1,720,990 research outputs found
Serendipitous mentoring in recommender systems
We are investigating the problem of proposing serendipitous contents in a recommender system environment in order to discover latent interests and increase user satisfaction.
Some results about our first experiments on contents and users clusterization in absence of meta-data will be presented
Handling eclectic tastes in recommender systems : novelty, serendipity and mentors
Recommender systems sometimes fail in recommending the right content to users having eclectic tastes; they can, especially during the first interactions, incur in over-specialization and popularity bias problems. We are investigating on how this problem can be handled and in particular on how to effectively induce novelty and serendipity in recommendations in order to increase user satisfaction
Can a rock song have a jazz audience? : relationship between folksonomy and collaborative filtering in music recommender systems
In this paper we investigate the relationship between a
folksonomy-based music classification and a music classification based on collaborative filtering, i.e. on the users' listening behavior. We found a correlation between folksonomy-based songs clustering and clustering computed using methods based on the audience listening behaviour and, using a combination of the two approaches, we also computed the eclecticism level of a sample set of users, finding that eclecticism seems to be a characteristic which changes according to the genre of music most loved by a user
SERENDIPITOUS MENTORSHIP IN MUSIC RECOMMENDER SYSTEMS
Nowadays the amount of content and products easily available on-line for purchase or fruition is so high that recommender systems represent an important resource for users in order to get suggestions about items (songs, movies, books, news, products in general...) they might like.
For many years, research, in the field of recommender systems focused on improving accuracy, i.e. improving the precision with which the systems predict the rate that a given user would give to a given item.
In the last years, an increasing number of efforts have been directed towards other important aspects such as novelty, diversity and serendipity of recommendations. In particular, with serendipity, in this context, we refer to the ability of a recommender system to propose unexpected and liked recommendations. Serendipity is likely the aspect which has received the least attention and it is the one, in this work, we focus more on.
The aim of this thesis is to propose techniques which can be adopted by recommender system designers in order to increase serendipity while keeping an acceptable level of precision of the recommendations. We work in the domain of music, which presents a particularly suitable context for trying to propose non-obvious recommendations, mainly due to the lower cost, respect to other domains, of “bad” recommendations (listening to a song a user dislikes is not much time consuming).
The work proposes a collaborative-filtering method to classify artists, based on the Affinity Propagation clustering algorithm and on listening logs as data source. The classification, together with a list of the artists a user likes, is used to detect which musical clusters (called “musical worlds”) the user is not familiar with. A technique to synthetically represent each cluster, based on freely chosen keywords (folksonomy), is also presented.
A novel recommendation method based on gradual exposure and on a variation of the user-based collaborative filtering approach is proposed. The said method exploits the knowledge of the most eclectic users (we decided to call them “mentors”) to choose, from the unfamiliar musical clusters, the ones which are more likely to contain serendipitous music for the active user.
Once a target musical cluster has been chosen, a playlist is created, which starts with songs by artists who tend to be borderline in respect to the user's taste and continues with songs by artists who tend to be, gradually, closer to the most representative artist of the target cluster.
A real music recommendation radio has been developed, implementing the techniques proposed and a traditional top-10 item-based recommender. The radio has been used as a validation test, considering the traditional recommender as a baseline to define which recommendations were expected and which ones were unexpected. The test session suggested that the proposed approach overcomes a method which relies on randomness in terms of a novel measure, called “serendipity cost” (measured as the total number of disliked songs over total number of serendipitous songs) and in term of cohesion, maintaining a “total cost” (measured as the total number of disliked songs over total number of liked songs, which can be considered an index of precision) which is much lower than the cost related to the random approach and closer to the cost of a traditional item-based recommender systems (1.03 for the method proposed, 0.46 for the traditional recommender, 2.77 for the random).
The method we proposed in order to choose and order the intermediate artists in a playlist, based on graph search techniques, is used to gradually expose the user to the target musical world, following the intuition that showing a connection between the target musical world and the music the user is closer to can help him to accept the (unexpected) recommendation. This method, however, can itself be considered an achievement of this work and applied not only in this context but anytime the automatic production of a playlist, having in input the first artist, the last artist and a cohesion (distance in a playlist between an artist and the following one *) constraint, is needed.
* Note that cohesion in literature is usually defined as the average distance in a playlist between a song and the following one so in this sentence the term is used in a broader sense
Going Beyond Counting First Authors in Author Co-citation Analysis
The present study examines one of the fundamental aspects of author co-citation analysis (ACA) - the way co-citation
counts are defined. Co-citation counting provides the data on which all subsequent statistical analyses and mappings
are based, and we compare ACA results based on two different types of co-citation counting - the traditional type that
only counts the first one among a cited work's authors on the one hand and a non-traditional type that takes into
account the first 5 authors of a cited work on the other hand. Results indicate that the picture produced through this non-traditional author co-citation counting contains more coherent author groups and is therefore considerably clearer. However, this picture represents fewer specialties in the research field being studied than that produced through the traditional first-author co-citation counting when the same number of top-ranked authors is selected and analyzed. Reasons for these effects are discussed
What is a "Musical World"? An affinity propagation approach
This work proposes a method based on the affinity propagation clustering technique to classify artists and find representative artists for each musical category ("musical world") using only the listening history log of a music service.
Two variants of the proposed method are compared with a classic k-means clustering approach and an evaluation based on folksonomy analysis is provided. The results suggest that affinity propagation is highly effective in the music domain, allowing for better classification of artists than classic clustering techniques.
Furthermore, an analysis of the results indicates that classifying music by genres, even using more than one genre for each artist, is sometimes an oversimplification of the dynamics that govern the music ecosystem. While most of the clusters found have a strict relationship with a music genre, the characterization of some of the emerged "musical worlds" is related to other aspects like the geographic origin of the artists, the prominent themes in the lyrics, the evocative potential and the association with a culture/lifestyle or the context in which the music has been used
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