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A Delphi–Fuzzy Delphi Study on SDGs 9 and 12 after COVID-19: Case Study in Brazil COVID-19 后关于可持续发展目标 9 和 12 的德尔菲-模糊德尔菲研究:巴西案例研究
Pub Date : 2024-07-17 DOI: 10.3390/forecast6030030
Isabela Caroline de Sousa, T. Sigahi, Izabella Rampasso, G. H. S. M. Moraes, W. Leal Filho, João Henrique Paulino Pires Eustachio, R. Anholon
The COVID-19 pandemic has affected all Sustainable Development Goals (SDGs), leading to setbacks in various Latin American countries. In Brazil, progress in technological development and the adoption of sustainable practices by organizations has been significantly hindered. Yet, there remains a limited understanding of the long-term impacts on the country’s development, and a structured national plan for recovery and resuming progress toward the SDGs is lacking. This paper aims to investigate the repercussions of COVID-19 on SDGs 9 (industry, innovation, and infrastructure) and 12 (sustainable consumption and production) in the context of a latecomer country such as Brazil. This study adopted the Delphi-based scenario and Fuzzy Delphi approach and involved the participation of 15 sustainability experts with extensive experience in the Brazilian industrial sector. The findings elucidate the long-term impacts of the pandemic on these SDGs, focusing on Brazil’s socioeconomic landscape and developmental challenges. The pandemic worsened pre-existing issues, hindering infrastructure modernization, technological investment, and sustainable practices. Insufficient research funding, industry modernization, and small business integration further impede progress. Additionally, the paper identifies implications for research, companies, and public policies, aiming to provide actionable insights for fostering sustainable development in the post-pandemic era.
COVID-19 大流行影响了所有可持续发展目标(SDGs),导致拉丁美洲各国出现倒退。在巴西,技术发展和组织采用可持续做法方面的进展受到严重阻碍。然而,人们对其对国家发展的长期影响的了解仍然有限,也缺乏一个结构化的国家恢复和恢复可持续发展目标进展的计划。本文旨在研究 COVID-19 在巴西这样一个后发国家的背景下对可持续发展目标 9(工业、创新和基础设施)和 12(可持续消费和生产)的影响。这项研究采用了基于德尔菲的情景模拟和模糊德尔菲方法,15 位在巴西工业领域具有丰富经验的可持续发展专家参与了研究。研究结果阐明了大流行病对这些可持续发展目标的长期影响,重点关注巴西的社会经济状况和发展挑战。大流行病加剧了原有问题,阻碍了基础设施现代化、技术投资和可持续实践。研究经费不足、工业现代化和小企业整合进一步阻碍了进展。此外,本文还确定了对研究、公司和公共政策的影响,旨在为促进后大流行病时代的可持续发展提供可行的见解。
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引用次数: 0
R&D Expenditures and Analysts’ Earnings Forecasts 研发支出与分析师盈利预测
Pub Date : 2024-07-08 DOI: 10.3390/forecast6030029
Taoufik Elkemali
Previous research provides conflicting results regarding how R&D expenditures impact market value. Given that financial analysts are the primary intermediaries between companies and investors, our study focused on the impact of R&D-related uncertainty, growth, and information asymmetry associated on analysts’ earnings forecasts. Based on 19,834 firm-year observations in the European market between 2005 and 2020, our results show that R&D activities lead to higher absolute forecast error and negative forecast error, indicating higher forecast inaccuracy with an optimistic bias. Additionally, these investments contribute to higher forecast dispersion, indicating disagreement among financial analysts. The comparison between 17 industries revealed that these effects are more pronounced in R&D-intensive industries than in non-R&D industries, uncovering the varied relationship between R&D investments and analyst forecasts across sectors.
