184 research outputs found
Personalizing Session-based Recommendations with Hierarchical Recurrent Neural Networks
Session-based recommendations are highly relevant in many modern on-line
services (e.g. e-commerce, video streaming) and recommendation settings.
Recently, Recurrent Neural Networks have been shown to perform very well in
session-based settings. While in many session-based recommendation domains user
identifiers are hard to come by, there are also domains in which user profiles
are readily available. We propose a seamless way to personalize RNN models with
cross-session information transfer and devise a Hierarchical RNN model that
relays end evolves latent hidden states of the RNNs across user sessions.
Results on two industry datasets show large improvements over the session-only
RNNs
Improving Background Based Conversation with Context-aware Knowledge Pre-selection
Background Based Conversations (BBCs) have been developed to make dialogue
systems generate more informative and natural responses by leveraging
background knowledge. Existing methods for BBCs can be grouped into two
categories: extraction-based methods and generation-based methods. The former
extract spans frombackground material as responses that are not necessarily
natural. The latter generate responses thatare natural but not necessarily
effective in leveraging background knowledge. In this paper, we focus on
generation-based methods and propose a model, namely Context-aware Knowledge
Pre-selection (CaKe), which introduces a pre-selection process that uses
dynamic bi-directional attention to improve knowledge selection by using the
utterance history context as prior information to select the most relevant
background material. Experimental results show that our model is superior to
current state-of-the-art baselines, indicating that it benefits from the
pre-selection process, thus improving in-formativeness and fluency.Comment: SCAI 2019 workshop pape
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