Ke Da, Fan Xianhua
School of Management, Huazhong University of Science and Technology, Wuhan, Hubei, China.
School of Economics and Management, China University of Geosciences, Wuhan, Hubei, China.
PeerJ Comput Sci. 2024 Jul 11;10:e2159. doi: 10.7717/peerj-cs.2159. eCollection 2024.
In the contemporary digitalization landscape and technological advancement, the auction industry undergoes a metamorphosis, assuming a pivotal role as a transactional paradigm. Functioning as a mechanism for pricing commodities or services, the procedural intricacies and efficiency of auctions directly influence market dynamics and participant engagement. Harnessing the advancing capabilities of artificial intelligence (AI) technology, the auction sector proactively integrates AI methodologies to augment efficacy and enrich user interactions. This study delves into the intricacies of the price prediction challenge within the auction domain, introducing a sophisticated RL-GRU framework for price interval analysis. The framework commences by adeptly conducting quantitative feature extraction of commodities through GRU, subsequently orchestrating dynamic interactions within the model's environment reinforcement learning techniques. Ultimately, it accomplishes the task of interval division and recognition of auction commodity prices through a discerning classification module. Demonstrating precision exceeding 90% across publicly available and internally curated datasets within five intervals and exhibiting superior performance within eight intervals, this framework contributes valuable technical insights for future endeavours in auction price interval prediction challenges.
在当代数字化格局和技术进步的背景下,拍卖行业正在经历一场蜕变,成为一种关键的交易模式。作为商品或服务定价的一种机制,拍卖的程序复杂性和效率直接影响着市场动态和参与者的参与度。借助人工智能(AI)技术不断提升的能力,拍卖行业积极整合AI方法以提高效率并丰富用户互动。本研究深入探讨拍卖领域价格预测挑战的复杂性,引入了一个用于价格区间分析的复杂的强化学习门控循环单元(RL-GRU)框架。该框架首先通过门控循环单元对商品进行定量特征提取,随后在模型环境中运用强化学习技术精心安排动态交互。最终,它通过一个有洞察力的分类模块完成拍卖商品价格区间划分和识别的任务。该框架在五个区间的公开可用数据集和内部策划的数据集中精度超过90%,在八个区间内表现出卓越性能,为未来拍卖价格区间预测挑战的研究提供了有价值的技术见解。