以往的研究在研发支出如何影响市场价值方面提供了相互矛盾的结果。鉴于金融分析师是公司和投资者之间的主要中介,我们的研究侧重于研发相关的不确定性、增长和信息不对称对分析师盈利预测的影响。基于 2005 年至 2020 年期间欧洲市场上 19834 个公司年度的观察结果,我们的研究结果表明,研发活动会导致更高的绝对预测误差和负预测误差,这表明带有乐观偏差的预测不准确性更高。此外,这些投资还导致更高的预测离散度,表明金融分析师之间存在分歧。对 17 个行业进行比较后发现,这些影响在研发密集型行业比非研发型行业更为明显,从而揭示了研发投资与分析师预测之间的不同关系。
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引用次数: 0
Systematic Mapping Study of Sales Forecasting: Methods, Trends, and Future Directions 销售预测的系统制图研究:方法、趋势和未来方向
Pub Date : 2024-07-05 DOI: 10.3390/forecast6030028
Hamid Ahaggach, L. Abrouk, Eric Lebon
In a dynamic business environment, the accuracy of sales forecasts plays a pivotal role in strategic decision making and resource allocation. This article offers a systematic review of the existing literature on techniques and methodologies used in forecasting, especially in sales forecasting across various domains, aiming to provide a nuanced understanding of the field. Our study examines the literature from 2013 to 2023, identifying key techniques and their evolution over time. The methodology involves a detailed analysis of 516 articles, categorized into classical qualitative approaches, traditional statistical methods, machine learning models, deep learning techniques, and hybrid approaches. The results highlight a significant shift towards advanced methods, with machine learning and deep learning techniques experiencing an explosive increase in adoption. The popularity of these models has surged, as evidenced by a rise from 10 articles in 2013 to over 110 by 2023. This growth underscores their growing prominence and effectiveness in handling complex time series data. Additionally, we explore the challenges and limitations that influence forecasting accuracy, focusing on complex market structures and the benefits of extensive data availability.
在动态的商业环境中,销售预测的准确性对战略决策和资源分配起着举足轻重的作用。本文系统回顾了现有文献中有关预测(尤其是跨领域销售预测)所使用的技术和方法,旨在提供对该领域的细微理解。我们的研究考察了 2013 年至 2023 年的文献,确定了关键技术及其随时间的演变。研究方法包括对 516 篇文章进行详细分析,分为经典定性方法、传统统计方法、机器学习模型、深度学习技术和混合方法。研究结果突出显示了向先进方法的重大转变,机器学习和深度学习技术的采用呈爆炸式增长。这些模型的受欢迎程度急剧上升,从2013年的10篇文章增加到2023年的110多篇就是证明。这一增长凸显了它们在处理复杂时间序列数据方面日益突出的地位和有效性。此外,我们还探讨了影响预测准确性的挑战和限制,重点关注复杂的市场结构和广泛数据可用性的益处。
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引用次数: 0
Machine Learning-Enhanced Pairs Trading 机器学习增强型配对交易
Pub Date : 2024-06-11 DOI: 10.3390/forecast6020024
Eli Hadad, Sohail Hodarkar, Beakal Lemeneh, Dennis Shasha
Forecasting returns in financial markets is notoriously challenging due to the resemblance of price changes to white noise. In this paper, we propose novel methods to address this challenge. Employing high-frequency Brazilian stock market data at one-minute granularity over a full year, we apply various statistical and machine learning algorithms, including ARIMA, Bidirectional Long Short-Term Memory (BiLSTM) with attention, Transformers, N-BEATS, N-HiTS, Convolutional Neural Networks (CNNs), and Temporal Convolutional Networks (TCNs) to predict changes in the price ratio of closely related stock pairs. Our findings indicate that a combination of reversion and machine learning-based forecasting methods yields the highest profit-per-trade. Additionally, by allowing the model to abstain from trading when the predicted magnitude of change is small, profits per trade can be further increased. Our proposed forecasting approach, utilizing a blend of methods, demonstrates superior accuracy compared to individual methods for high-frequency data.
