Discovering Personalized Semantics for Soft Attributes in Recommender
Systems using Concept Activation Vectors
- URL: http://arxiv.org/abs/2202.02830v3
- Date: Sat, 3 Jun 2023 00:05:28 GMT
- Title: Discovering Personalized Semantics for Soft Attributes in Recommender
Systems using Concept Activation Vectors
- Authors: Christina G\"opfert and Alex Haig and Yinlam Chow and Chih-wei Hsu and
Ivan Vendrov and Tyler Lu and Deepak Ramachandran and Hubert Pham and
Mohammad Ghavamzadeh and Craig Boutilier
- Abstract summary: Interactive recommender systems allow users to express intent, preferences, constraints, and contexts in a richer fashion.
One challenge is inferring a user's semantic intent from the open-ended terms or attributes often used to describe a desired item.
We develop a framework to learn a representation that captures the semantics of such attributes and connects them to user preferences and behaviors in recommender systems.
- Score: 34.56323846959459
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Interactive recommender systems have emerged as a promising paradigm to
overcome the limitations of the primitive user feedback used by traditional
recommender systems (e.g., clicks, item consumption, ratings). They allow users
to express intent, preferences, constraints, and contexts in a richer fashion,
often using natural language (including faceted search and dialogue). Yet more
research is needed to find the most effective ways to use this feedback. One
challenge is inferring a user's semantic intent from the open-ended terms or
attributes often used to describe a desired item, and using it to refine
recommendation results. Leveraging concept activation vectors (CAVs) [26], a
recently developed approach for model interpretability in machine learning, we
develop a framework to learn a representation that captures the semantics of
such attributes and connects them to user preferences and behaviors in
recommender systems. One novel feature of our approach is its ability to
distinguish objective and subjective attributes (both subjectivity of degree
and of sense), and associate different senses of subjective attributes with
different users. We demonstrate on both synthetic and real-world data sets that
our CAV representation not only accurately interprets users' subjective
semantics, but can also be used to improve recommendations through interactive
item critiquing.
Related papers
- Towards Empathetic Conversational Recommender Systems [77.53167131692]
We propose an empathetic conversational recommender (ECR) framework.
ECR contains two main modules: emotion-aware item recommendation and emotion-aligned response generation.
Our experiments on the ReDial dataset validate the efficacy of our framework in enhancing recommendation accuracy and improving user satisfaction.
arXiv Detail & Related papers (2024-08-30T15:43:07Z) - RecExplainer: Aligning Large Language Models for Explaining Recommendation Models [50.74181089742969]
Large language models (LLMs) have demonstrated remarkable intelligence in understanding, reasoning, and instruction following.
This paper presents the initial exploration of using LLMs as surrogate models to explain black-box recommender models.
To facilitate an effective alignment, we introduce three methods: behavior alignment, intention alignment, and hybrid alignment.
arXiv Detail & Related papers (2023-11-18T03:05:43Z) - Preference Elicitation with Soft Attributes in Interactive
Recommendation [39.74528988497788]
We develop novel preference elicitation methods that can accommodate soft attributes and bring together item and attribute-based preference elicitation.
Our techniques query users using both items and soft attributes to update the recommender system's belief about their preferences to improve recommendation quality.
arXiv Detail & Related papers (2023-10-22T17:23:20Z) - Reformulating Sequential Recommendation: Learning Dynamic User Interest with Content-enriched Language Modeling [18.297332953450514]
We propose LANCER, which leverages the semantic understanding capabilities of pre-trained language models to generate personalized recommendations.
Our approach bridges the gap between language models and recommender systems, resulting in more human-like recommendations.
arXiv Detail & Related papers (2023-09-19T08:54:47Z) - Knowledge-grounded Natural Language Recommendation Explanation [11.58207109487333]
We propose a knowledge graph (KG) approach to natural language explainable recommendation.
Our approach draws on user-item features through a novel collaborative filtering-based KG representation.
Experimental results show that our approach consistently outperforms previous state-of-the-art models on natural language explainable recommendation.
arXiv Detail & Related papers (2023-08-30T07:36:12Z) - Explainable Recommender with Geometric Information Bottleneck [25.703872435370585]
We propose to incorporate a geometric prior learnt from user-item interactions into a variational network.
Latent factors from an individual user-item pair can be used for both recommendation and explanation generation.
Experimental results on three e-commerce datasets show that our model significantly improves the interpretability of a variational recommender.
arXiv Detail & Related papers (2023-05-09T10:38:36Z) - Latent User Intent Modeling for Sequential Recommenders [92.66888409973495]
Sequential recommender models learn to predict the next items a user is likely to interact with based on his/her interaction history on the platform.
Most sequential recommenders however lack a higher-level understanding of user intents, which often drive user behaviors online.
Intent modeling is thus critical for understanding users and optimizing long-term user experience.
arXiv Detail & Related papers (2022-11-17T19:00:24Z) - Improving Conversational Recommender Systems via Knowledge Graph based
Semantic Fusion [77.21442487537139]
Conversational recommender systems (CRS) aim to recommend high-quality items to users through interactive conversations.
First, the conversation data itself lacks of sufficient contextual information for accurately understanding users' preference.
Second, there is a semantic gap between natural language expression and item-level user preference.
arXiv Detail & Related papers (2020-07-08T11:14:23Z) - Feature Interaction Interpretability: A Case for Explaining
Ad-Recommendation Systems via Neural Interaction Detection [14.37985060340549]
We propose a method to both interpret and augment the predictions of black-box recommender systems.
By not assuming the structure of the recommender system, our approach can be used in general settings.
arXiv Detail & Related papers (2020-06-19T05:14:34Z) - Seamlessly Unifying Attributes and Items: Conversational Recommendation
for Cold-Start Users [111.28351584726092]
We consider the conversational recommendation for cold-start users, where a system can both ask the attributes from and recommend items to a user interactively.
Our Conversational Thompson Sampling (ConTS) model holistically solves all questions in conversational recommendation by choosing the arm with the maximal reward to play.
arXiv Detail & Related papers (2020-05-23T08:56:37Z) - Reward Constrained Interactive Recommendation with Natural Language
Feedback [158.8095688415973]
We propose a novel constraint-augmented reinforcement learning (RL) framework to efficiently incorporate user preferences over time.
Specifically, we leverage a discriminator to detect recommendations violating user historical preference.
Our proposed framework is general and is further extended to the task of constrained text generation.
arXiv Detail & Related papers (2020-05-04T16:23:34Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.