FİKİR MADENCİLİĞİ VE DUYGU ANALİZİ, YAKLAŞIMLAR, YÖNTEMLER ÜZERİNE BİR ARAŞTIRMA

Barış ÖZYURT, Muhammet Ali AKCAYOL

Öz


Günümüzde Web uygulamalarının yaygınlaşmasıyla birlikte bireylerin fikir, düşünce ve duygularını ifade ettikleri platformların kullanımı büyük bir hızla artmıştır. Bu platformlarda bireylerden alınmış veriler çok büyük boyutlara ulaşmaktadır. Bu verilerin manuel olarak analiz edilmesi veya sınıflandırılması mümkün olmadığından otomatik analiz edilmesi ve sınıflandırılması zorunluluk haline gelmiştir. Bu nedenle fikir madenciliği ve duygu analizine yönelik araştırmalar son yıllarda giderek artmaya başlamıştır. Bu makalede fikir madenciliği ve duygu analizi konusu detaylarıyla, uygulanan yöntemlerle birlikte anlatılmış, bu alanda yapılmış olan çalışmalar incelenmiş ve literatür taraması şeklinde sunulmuştur.

Anahtar Kelimeler


Duygu analizi, Fikir madenciliği

Tam Metin:

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Referanslar


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