由于价格变化类似于白噪声,因此预测金融市场的收益是一项众所周知的挑战。在本文中,我们提出了应对这一挑战的新方法。我们采用巴西股票市场全年一分钟粒度的高频数据,应用各种统计和机器学习算法,包括 ARIMA、双向长短期记忆(BiLSTM)、Transformers、N-BEATS、N-HiTS、卷积神经网络(CNN)和时序卷积网络(TCN),预测密切相关股票对的价格比率变化。我们的研究结果表明,将还原法和基于机器学习的预测方法相结合,可获得最高的单笔交易利润。此外,通过允许模型在预测变化幅度较小时放弃交易,每笔交易的利润可以进一步提高。我们提出的预测方法利用了多种方法的混合,在高频数据方面比单个方法具有更高的准确性。
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引用次数: 0
Heavy Rainfall Events in Selected Geographic Regions of Mexico, Associated with Hail Cannons 墨西哥部分地区与冰雹炮有关的暴雨事件
Pub Date : 2024-06-04 DOI: 10.3390/forecast6020023
V. M. Rodríguez-Moreno, J. Estrada-Ávalos
In this article, we document the use of hail cannons in Mexico to dispel or suppress heavy rain episodes, a common practice among farmers, without scientific evidence to support its effectiveness. This study uses two rain databases: one compiled from the Global Precipitation Measurement (GPM) mission and the other generated with the implementation of the Weather Research and Forecasting (WRF) model. The aim is to explore the association between heavy rain episodes and hail cannon locations. The analysis includes two geographic features: a pair of coordinates and a 3 km radius area of influence around each hail cannon. This dimension is based on the size and distribution of the heavy rainfall events. This study analyzes four years of half-hourly rain data using the Python ecosystem environment with machine learning libraries. The results show no relationship between the operation of hail cannons and the dissipation or attenuation of heavy rainfall events. However, this study highlights that the significant differences between the GPM and WRF databases in registering heavy rain events may be attributable to their own uncertainty. Despite the unavailability of ground-based observations, the inefficiency of hail cannons in affecting the occurrence of heavy rain events is evident. Overall, this study provides scientific evidence that hail cannons are inefficient in preventing the occurrence of heavy rain episodes.
在这篇文章中,我们记录了墨西哥使用冰雹炮驱散或抑制暴雨的情况,这是农民的普遍做法,但没有科学证据支持其有效性。这项研究使用了两个雨量数据库:一个是全球降水量测量(GPM)任务汇编的数据库,另一个是气象研究和预测(WRF)模型实施过程中生成的数据库。目的是探索暴雨事件与冰雹炮位置之间的关联。分析包括两个地理特征:一对坐标和每个冰雹炮周围 3 公里半径的影响范围。这个维度基于暴雨事件的规模和分布。本研究使用带有机器学习库的 Python 生态系统环境分析了四年的半小时雨量数据。结果表明,冰雹炮的运行与强降雨事件的消散或衰减之间没有关系。不过,这项研究强调,GPM 和 WRF 数据库在记录暴雨事件方面的显著差异可能归因于其自身的不确定性。尽管没有地面观测数据,但冰雹炮在影响暴雨事件发生方面的低效率是显而易见的。总之,这项研究提供了科学证据,证明冰雹炮在防止暴雨事件发生方面效率低下。
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引用次数: 0
Utilizing the Honeybees Mating-Inspired Firefly Algorithm to Extract Parameters of the Wind Speed Weibull Model 利用蜜蜂交配启发的萤火虫算法提取风速威布尔模型参数
Pub Date : 2024-05-22 DOI: 10.3390/forecast6020020
Abubaker Younis, Fatima Belabbes, P. Cotfas, D. Cotfas
This study introduces a novel adjustment to the firefly algorithm (FA) through the integration of rare instances of cannibalism among fireflies, culminating in the development of the honeybee mating-based firefly algorithm (HBMFA). The IEEE Congress on Evolutionary Computation (CEC) 2005 benchmark functions served as a rigorous testing ground to evaluate the efficacy of the new algorithm in diverse optimization scenarios. Moreover, thorough statistical analyses, including two-sample t-tests and fitness function evaluation analysis, the algorithm’s optimization capabilities were robustly validated. Additionally, the coefficient of determination, used as an objective function, was utilized with real-world wind speed data from the SR-25 station in Brazil to assess