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Một phần của tài liệu Phân giải đồng tham chiếu đối tượng cho phân tích cảm xúc (Trang 114)

M c d̀đ tăđ c k t qu khá t t vƠđ căđánh giá b ng th c nghi m, lu n án v n còn m t s v năđ nh c n quan tâm vƠ phát tri nătrongăt ngălai.

V n đ 1: Phát tri n vƠ lƠm giƠu ontology c m xúc

V i ontology c m xúc SO hi n t i ch áp d ng cho mi n chuyên bi t lƠ smartphone (đi n tho i thông minh) vƠ vi c lƠm giƠu ontology ph i d a trên t păv năb n ph thu c vƠo mi n. V i vi c xây d ng vƠ lƠm giƠu ontology b ngăph ngăpháp bán t đ ng, rõ rƠng có nhi u h n ch vì v y c i ti n vƠ s d ngăph ngăpháp t đ ng lƠ nhu c u c n thi t.

V n đ 2: Ph thu căb c ti n hu n luy n

V i bƠi toán phân gi iăđ ng tham chi u cho phân tích c m xúc có m tăđ iăt ng khơng b nhăh ng b iăb c ti n hu n luy n, nh ngăv iăv năb n có nhi uăđ iăt ng thì mơ hình CROAS ph thu c vƠoăb c nƠy. Vì v y n u xu t hi n khía c nh m i không t n t i trong b t v ngăbanăđ u thì c n ph i th c hi n l i t đ u, ti n hu n luy n, ho c lƠ khôngăthayăđ i b t v ng vƠ k t qu đ tăđ c s b nhăh ng.

V n đ 3: Th c hi n trên cácăv năb n c m xúc ti ng Vi t

ơyălƠ v năđ mang tính th c ti n cao cho bƠi tốn phân tích c m xúc ti ng Vi t. Hi n t i lu n án m i ch t p trung x ĺtrênăv năb n ti ng Anh vƠ m i ngơn ng cóđ c th̀ riêng. NgoƠi ra do bƠi toán phân gi iăđ ng tham chi u cho phân tích c m xúc lƠ bƠi tốn ph c t p nên vi c áp d ng t ngôn ng nƠy sang ngôn ng khác s có khókh nă nh tăđ nh. Tuy nhiên vi c chuy năđ i nƠy lƠ m t nhu c u c n thi t vƠ s có́ ngh a khoa h c vƠ tính th c ti n cao trong l nh v c x ĺ ngôn ng t nhiên Vi t Nam.

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CÁC TÀI LI U CÔNG B C A TÁC GI LIÊN QUAN N LU N ÁN T p chí qu c t

1. T. Le Thi, T. Phan Thi and T. Quan Thanh, "Machine learning using context vectors for object coreference resolution," Computing, vol. Online, 2021. https://doi.org/10.1007/s00607-021-00902-4

T p chí trong n c

1. T. Le Thi, T. Phan Thi and T. Quan Thanh, "Coreference resolution Ontology- based in sentiment analysis," Science and Technology Development Journal, vol. 20, no. K9, pp. 23-30, 2019.

K y u h i ngh qu c t

1. T. Le Thi, T. Phan Thi and T. Quan Thanh, "Instance-Based Enrichment of Sentiment Ontology," in 2019 IEEE-RIVF International Conference on Computing and Communication Technologies, March 20-22, Danang, Vietnam, pp. 1-6, 2019. 2. T. Le Thi, T. Quan Thanh and T. Phan Thi, "Ontology-Based Entity Coreference

Resolution For Sentiment Analysis," in Proceedings of the Eighth International Symposium on Information and Communication Technology, December 7-8, Nha Trang City, Viet Nam, pp. 50-56, 2017.

3. T. Le Thi, H. Vo Thanh, T. Mai Duc, T. Quan Thanh and T. Phan Thi, "An Ontology-based Coreference Resolution Approach for Aspect-level Sentiment Analysis," in 2016 IEEE RIVF International Conference on Computing & Communication Technologies, Research, Innovation, and Vision for the Future, November 7-9, Hanoi, Vietnam, pp. 17-22, 2016.

4. T. Le Thi, H. Vo Thanh, T. Mai Duc, T. Quan Thanh and T. Phan Thi, "Sentiment Analysis Using Anaphoric Coreference Resolution and Ontology Inference," in Multi-disciplinary Trends in Artificial Intelligence - 10th International Workshop, MIWAI 2016, December 7-9, Chiang Mai, Thailand, pp. 297-303, 2016.

tƠi nghiên c u khoa h c

1. PGS. TS Qu n ThƠnhăTh (Phan Th T i,ăLêăTh Th y, Võ Thanh Hùng, Tr n Kh i Thi n), ắPhơnăgi iăđ ngăthamăchi uăchoăti ngăVi tătrongăqătrìnhăphơnătíchăc măxúcă

h ngăđ năkhíaăc nh.” C2016-20-36, HQG-HCM. 2016.

2. GS.ăTSăPhanăTh ăT i,ăLêăTh ăThu ,ăắPhơnăgi iăđ ngăthamăchi uăđ iăt ng,ăkhíaă

c nhătrênăc ăs ăc măxúcătrongăcácăbƠiănh năxétăti ngăAnh.” TNCS-KHMT-2016-09,

HBK-HCM. 2018.

3. PGS. TS Qu n ThƠnhăTh (Phan Th T i,ăVõăThanhăH̀ng,ăMaiă c Trung, Lê Th Th y), ắK tăh părútătríchănétăđ iăt ngăvƠăh cămáyăđ ăphơnătíchăc măxúcătrênăkhíaă

104

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