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Performance Evaluation and Comparison using Deep Learning Techniques in Sentiment Analysis 情感分析中使用深度学习技术的性能评估和比较
Pub Date : 2021-01-01 DOI: 10.36548/jscp.2021.2.006
P. A.
One of the most common applications of deep learning algorithms is sentiment analysis. This study delivers a better performing and efficient automated feature extraction technique when compared to previous approaches. Traditional methodologies like surface approach will use the complicated manual feature extraction process, which forms the fundamental aspect of feature driven advancements. These methodologies serve as a strong baseline to determine the predictability of the features, and it will also serve as the perfect platform for integrating the deep learning techniques. The proposed research work has introduced a deep learning technique, which can be incorporated with feature-extraction. Moreover, this research work includes three crucial parts. The first step is the development of sentiment classifiers with deep learning, which can be used as the baseline for comparing the performance. This is followed by the use of ensemble techniques and information merger to obtain the final set of sources. As the third step, a combination of ensembles is introduced to categorize various models along with the proposed model. Finally experimental analysis is carried out and the performance is recorded to determine the best model with respect to the deep learning baseline.
深度学习算法最常见的应用之一是情感分析。与以往的方法相比,本研究提供了一种性能更好、效率更高的自动特征提取技术。传统的方法,如曲面方法,将使用复杂的人工特征提取过程,这是特征驱动进步的基本方面。这些方法可以作为确定特征可预测性的强大基线,也可以作为集成深度学习技术的完美平台。提出的研究工作引入了一种深度学习技术,该技术可以与特征提取相结合。此外,本研究工作包括三个关键部分。第一步是基于深度学习的情感分类器的开发,它可以作为比较性能的基线。接下来是使用集成技术和信息合并来获得最终的源集。作为第三步,引入组合集成来对各种模型进行分类,并提出模型。最后进行实验分析并记录性能,以确定相对于深度学习基线的最佳模型。
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引用次数: 51
Comparative analysis of the efficacy of selected gametocide agents in sorghum (Sorghum bicolor [L.] Moench) 高粱(sorghum bicolor [L.])配子杀虫剂药效比较分析。] Moench)
Pub Date : 2021-01-01 DOI: 10.21475/ajcs.21.15.06.p2801
M. Yahaya, H. Shimelis, M. Laing, I. Mathew
A new generation of chemical hybridization agents (CHAs) or gametocides has shown potential to induce male sterility in predominantly self-fertilizing crops, including sorghum (Sorghum bicolor [L.] Moench). There is a lack of information on the relative efficacy of the various available CHAs for large-scale application in plant breeding programs. Therefore, the objective of the present study was to compare the relative effectiveness of three selected CHAs to induce male sterility in sorghum under a controlled environment for hybridization. Foliar applications of three CHAs and a control (ethrel, trifluoromethanesulfonamide [TFMSA], ethyl 4-fluorooxanilate [E4FO] and distilled water [control]) were tested using three grain sorghum genotypes (ICS-1, ICS-2 and ICS-3) in two seasons. The 24 treatment combinations consisting of 4 levels of CHAs, 3 sorghum varieties and two seasons were laid out using a randomized complete block design with three replications. Data on pollen sterility, pollen diameter, plant height, and panicle height were collected and analyzed. Results showed that the CHAs had significant (p<0.05) differences for efficacy of inducing male sterility in sorghum. Ethrel at a dose of 1 gl-1 induced the highest pollen sterility (98% in both seasons) but was highly phytotoxic with at least 60% mortality in the test population in both seasons, making it unsuitable for practical application. TFMSA (2 mg per plant) and E4FO (1 gl-1) d induced 93% male sterility with minimal phytotoxic effects (20 to 30%). Application of either TFMSA at 2mg per plant after flag leaf emergence or 1gl-1 of E4FO at panicle initiation can be used to successfully induce male sterility in sorghum under greenhouse conditions
新一代化学杂交剂(CHAs)或杀配子剂已显示出在主要自交受精作物中诱导雄性不育的潜力,包括高粱(sorghum bicolor [L.]] Moench)。目前还缺乏关于各种可用于大规模植物育种计划的CHAs的相对功效的信息。因此,本研究的目的是比较三种选择的CHAs在受控杂交环境下诱导高粱雄性不育的相对效果。以3种高粱基因型(ICS-1、ICS-2和ICS-3)为试验对象,在2个季节对3种CHAs及其对照(乙三醇、三氟甲磺酰胺[TFMSA]、4-氟草酸乙酯[E4FO]和蒸馏水[对照])进行了叶面施用试验。采用3个重复的随机完全区组设计,设置4个水平的CHAs、3个高粱品种和2个季节的24个处理组合。收集并分析了花粉不育性、花粉直径、株高和穗高的数据。结果表明,CHAs对高粱雄性不育的诱导效果差异显著(p<0.05)。以1gl -1剂量的乙烯利诱导花粉不育性最高(两个季节均为98%),但具有高度植物毒性,两个季节试验群体的死亡率至少为60%,因此不适合实际应用。TFMSA(每株2 mg)和E4FO (1 gl-1) d诱导93%的雄性不育,植物毒性作用最小(20 - 30%)。在温室条件下,旗叶出苗后每株施用2mg的TFMSA或穗期施用1gl-1的E4FO均可成功诱导高粱雄性不育
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引用次数: 1
Design an Early Detection and Classification for Diabetic Retinopathy by Deep Feature Extraction based Convolution Neural Network 基于卷积神经网络深度特征提取的糖尿病视网膜病变早期检测与分类设计
Pub Date : 2021-01-01 DOI: 10.36548/jtcsst.2021.2.002
Akey Sungheetha, Rajesh Sharma R
Early identification of diabetics using retinopathy images is still a difficult challenge. Many illness diagnosis techniques are accomplished by using the blood vessels present in fundus images. Many conventional methods fail to detect Hard Executes (HE) present in retinopathy images, which are used to determine the severity of diabetes disease. To overcome this challenge, the proposed research work extracts the features by incorporating deep networks through convolution neural networks (CNN). The micro aneurysm may be seen in the early stages of the transformation from normal to sick condition on the images for mild DR. The level of severity of the diabetes condition may be classified by using the confusion matrix detection results. The early detection of the diabetic condition has been achieved through the HE spotted in the blood vessel of an eye by using the proposed CNN framework. The proposed framework is also used to detect a person’s diabetic condition. This article consisting of proof for the accuracy of the proposed framework is higher than other traditional detection algorithms.
利用视网膜病变图像早期识别糖尿病患者仍然是一个困难的挑战。许多疾病诊断技术是通过眼底图像中的血管来完成的。许多传统方法无法检测视网膜病变图像中存在的硬执行(HE),而硬执行用于确定糖尿病疾病的严重程度。为了克服这一挑战,提出的研究工作通过卷积神经网络(CNN)结合深度网络来提取特征。在轻度糖尿病患者的影像上,可在由正常向病态转变的早期阶段看到微型动脉瘤。糖尿病病情的严重程度可通过混淆矩阵检测结果进行分类。利用所提出的CNN框架,通过在眼睛血管中发现HE,实现了糖尿病病情的早期检测。提出的框架也用于检测一个人的糖尿病状况。本文所提出的框架的准确性高于其他传统的检测算法。
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引用次数: 68
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