the algorithm’s applicability in modeling wind speed parameters. Notably, HBMFA achieved superior solution accuracy, with enhancements averaging 0.025% compared to conventional FA, despite a moderate increase in execution time of approximately 18.74%. Furthermore, this dominance persisted when the algorithm’s performance was compared with other common optimization algorithms. However, some limitations exist, including the longer execution time of HBMFA, raising concerns about its practical applicability in scenarios where computational efficiency is critical. Additionally, while the new algorithm demonstrates improvements in fitness values, establishing the statistical significance of these differences compared to FA is not consistently achieved, which warrants further investigation. Nevertheless, the added value of this work lies in advancing the state-of-the-art in optimization algorithms, particularly in enhancing solution accuracy for critical engineering applications.
本研究通过整合萤火虫之间罕见的食人现象,对萤火虫算法(FA)进行了新的调整,最终开发出基于蜜蜂交配的萤火虫算法(HBMFA)。IEEE 2005 年进化计算大会(CEC)的基准函数是评估新算法在各种优化方案中有效性的严格试验场。此外,通过全面的统计分析,包括双样本 t 检验和适应度函数评估分析,该算法的优化能力得到了有力的验证。此外,还利用巴西 SR-25 站的实际风速数据来评估该算法在风速参数建模中的适用性。值得注意的是,与传统 FA 相比,HBMFA 实现了更高的求解精度,平均提高了 0.025%,尽管执行时间适度增加了约 18.74%。此外,当该算法的性能与其他常见优化算法进行比较时,这种优势依然存在。不过,HBMFA 也存在一些局限性,包括执行时间较长,这让人担心它在对计算效率要求较高的场景中的实际应用性。此外,虽然新算法在适应度值上有所改进,但与 FA 相比,这些差异在统计意义上的确定并不一致,这值得进一步研究。不过,这项工作的附加值在于推进了优化算法的最新发展,特别是提高了关键工程应用的求解精度。
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引用次数: 0
Forecasting Daily Activity Plans of a Synthetic Population in an Upcoming District 预测未来地区合成人口的日常活动计划
Pub Date : 2024-05-22 DOI: 10.3390/forecast6020021
R. Belaroussi, Younes Delhoum
The modeling and simulation of societies requires identifying the spatio-temporal patterns of people’s activities. In urban areas, it is key to effective urban planning; it can be used in real estate projects to predict their future impacts on behavior in surrounding accessible areas. The work presented here aims at developing a method for making it possible to model the potential visits of the various equipment and public spaces of a district under construction by mobilizing data from census at the regional level and the layout of shops and activities as defined by the real estate project. This agent-based model takes into account the flow of external visitors, estimated realistically based on the pre-occupancy movements in the surrounding cities. To perform this evaluation, we implemented a multi-agent-based simulation model (MATSim) at the regional scale and at the scale of the future district. In its design, the district is physically open to the outside and will offer services that will be of interest to other residents or users of the surrounding area. To know the effect of this opening on a potential transit of visitors in the district, as well as the places of interest for the inhabitants, it is necessary to predict the flows of micro-trips within the district once it is built. We propose an attraction model to estimate the daily activities and trips of the future residents based on the attractiveness of the facilities and the urbanistic potential of the blocks. This transportation model is articulated in conjunction with the regional model in order to establish the flow of outgoing and incoming visitors. The impacts of the future district on the mobility of its surrounding area is deduced by implementing a simulation in the projection situation.
