Constructing a domain dependent case-base for database schema design with case-based reasoning

1994 ◽  
Vol 40 (10-12) ◽  
pp. 737-741
Author(s):  
Yong-Kee Paek ◽  
Jungyun Seo ◽  
Gil-Chang Kim
1996 ◽  
Vol 18 (1) ◽  
pp. 83-95 ◽  
Author(s):  
Yong-Kee Paek ◽  
Jungyun Seo ◽  
Gil-Chang Kim

Author(s):  
Guanghsu A. Chang ◽  
Cheng-Chung Su ◽  
John W. Priest

Artificial intelligence (AI) approaches have been successfully applied to many fields. Among the numerous AI approaches, Case-Based Reasoning (CBR) is an approach that mainly focuses on the reuse of knowledge and experience. However, little work is done on applications of CBR to improve assembly part design. Similarity measures and the weight of different features are crucial in determining the accuracy of retrieving cases from the case base. To develop the weight of part features and retrieve a similar part design, the research proposes using Genetic Algorithms (GAs) to learn the optimum feature weight and employing nearest-neighbor technique to measure the similarity of assembly part design. Early experimental results indicate that the similar part design is effectively retrieved by these similarity measures.


Author(s):  
Jose M. Juarez ◽  
Susan Craw ◽  
J. Ricardo Lopez-Delgado ◽  
Manuel Campos

Case-Based Reasoning (CBR) learns new knowledge from data and so can cope with changing environments. CBR is very different from model-based systems since it can learn incrementally as new data is available, storing new cases in its case-base. This means that it can benefit from readily available new data, but also case-base maintenance (CBM) is essential to manage the cases, deleting and compacting the case-base. In the 50th anniversary of CNN (considered the first CBM algorithm), new CBM methods are proposed to deal with the new requirements of Big Data scenarios. In this paper, we present an accessible historic perspective of CBM and we classify and analyse the most recent approaches to deal with these requirements.


Sensors ◽  
2019 ◽  
Vol 19 (23) ◽  
pp. 5118 ◽  
Author(s):  
Zhai ◽  
Martínez Ortega ◽  
Beltran ◽  
Lucas Martínez

As an artificial intelligence technique, case-based reasoning has considerable potential to build intelligent systems for smart agriculture, providing farmers with advice about farming operation management. A proper case representation method plays a crucial role in case-based reasoning systems. Some methods like textual, attribute-value pair, and ontological representations have been well explored by researchers. However, these methods may lead to inefficient case retrieval when a large volume of data is stored in the case base. Thus, an associated representation method is proposed in this paper for fast case retrieval. Each case is interconnected with several similar and dissimilar ones. Once a new case is reported, its features are compared with historical data by similarity measurements for identifying a relative similar past case. The similarity of associated cases is measured preferentially, instead of comparing all the cases in the case base. Experiments on case retrieval were performed between the associated case representation and traditional methods, following two criteria: the number of visited cases and retrieval accuracy. The result demonstrates that our proposal enables fast case retrieval with promising accuracy by visiting fewer past cases. In conclusion, the associated case representation method outperforms traditional methods in the aspect of retrieval efficiency.


2019 ◽  
Vol 3 (2) ◽  
pp. 126-132
Author(s):  
Zendy Achmad Faisal

Munculnya permasalahan dan penyakit pada ayam ini disinyalir akibat kelalaian peternak yang kurang memperhatikan nutrisi bahan pakan yang diberikan pada ayam peliharaannya. Penyakit-penyakit yang sering menjangkit ayam petelur adalah: Newcastle Disease (ND), Infectious Bronchitis (IB), Gumboro Disease dan Flu. Pada setiap penyakit tersebut memiliki gejala yang hampir sama namun membutuhan penanganan dan tindakan yang bebeda-beda sehingga banyak peternak yang sulit mengidentifikasi penyakit apa yang menjangkit ternak mereka.Pengumpulan data yang dijadikan bahan pembuatan sistem pakar menggunakan metode case base reasoning ini dilakukan dengan wawancara dengan technical service obat (ahli dalam bidang penanganan penyakit ayam petelur) pada instansi Manunggal Putra Unggas. Dalam tahap ini, berkonsultasi tentang informasi mengenai segala penyakit ayam petelur, gejala penyakit ayam petelur, serta bobot nilai pada setiap gejala yang merupakan tingkat keyakinan dari ahli dalam penyakit ayam petelur. Setelah dilakukan wawancara, maka diperoleh informasi mengenai mengenai nilai bobot dari penyakit dan gejala penyakit ayam yang akan digunakan dalam sistem pakar diagnosis penyakit pada ayam petelur yang diperoleh dari technical service penanganan unggas yaitu Bpk Taufan Rohadie.Pada jurnal hasil penelitian sosio-economic impact didapatkan pada insutri peternakan ayam yang ada di Indonesia bahwa wabah penyakit ayam pada umumnya menyerang perusahaan peternakan ayam petelur. Sekitar 83% dari total populasi. Informasi ini mengungkapkan bahwa perusahaan ayam petelur lebih rentan terkena wabah penyakit daripada perusahaan ayam boiler.


2021 ◽  
Vol 1 (1) ◽  
pp. 43-48
Author(s):  
Desi Ernawati ◽  
Riki Andri Yusda ◽  
Guntur Maha Putra

Abstract:Chili is a production cropthatis much needed by the  community. Good care is needed to increase the production of chili plants. Production of chili plants will decrease if the types of diseases that attack are not considered. To find out about chili plant diseases, farmers only look at the disease without knowing the symptoms that appear beforehand so that it will affect the production of chili plants.So that we need experts who understand the symptoms of disease in chili plants.The existence of experts can be replaced by a system designed to detect symptoms of disease in chili plants.The expert system to be designed is web-based using the case-based reasoning method.This expert system is expected to help increase the productivity of chili plants.            Keywords:expert system; chili; case-based reasoning; chili plants.  Abstrak:Cabai merupakan tanaman produksi yang banyak dibutuhkan oleh masyarakat. Untuk meningkatkan produksi tanaman cabai diperlukan perawatan yang baik. Produksi dari tanaman cabai akan menurun jika tidak diperhatikan jenis penyakit yang menyerang. Untuk mengetahui penyakit tanaman cabai para petani hanya melihat penyakitnya saja tanpa mengetahui terlebih dahulu gejala yang muncul sehingga akan mempengaruhi hasil produksi tanaman cabai. Sehingga diperlukan pakar yang mengerti mengenai gejala penyakit pada tanaman cabai. Keberadaan pakar bisa digantikan oleh sebuah sistem yang dirancang untuk mendeteksi gejala penyakit pada tanaman cabai. Sistem pakar yang akan dirancang berbasis web dengan menggunakan metode case base reasoning. Sistem pakar ini nantinya diharapkan membantu untuk peningkatan produktivitas tanaman cabai. Kata kunci:sistem pakar; cabai; casebasereasoning; tanaman cabai.


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