ArtiFact is a new multi-modal dataset of 651k museum records used to benchmark cross-modal error detection with seven error categories and semantic query processing challenges.
HoloClean: Holistic Data Repairs with Probabilistic Inference
2 Pith papers cite this work. Polarity classification is still indexing.
abstract
We introduce HoloClean, a framework for holistic data repairing driven by probabilistic inference. HoloClean unifies existing qualitative data repairing approaches, which rely on integrity constraints or external data sources, with quantitative data repairing methods, which leverage statistical properties of the input data. Given an inconsistent dataset as input, HoloClean automatically generates a probabilistic program that performs data repairing. Inspired by recent theoretical advances in probabilistic inference, we introduce a series of optimizations which ensure that inference over HoloClean's probabilistic model scales to instances with millions of tuples. We show that HoloClean scales to instances with millions of tuples and find data repairs with an average precision of ~90% and an average recall of above ~76% across a diverse array of datasets exhibiting different types of errors. This yields an average F1 improvement of more than 2x against state-of-the-art methods.
fields
cs.DB 2verdicts
UNVERDICTED 2representative citing papers
LDI introduces localized LLM-based imputation for text-rich tables by selecting compact relevant subsets of attributes and tuples per missing value, reporting up to 8% accuracy gains over prior methods.
citing papers explorer
-
ArtiFact: A Large-Scale Multi-Modal Cultural Heritage Dataset
ArtiFact is a new multi-modal dataset of 651k museum records used to benchmark cross-modal error detection with seven error categories and semantic query processing challenges.
-
LDI: Localized Data Imputation for Text-Rich Tables
LDI introduces localized LLM-based imputation for text-rich tables by selecting compact relevant subsets of attributes and tuples per missing value, reporting up to 8% accuracy gains over prior methods.