社会建模和模拟需要确定人们活动的时空模式。在城市地区,它是有效进行城市规划的关键;在房地产项目中,它可以用来预测这些项目未来对周围可进入区域的行为产生的影响。本文介绍的工作旨在开发一种方法,通过调动区域一级的人口普查数据以及房地产项目所定义的商店和活动布局,为建设中地区的各种设备和公共空间的潜在访问量建立模型。这种基于代理的模型考虑到了外部访客的流量,并根据周边城市入住前的流动情况进行了真实估算。为了进行评估,我们在区域范围和未来区域范围内实施了基于多代理的模拟模型(MATSim)。在设计中,该区实际是对外开放的,并将提供周边地区其他居民或用户感兴趣的服务。为了了解这种开放对区内潜在游客中转的影响,以及居民感兴趣的地方,有必要预测区内建成后的微观旅游流量。我们提出了一个吸引力模型,根据设施的吸引力和街区的城市化潜力来估算未来居民的日常活动和出行。该交通模型与区域模型相结合,以确定进出游客的流量。通过对预测情况进行模拟,推导出未来地区对其周边地区交通的影响。
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引用次数: 0
Forecasting and Anomaly Detection in BEWS: Comparative Study of Theta, Croston, and Prophet Algorithms BEWS 中的预测和异常检测:Theta、Croston 和 Prophet 算法的比较研究
Pub Date : 2024-05-21 DOI: 10.3390/forecast6020019
A. N. Grekov, E. Vyshkvarkova, Aleksandr S. Mavrin
Evaluation of water quality and accurate prediction of water pollution indicators are key components in water resource management and water pollution control. The use of biological early warning systems (BEWS), in which living organisms are used as biosensors, allows for a comprehensive assessment of the aquatic environment state and a timely response in the event of an emergency. In this paper, we examine three machine learning algorithms (Theta, Croston and Prophet) to forecast bivalves’ activity data obtained from the BEWS developed by the authors. An algorithm for anomalies detection in bivalves’ activity data was developed. Our results showed that for one of the anomalies, Prophet was the best method, and for the other two, the anomaly detection time did not differ between the methods. A comparison of methods in terms of computational speed showed the advantage of the Croston method. This anomaly detection algorithm can be effectively incorporated into the software of biological early warning systems, facilitating rapid responses to changes in the aquatic environment.
水质评价和水污染指标的准确预测是水资源管理和水污染控制的关键组成部分。利用生物预警系统(BEWS),将生物作为生物传感器,可以对水生环境状态进行全面评估,并在发生紧急情况时及时做出反应。在本文中,我们研究了三种机器学习算法(Theta、Croston 和 Prophet),以预测作者从 BEWS 中获得的双壳类动物活动数据。我们还开发了双壳类动物活动数据异常检测算法。结果表明,对于其中一种异常情况,Prophet 是最好的方法,而对于另外两种异常情况,不同方法的异常检测时间没有差别。对各种方法的计算速度进行比较后发现,Croston 方法更具优势。这种异常检测算法可以有效地纳入生物预警系统的软件中,从而促进对水环境变化的快速反应。
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引用次数: 0
Forecasting Convective Storms Trajectory and Intensity by Neural Networks 利用神经网络预报对流风暴的轨迹和强度
Pub Date : 2024-05-19 DOI: 10.3390/forecast6020018
Niccolò Borghi, Giorgio Guariso, M. Sangiorgio
Convective storms represent a dangerous atmospheric phenomenon, particularly for the heavy and concentrated precipitation they can trigger. Given their high velocity and variability, their prediction is challenging, though it is crucial to issue reliable alarms. The paper presents a neural network approach to forecast the convective cell trajectory and intensity, using, as an example, a region in northern Italy that is frequently hit by convective storms in spring and summer. The predictor input is constituted by radar-derived information about the center of gravity of the cell, its reflectivity (a proxy for the intensity of the precipitation), and the area affected by the storm. The essential characteristic of the proposed approach is that the neural network directly forecasts the evolution of the convective cell position and of the other features for the following hour at a 5-min temporal resolution without a relevant loss of accuracy in comparison to predictors trained for each specific variable at a particular time step. Besides its accuracy (R2 of the position is about 0.80 one hour in advance), this machine learning approach has clear advantages over the classical numerical weather predictors since it runs at orders of magnitude more rapidly, thus allowing for the implementation of a real-time early-warning system.
