Artificial Disfluency Detection, Uh No, Disfluency Generation for the Masses

11/16/2022
by   T. Passali, et al.
0

Existing approaches for disfluency detection typically require the existence of large annotated datasets. However, current datasets for this task are limited, suffer from class imbalance, and lack some types of disfluencies that can be encountered in real-world scenarios. This work proposes LARD, a method for automatically generating artificial disfluencies from fluent text. LARD can simulate all the different types of disfluencies (repetitions, replacements and restarts) based on the reparandum/interregnum annotation scheme. In addition, it incorporates contextual embeddings into the disfluency generation to produce realistic context-aware artificial disfluencies. Since the proposed method requires only fluent text, it can be used directly for training, bypassing the requirement of annotated disfluent data. Our empirical evaluation demonstrates that LARD can indeed be effectively used when no or only a few data are available. Furthermore, our detailed analysis suggests that the proposed method generates realistic disfluencies and increases the accuracy of existing disfluency detectors.

READ FULL TEXT
research
01/13/2022

LARD: Large-scale Artificial Disfluency Generation

Disfluency detection is a critical task in real-time dialogue systems. H...
research
05/03/2020

Correcting the Autocorrect: Context-Aware Typographical Error Correction via Training Data Augmentation

In this paper, we explore the artificial generation of typographical err...
research
07/14/2021

DeepMutants: Training neural bug detectors with contextual mutations

Learning-based bug detectors promise to find bugs in large code bases by...
research
12/08/2022

PKDGA: A Partial Knowledge-based Domain Generation Algorithm for Botnets

Domain generation algorithms (DGAs) can be categorized into three types:...
research
10/07/2022

Resolving Class Imbalance for LiDAR-based Object Detector by Dynamic Weight Average and Contextual Ground Truth Sampling

An autonomous driving system requires a 3D object detector, which must p...
research
11/14/2020

Ego2Hands: A Dataset for Egocentric Two-hand Segmentation and Detection

Hand segmentation and detection in truly unconstrained RGB-based setting...
research
04/01/2019

Unsupervised Abbreviation Disambiguation Contextual disambiguation using word embeddings

As abbreviations often have several distinct meanings, disambiguating th...

Please sign up or login with your details

Forgot password? Click here to reset