Smart TV Search. 첫 회첫 회 마지막 회 다음 회 문제점 : 검색 키워드에서 직접적인 NER 매핑이 불가능. Naver 연관 검색.

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Smart TV Search

첫 회첫 회 마지막 회 다음 회 문제점 : 검색 키워드에서 직접적인 NER 매핑이 불가능. Naver 연관 검색

마지막 회, 첫 회 “ 시크릿 가든, 10 회 ” 에 해당되는 NER 거쳐 나온 Ontology Instance “ 시크릿 가든 ”,“ 마지막 ”,” 회 ” 라는 keywords Input: Constraint: 1<= x. 회 <=16 Goal: Maximize x. 회 SWCL: 제일 큰 회 ( 숫자 ) Solver Output: “ 시크릿 가든, 마지막 회 ” 에 해당하는 Ontology Instance Output:

다음 회 Goal: Minimize? Maximize? 확장 ? 할 일들 (~10.20) ①간단한 테스트 온톨로지 만듬 ② Manchester Syntax Parsing 부분 ( 일부 ) ③ SWCL 구성 ④ Solver ⑤ Solver Output 가지고 해당 인스턴스 return 할 일들 (10.20~)

온톨로지 TVProgram TVEpisode hasEpisode int episodeNum episodeOf

시크릿 가든 시크릿 가든 1 회 시크릿 가든 2 회 시크릿 가든 3 회 hasEpisode 1 episodeNum 23

Virtual Enterprise

 Customers’ requirements Product : Personal Computer BOM (Bill of Material) PC 1EA – consist of 2EA Memory 1EA CPU Demand of PC 1 st week : 50, 2 nd week : 40, 3 rd week : 55, 4 th week : 60, 5 th week : 50 Demand of Memory = Demand of PC X 2 Demand of CPU = Demand of PC  Capabilities of service and product providers Vendor 1 (Memory) Goods in stock : 30 Capacity - 1 st week : 70, 2 nd week : 60, 3 rd week : 60, 4 th week : 40 Already accepted order - 1 st week : 20, 3 rd week : 10 Price – 50$/EA, Stock cost – 5$/EA Specific Requirement Example 1) 1). 2007, 졸업논문 - 정균범 8

Vendor 3 (CPU) Goods in stock : 70 Capacity – 1 st week : 40, 2 nd week : 70, 3 rd week : 65, 4 th week : 60 Already accepted order – 2 nd week : 10, 4 th week : 10 Price – 70$/EA, Stock cost – 5$/EA Assembling company (Vendor 4) Spending time to assemble - 1 week Goods in stock : 10 Capacity - 1 st week : 40, 2 nd week : 50, 3 rd week : 70, 4 th week : 40, 5 th week : 50 Already accepted order - 2 nd week : 20, 3 rd week : 10 Price – 30$/EA, Stock cost – 10$/EA 9

VE Ontology 10

VE Solution minimize 30*X11+40*X12+50*X13+60*X14+30*X22+40*X23+50*X24+30*X33+40*X34+30*X44+10*Y1+20*Y2+30*Y3+40*Y4 +50*A11+55*A12+60*A13+65*A14+50*A22+55*A23+60*A24+50*A33+55*A34+50*A44+5*Z1+10*Z2+15*Z3+20*Z4 +40*B11+50*B12+60*B13+70*B14+40*B22+50*B23+60*B24+40*B33+50*B34+40*B44+10*K1+20*K2+30*K3+40*K4 +70*C11+75*C12+80*C13+85*C14+70*C22+75*C23+80*C24+70*C33+75*C34+70*C44+5*P1+10*P2+15*P3+20*P4; subject to { // constraints for Vendor-4 X11+X12+X13+X14<=50; X22+X23+X24<=60; X33+X34<=65; X44<=50; Y1+Y2+Y3+Y4==10; X11+Y1>=50; X12+X22+Y2>=60; X13+X23+X33+Y3>=65; X14+X24+X34+X44+Y4>=60; 11

// constraints for Vendor-1,2 A11+A12+A13+A14<=90; //90 으로 했을때 솔루션 있음.. 80 일때 - 나옴 A22+A23+A24<=40; A33+A34<=60; A44<=50; Z1+Z2+Z3+Z4==30; B11+B12+B13+B14<=50; B22+B23+B24<=40; B33+B34<=50; B44<=60; K1+K2+K3+K4==40; (A11+Z1-20)+(B11+K1-10)>=2*(X11+X12+X13+X14); (A12+A22+Z2)+(B12+B22+K2-10)>=2*(X22+X23+X24); (A13+A23+A33+Z3-10)+(B13+B23+B33+K3)>=2*(X33+X34); (A14+A24+A34+A44+Z4)+(B14+B24+B34+B44+K4)>=2*X44; // constraints for Vendor-3 C11+C12+C13+C14<=40; C22+C23+C24<=50; C33+C34<=65; C44<=60; P1+P2+P3+P4==50; C11+P1>=X11+X12+X13+X14; C12+C22+P2>=X22+X23+X24+10; C13+C23+C33>=X33+X34; C14+C24+C34+C44>=X44+10; } 12

Vendor ProduceWeek SpendWeek hasProduceWeek hasSpendWeek Supplying produce int produceCapability int supplyAmountsupplyCost ownDemand int veDemand Inventory int hasInventory hasAmount spendInventory spend VE Ontology Schema hasProduceWeek produceWeekOf spendInventory ivSpentBy hasInventory inventoryOf Produce producedBy Spend spentBy InverseProperties: 13 int inventoryCost

Constraints sharing among vendors Constraint-1: 매주 생산량은 매주 생산 가능한 량보다 적어야 한다 Constraint-2: 그 주의 요구량은 제공하는 량과 재고 중에서 쓴 량보다 적어야 한다. 14

Constraints sharing among vendors Constraint-3: 매 Vendor 가 가지고 있는 재고는 매주 쓴 재고량의 합과 같다. Constraint-4,5: Vendor1 과 Vendor2 의 매주 소모량합, Vendor 3 의 매주 소모량은 가상기업의 생산량보다 커야 한다. 15

Goal Goal: 모든 vendor 에서 쓴 돈의 최저값 minimize

Issues 1. 매 constraint 마다 variable 선언부가 다 나오는 것. 17

코멘트 : ① Des->Domain Des ②한칸으로 Des 선택 편집 ③ Property_URI 로 변수 이름 명명