Gå frakoblet med Player FM -appen!
Few-Shot Conversational Dense Retrieval (ConvDR) w/ special guest Antonios Krasakis
Manage episode 355037187 series 3446693
We discuss Conversational Search with our usual cohosts Andrew Yates and Sergi Castella i Sapé; along with a special guest Antonios Minas Krasakis, PhD candidate at the University of Amsterdam.
We center our discussion around the ConvDR paper: "Few-Shot Conversational Dense Retrieval" by Shi Yu et al. which was the first work to perform Conversational Search without an explicit conversation to query rewriting step.
Timestamps:
00:00 Introduction
00:50 Conversational AI and Conversational Search
05:40 What makes Conversational Search challenging
07:00 ConvDR paper introduction
10:10 Passage representations
11:30 Conversation representations: query rewriting
19:12 ConvDR novel proposed method: teacher-student setup with ANCE
22:50 Datasets and benchmarks: CAsT, CANARD
25:32 Teacher-student advantages and knowledge distillation vs. ranking loss functions
28:09 TREC CAsT and OR-QuAC
35:50 Metrics: MRR, NDCG, holes@10
44:16 Main Results on CAsT and OR-QuAC (Table 2)
57:35 Ablations on combinations of loss functions (Table 4)
1:00:10 How fast is ConvDR? (Table 3)
1:02:40 Qualitative analysis on ConvDR embeddings (Figure 4)
1:04:50 How has this work aged? More recent works in similar directions: Contextualized Quesy Embeddings for Conversational Search.
1:07:02 Is "end-to-end" the silver-bullet for Conversational Search?
1:10:04 Will conversational search become more mainstream?
1:18:44 Latest initiatives for Conversational Search
21 episoder
Manage episode 355037187 series 3446693
We discuss Conversational Search with our usual cohosts Andrew Yates and Sergi Castella i Sapé; along with a special guest Antonios Minas Krasakis, PhD candidate at the University of Amsterdam.
We center our discussion around the ConvDR paper: "Few-Shot Conversational Dense Retrieval" by Shi Yu et al. which was the first work to perform Conversational Search without an explicit conversation to query rewriting step.
Timestamps:
00:00 Introduction
00:50 Conversational AI and Conversational Search
05:40 What makes Conversational Search challenging
07:00 ConvDR paper introduction
10:10 Passage representations
11:30 Conversation representations: query rewriting
19:12 ConvDR novel proposed method: teacher-student setup with ANCE
22:50 Datasets and benchmarks: CAsT, CANARD
25:32 Teacher-student advantages and knowledge distillation vs. ranking loss functions
28:09 TREC CAsT and OR-QuAC
35:50 Metrics: MRR, NDCG, holes@10
44:16 Main Results on CAsT and OR-QuAC (Table 2)
57:35 Ablations on combinations of loss functions (Table 4)
1:00:10 How fast is ConvDR? (Table 3)
1:02:40 Qualitative analysis on ConvDR embeddings (Figure 4)
1:04:50 How has this work aged? More recent works in similar directions: Contextualized Quesy Embeddings for Conversational Search.
1:07:02 Is "end-to-end" the silver-bullet for Conversational Search?
1:10:04 Will conversational search become more mainstream?
1:18:44 Latest initiatives for Conversational Search
21 episoder
همه قسمت ها
×Velkommen til Player FM!
Player FM scanner netter for høykvalitets podcaster som du kan nyte nå. Det er den beste podcastappen og fungerer på Android, iPhone og internett. Registrer deg for å synkronisere abonnement på flere enheter.