对流风暴是一种危险的大气现象,尤其是因为它能引发集中的强降水。鉴于对流风暴的高速和多变性,对其进行预测极具挑战性,尽管这对发出可靠警报至关重要。本文以意大利北部地区为例,介绍了一种预测对流电池轨迹和强度的神经网络方法,该地区在春季和夏季经常受到对流风暴的袭击。预测输入由雷达获取的有关细胞重心、其反射率(降水强度的代表)和受风暴影响区域的信息构成。所提方法的基本特征是,神经网络以 5 分钟的时间分辨率直接预测对流小区位置的变化以及随后一小时内其他特征的变化,与在特定时间步长内针对每个特定变量训练的预测器相比,精度不会有任何损失。除了准确性(一小时前位置的 R2 约为 0.80)之外,这种机器学习方法与传统的数值天气预报方法相比具有明显的优势,因为它的运行速度快了几个数量级,从而可以实现实时预警系统。
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引用次数: 0
Deep Learning Models for Bitcoin Prediction Using Hybrid Approaches with Gradient-Specific Optimization 使用梯度特定优化混合方法的比特币预测深度学习模型
Pub Date : 2024-04-23 DOI: 10.3390/forecast6020016
Amina Ladhari, Heni Boubaker
Since cryptocurrencies are among the most extensively traded financial instruments globally, predicting their price has become a crucial topic for investors. Our dataset, which includes fluctuations in Bitcoin’s hourly prices from 15 May 2018 to 19 January 2024, was gathered from Crypto Data Download. It is made up of over 50,000 hourly data points that provide a detailed view of the price behavior of Bitcoin over a five-year period. In this study, we used potent algorithms, including gradient descent, attention mechanisms, long short-term memory (LSTM), and artificial neural networks (ANNs). Furthermore, to estimate the price of Bitcoin, we first merged two deep learning algorithms, LSTM and attention mechanisms, and then combined LSTM-Attention with gradient-specific optimization to increase our model’s performance. Then we integrated ANN-LSTM and included gradient-specific optimization for the same reason. Our results show that the hybrid model with gradient-specific optimization can be used to anticipate Bitcoin values with better accuracy. Indeed, the hybrid model combines the best features of both approaches, and gradient-specific optimization improves predictive performance through frequent analysis of pricing data changes.
由于加密货币是全球交易最广泛的金融工具之一,预测其价格已成为投资者的一个重要课题。我们的数据集包括 2018 年 5 月 15 日至 2024 年 1 月 19 日期间比特币每小时价格的波动,数据集来自 Crypto Data Download。它由 5 万多个每小时的数据点组成,提供了五年内比特币价格行为的详细视图。在这项研究中,我们使用了梯度下降、注意力机制、长短期记忆(LSTM)和人工神经网络(ANN)等强效算法。此外,为了估算比特币的价格,我们首先合并了两种深度学习算法--LSTM 和注意力机制,然后将 LSTM-Attention 与梯度特定优化相结合,以提高模型的性能。然后,我们出于同样的原因整合了 ANN-LSTM,并加入了梯度特定优化。我们的结果表明,带有梯度特定优化的混合模型可以更准确地预测比特币值。事实上,混合模型结合了两种方法的最佳特点,而梯度特定优化则通过频繁分析价格数据变化提高了预测性能。
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引用次数: 0
期刊
Forecasting
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