CLSEG: Contrastive Learning of Story Ending Generation

02/18/2022
by   Yuqiang Xie, et al.
3

Story Ending Generation (SEG) is a challenging task in natural language generation. Recently, methods based on Pre-trained Language Models (PLM) have achieved great prosperity, which can produce fluent and coherent story endings. However, the pre-training objective of PLM-based methods is unable to model the consistency between story context and ending. The goal of this paper is to adopt contrastive learning to generate endings more consistent with story context, while there are two main challenges in contrastive learning of SEG. First is the negative sampling of wrong endings inconsistent with story contexts. The second challenge is the adaptation of contrastive learning for SEG. To address these two issues, we propose a novel Contrastive Learning framework for Story Ending Generation (CLSEG), which has two steps: multi-aspect sampling and story-specific contrastive learning. Particularly, for the first issue, we utilize novel multi-aspect sampling mechanisms to obtain wrong endings considering the consistency of order, causality, and sentiment. To solve the second issue, we well-design a story-specific contrastive training strategy that is adapted for SEG. Experiments show that CLSEG outperforms baselines and can produce story endings with stronger consistency and rationality.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
08/30/2018

Story Ending Generation with Incremental Encoding and Commonsense Knowledge

Story ending generation is a strong indication of story comprehension. T...
research
12/16/2021

Goal-Directed Story Generation: Augmenting Generative Language Models with Reinforcement Learning

The advent of large pre-trained generative language models has provided ...
research
10/17/2020

Consistency and Coherency Enhanced Story Generation

Story generation is a challenging task, which demands to maintain consis...
research
01/11/2019

From Plots to Endings: A Reinforced Pointer Generator for Story Ending Generation

We introduce a new task named Story Ending Generation (SEG), whic-h aims...
research
11/16/2021

Film Trailer Generation via Task Decomposition

Movie trailers perform multiple functions: they introduce viewers to the...
research
06/04/2021

COINS: Dynamically Generating COntextualized Inference Rules for Narrative Story Completion

Despite recent successes of large pre-trained language models in solving...
research
12/02/2021

CO2Sum:Contrastive Learning for Factual-Consistent Abstractive Summarization

Generating factual-consistent summaries is a challenging task for abstra...

Please sign up or login with your details

Forgot password? Click here to reset