The conversational recommender systems (CRSs) have received extensive attention in recent years. However, most of the existing works focus on various deep learning models, which are largely limited by the requirement of large-scale human-annotated datasets. Such methods are not able to deal with the cold-start scenarios in industrial products. To alleviate the problem, we propose FORCE, a Framework Of Rule-based Conversational rEcommender system that helps developers to quickly build CRS bots by simple configuration. We conduct experiments on two datasets in different languages and domains to verify its effectiveness and usability
In this paper, we propose a framework based on Hierarchical Reinforcement Learning for dialogue mana...
Recently, there has been extensive interest in developing intelligent human-centered AI (artificial ...
Conversational Recommender Systems (CoRSs) implement a paradigm in which users can interact with the...
Dialogue system has been an active research field for decades and is developing fast in recent years...
CRS strives to return the most relevant recommendations to users through a multi-turn interactive co...
Conversational Recommender Systems assist online users in their information-seeking and decision mak...
Conversational Recommender Systems (CoRSs) implement a paradigm where users can interact with the sy...
The conversational recommender system (CRS) aims to provide high-quality recommendations through int...
In the last few years, a renewed interest of the research community in conversational recommender sy...
Chat-based recommender systems are getting more and more attention in recent time given their natura...
Conversational Recommender System (CRS), which aims to recommend high-quality items to users through...
The purpose of a Conversational Recommender System is to help the users achieve their recommendation...
This paper considers unifying research on conversational user interfaces and recommender systems. St...
Conversational recommendation system (CRS) is emerging as a user-friendly way to capture users' dyna...
In this paper, we propose a framework based on Hierarchical Reinforcement Learning for dialogue mana...
In this paper, we propose a framework based on Hierarchical Reinforcement Learning for dialogue mana...
Recently, there has been extensive interest in developing intelligent human-centered AI (artificial ...
Conversational Recommender Systems (CoRSs) implement a paradigm in which users can interact with the...
Dialogue system has been an active research field for decades and is developing fast in recent years...
CRS strives to return the most relevant recommendations to users through a multi-turn interactive co...
Conversational Recommender Systems assist online users in their information-seeking and decision mak...
Conversational Recommender Systems (CoRSs) implement a paradigm where users can interact with the sy...
The conversational recommender system (CRS) aims to provide high-quality recommendations through int...
In the last few years, a renewed interest of the research community in conversational recommender sy...
Chat-based recommender systems are getting more and more attention in recent time given their natura...
Conversational Recommender System (CRS), which aims to recommend high-quality items to users through...
The purpose of a Conversational Recommender System is to help the users achieve their recommendation...
This paper considers unifying research on conversational user interfaces and recommender systems. St...
Conversational recommendation system (CRS) is emerging as a user-friendly way to capture users' dyna...
In this paper, we propose a framework based on Hierarchical Reinforcement Learning for dialogue mana...
In this paper, we propose a framework based on Hierarchical Reinforcement Learning for dialogue mana...
Recently, there has been extensive interest in developing intelligent human-centered AI (artificial ...
Conversational Recommender Systems (CoRSs) implement a paradigm in which users can interact with the...