFERENCE ON RENEWABLE ENERGY & DISTRIBUTED GENERATION (ICREDG), 2022,
  • [38] Robust Collaborative Learning with Noisy Labels
    Sun, Mengying
    Xing, Jing
    Chen, Bin
    Zhou, Jiayu
    20TH IEEE INTERNATIONAL CONFERENCE ON DATA MINING (ICDM 2020), 2020, : 1274 - 1279
  • [39] Learning from Untrusted Data
    Charikar, Moses
    Steinhardt, Jacob
    Valiant, Gregory
    STOC'17: PROCEEDINGS OF THE 49TH ANNUAL ACM SIGACT SYMPOSIUM ON THEORY OF COMPUTING, 2017, : 47 - 60
  • [40] Efficient data-driven optimization with noisy data
    Parys, Bart P. G. Van
    OPERATIONS RESEARCH LETTERS, 2024, 54