Model-agnostic counterfactual reasoning for eliminating popularity bias in recommender system
The general aim of the recommender system is to provide personalized suggestions to
users, which is opposed to suggesting popular items. However, the normal training …
users, which is opposed to suggesting popular items. However, the normal training …
TAT-QA: A question answering benchmark on a hybrid of tabular and textual content in finance
Hybrid data combining both tabular and textual content (eg, financial reports) are quite
pervasive in the real world. However, Question Answering (QA) over such hybrid data is …
pervasive in the real world. However, Question Answering (QA) over such hybrid data is …
Deconfounded recommendation for alleviating bias amplification
Recommender systems usually amplify the biases in the data. The model learned from
historical interactions with imbalanced item distribution will amplify the imbalance by over …
historical interactions with imbalanced item distribution will amplify the imbalance by over …
HGAT: Heterogeneous graph attention networks for semi-supervised short text classification
Short text classification has been widely explored in news tagging to provide more efficient
search strategies and more effective search results for information retrieval. However, most …
search strategies and more effective search results for information retrieval. However, most …
Dual-interactive fusion for code-mixed deep representation learning in tag recommendation
Automatic tagging on software information sites is a tag recommendation service. It aims to
recommend content-based tags for a software object to help developers make distinctions …
recommend content-based tags for a software object to help developers make distinctions …
A hierarchical fused fuzzy deep neural network with heterogeneous network embedding for recommendation
The integration of deep learning (DL) and fuzzy learning (FL) is considered a recently
emerging and promising research direction in data embedding. The integrated fuzzy neural …
emerging and promising research direction in data embedding. The integrated fuzzy neural …
Multimodal compatibility modeling via exploring the consistent and complementary correlations
Existing methods towards outfit compatibility modeling seldom explicitly consider multimodal
correlations. In this work, we explore the consistent and complementary correlations for …
correlations. In this work, we explore the consistent and complementary correlations for …
Low rank label subspace transformation for multi-label learning with missing labels
Multi-label datasets often contain label information with missing values and recovering them
is a non-trivial challenge. Several methods augment the observed label matrix by …
is a non-trivial challenge. Several methods augment the observed label matrix by …
Coarse-to-fine semantic alignment for cross-modal moment localization
Video moment localization, as an important branch of video content analysis, has attracted
extensive attention in recent years. However, it is still in its infancy due to the following …
extensive attention in recent years. However, it is still in its infancy due to the following …
Deconfounded recommendation via causal intervention
Traditional recommenders suffer from hidden confounding factors, leading to the spurious
correlations between user/item profiles and user preference prediction, ie, the confounding …
correlations between user/item profiles and user preference prediction, ie, the confounding …