Mining Arabic Agricultural Problems For Intelligent Guidance / (Record no. 8883)

MARC details
000 -LEADER
fixed length control field 05711nam a22002537a 4500
008 - FIXED-LENGTH DATA ELEMENTS--GENERAL INFORMATION
fixed length control field 210203b2019 a|||f mb|| 00| 0 eng d
040 ## - CATALOGING SOURCE
Original cataloging agency EG-CaNU
Transcribing agency EG-CaNU
041 0# - Language Code
Language code of text eng
Language code of abstract eng
082 ## - DEWEY DECIMAL CLASSIFICATION NUMBER
Classification number 658.4
100 0# - MAIN ENTRY--PERSONAL NAME
Personal name Ahmed Abd El Hamed Mohamed Beleity
245 1# - TITLE STATEMENT
Title Mining Arabic Agricultural Problems For Intelligent Guidance /
Statement of responsibility, etc. Ahmed Abd El Hamed Mohamed Beleity
260 ## - PUBLICATION, DISTRIBUTION, ETC.
Date of publication, distribution, etc. 2019
300 ## - PHYSICAL DESCRIPTION
Extent 68 p.
Other physical details ill.
Dimensions 21 cm.
500 ## - GENERAL NOTE
Materials specified Supervisor: Mohamed Awny
502 ## - Dissertation Note
Dissertation type Thesis (M.A.)—Nile University, Egypt, 2019 .
504 ## - Bibliography
Bibliography "Includes bibliographical references"
505 0# - Contents
Formatted contents note Contents:<br/>Chapter 1: Introduction ............................................................................................... 08<br/>1.1 Chapter Preface ..................................................................09<br/>1.2 Background .........................................................................09<br/>1.3 Thesis Outline and Organization ........................................10<br/>Chapter 2: Text and Data Mining…………. .............................................................. 11<br/>2.1 Background .........................................................................12<br/>2.2 Case Study Of: Data Mining in Agriculture sector<br/>and NLP in Arabic language ..............................................30<br/>Chapter 3: Problem and significance .......................................................................... 36<br/>3.1 The Problem ........................................................................37<br/>3.2 The Objective of the Research ............................................37<br/>3.3 The Significance of the Research .......................................37<br/>3.4 The Methodology ................................................................38<br/>Chapter 4: Research Work Implementation …………. .............................................. 39<br/>4.1 The Ultimate Goal...............................................................40<br/>4.2 System overview .................................................................41<br/>4.3 Implementation of the Developed System ..........................42<br/>4.4 Verification and Validation of the system results: ..............49<br/>Chapter 5: Conclusion & future research …………................................................... 51<br/>References ....................................
520 3# - Abstract
Abstract Abstract:<br/>Due to the vital importance of the Agriculture section in Egypt and its huge workforce at different levels of knowledge and literacy the Egyptian Government has created in 1970 an entity “Agriculture Research Center”.<br/>The Agriculture Research Center in Egypt developed a website to deal with farmers’ problems online. At present, farmers’ access to such information is extremely limited; their queries are received and manually processed by agricultural experts. Ironically, due to a large number of queries the processing gets significantly delayed. Moreover, due to the lack of a reliable centralized source of information there is usually duplication of effort by experts when dealing with similar queries, or common situations. There are too many duplicate unorganized questions and it is hard to find the right answer or the category where for the right answer for a raised questions belongs to. Also, the data has too many unfiltered special characters and a mix of slang and standard language which makes it a bit difficult for users to search for specific information without the help of agriculture experts.<br/>The drawback of the old manual process is that farmers across Egypt post their questions and concerns to the website of the Agriculture Research Center resulting in quite a number of repeated and duplicated questions. Each time a question is posted, a technical expert answers that question whether it is a repetition or not. Also, the data has too many unfiltered special characters and a mix of slang and standard language which makes it a bit difficult for users to search for specific information. The current research is an attempt to bridge the information and communication gap between the field subject matter experts and farmers, using data from the Agricultural Research Center of Egypt. This research mines and delivers solutions from a textual database of over 4,000 cases of agricultural issues, enabling farmers to make faster and more efficient decisions perhaps without the need to contact the experts.<br/>This research develops a system where farmers could use it by simply asking the question and getting the closest and most accurate answer. The system will also ensure that the answer provided is for the correct crop. The raised question is inserted in the document as a vector of words. Using the TF-IDF numerical representation of words and the Cosine Similarity algorithm the document lines are being vectored where each vectored line is compared with the rest of the document lines to identify the similarities, and to eliminate the repeated unnecessary words in the questioned issue while highlighting the most significant one. The system is developed to identify all the similar questions.<br/>In this research, firstly, data is collected from the textual datasets in the Agriculture Research Center. Secondly, by using Natural Language Processing (NLP) the system automatically picks the most significant words to identify each raised question. Then, it picks the correct answer after filtering the repeated words. Lastly, the system ensures that the answer provided is for the correct crop.
546 ## - Language Note
Language Note Text in English, abstracts in English.
650 #4 - Subject
Subject MOT
655 #7 - Index Term-Genre/Form
Source of term NULIB
focus term Dissertation, Academic
690 ## - Subject
School MOT
942 ## - ADDED ENTRY ELEMENTS (KOHA)
Source of classification or shelving scheme Dewey Decimal Classification
Koha item type Thesis
650 #4 - Subject
-- 309
655 #7 - Index Term-Genre/Form
-- 187
690 ## - Subject
-- 309
Holdings
Withdrawn status Lost status Source of classification or shelving scheme Damaged status Not for loan Home library Current library Date acquired Total Checkouts Full call number Date last seen Price effective from Koha item type
    Dewey Decimal Classification     Main library Main library 02/03/2021   658.4 / A.B.M 02/03/2021 02/03/2021 Thesis