Crop Information Retrieval Framework Based on LDW-Ontology and SNM-BERT Techniques

IF 2 4区 计算机科学 Q3 AUTOMATION & CONTROL SYSTEMS
K. Ezhilarasi, D. Mansoor Hussain, M. Sowmiya, N. Krishnamoorthy
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引用次数: 0

Abstract

Currently, on the Internet, the information about agriculture is augmenting extremely; thus, searching for precise, relevant data of various details is highly complicated. To deal with particular difficulties like lower relevancy rate, false detection of retrieval resources, poor similarity rate, unstructured data format, multivariate data, irrelevant spelling, and higher computation time, an intelligent Information Retrieval (IR) system is required. An IR Framework centered on Levenshtein Distance Weight-centric Ontology (LDW-Ontology) and Sutskever Nesterov Momentum-centred Bidirectional Encoder Representation from Transformer (SNM-BERT) methodologies is presented here to overcome the complications as mentioned earlier. Firstly, the data is pre-processed, transmuting the unstructured data into a structured format, thus mitigating the error probabilities. Then, the LDW-Crop Ontology construction is done regarding the structured data. In the methodology presented, significance, frequency,and the suggestion of word in mind are considered to build Crop ontology. In the MongoDB database, the data being constructed are amassed. Then, by utilizing SNM-BERT, the data is trained for IR regarding clustered input produced by Inter Quartile Pruning Range-centred Hierarchical Divisive Clustering (IQPR-HDC) model. The LDW is computed for the provided user query; subsequently, the similarity evaluation outcomes are obtained from the database. The experiential evaluation displays that when analogized with the prevailing methodologies, a better accuracy of 94 % for simple queries and 92% for complex queries is achieved. Along with retrieval rate with lower computation time is achieved by the proposed methodology.
基于ldw本体和SNM-BERT技术的作物信息检索框架
目前,在互联网上,有关农业的信息急剧增加;因此,寻找各种细节的精确、相关的数据是非常复杂的。针对相关度低、检索资源检测错误、相似率差、数据格式非结构化、数据多变量、拼写不相关、计算时间长等问题,需要智能信息检索系统。本文提出了一个以Levenshtein距离权重中心本体(LDW-Ontology)和Sutskever Nesterov以动量为中心的变压器双向编码器表示(SNM-BERT)方法为中心的红外框架,以克服前面提到的复杂性。首先,对数据进行预处理,将非结构化数据转化为结构化格式,从而降低了错误概率。然后,针对结构化数据构建LDW-Crop本体。在提出的方法中,考虑了意义性、频度和记忆词的暗示来构建作物本体。在MongoDB数据库中,正在构建的数据是累积的。然后,利用SNM-BERT,对四分位间修剪距离中心分层分裂聚类(IQPR-HDC)模型产生的聚类输入进行IR训练。为所提供的用户查询计算LDW;随后,从数据库中获得相似度评价结果。经验评估表明,当与流行的方法进行类比时,简单查询的准确率达到94%,复杂查询的准确率达到92%。该方法具有检索率高、计算时间短的特点。
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来源期刊
Information Technology and Control
Information Technology and Control 工程技术-计算机:人工智能
CiteScore
2.70
自引率
9.10%
发文量
36
审稿时长
12 months
期刊介绍: Periodical journal covers a wide field of computer science and control systems related problems including: -Software and hardware engineering; -Management systems engineering; -Information systems and databases; -Embedded systems; -Physical systems modelling and application; -Computer networks and cloud computing; -Data visualization; -Human-computer interface; -Computer graphics, visual analytics, and multimedia systems.
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