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DEI - FCTUC
Gerado a 2024-07-17 12:37:21 (Europe/Lisbon).
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Titulo Estágio

Feature Engineering and Learning for Emotion-based Classification of Song Lyrics

Local do Estágio

DEI-FCTUC

Enquadramento

in the world economy. In 2017, digital music revenues rose to US$7.8 billion, accounting for 50% of the global music revenues, while the global recorded music market grew by 5.9%.

It is expected that the amount of digital music continues to explode. Digital music repositories need, then, more advanced, flexible and user-friendly search mechanisms, adapted to the requirements of individual users. This has led to an increased awareness to the Music Information Retrieval (MIR) area. Several companies, e.g., Google, Pandora, Spotify, Apple, Sony or Philips, have set up MIR research agendas, with commercial applications already in place.

Within MIR, Music Emotion Recognition (MER) emerged as a significant sub-field. In fact, “music’s preeminent functions are social and psychological”, and so “the most useful retrieval indexes are those that facilitate searching in conformity with such social and psychological functions. Typically, such indexes will focus on stylistic, mood, and similarity information”.
Besides the music industry, the range of applications of MER is wide and varied, e.g., game development, cinema, advertising or health (e.g., music therapy).
MER research promises significant social, economic and cultural repercussions, as well as substantial scientific impact. There are presently several open and complex research problems in this multidisciplinary field, touching fields such as audio signal processing, natural language processing (NLP), feature engineering and machine learning.

Current MER solutions, either in the audio or lyrics domain, are still unable to accurately solve fundamental problems, such as classification of static samples (i.e., samples with uniform emotion) with a single label, in few emotion classes (e.g., four to five). This is supported by both existing studies and the small improvements in the Music Information Retrieval Evaluation eXchange (MIREX) Audio Mood Classification (AMC) task (www.music-ir.org/mirex/), where results stabilized at around 69% accuracy for several years.

Objetivo

The objectives to be achieved in this project are the following:

1. Research and development of NLP and feature engineering approaches for static Lyrics-based MER (LMER)
2. Research and development of deep learning (DL) approaches for static LMER

Plano de Trabalhos - Semestre 1

1. State-of-the-art review: MER, NLP and feature engineering, deep learning for text in general and LMER in particular
2. Evaluation of the current algorithms (based on classical Natural Language Processing techniques and machine learning) on the novel datasets developed within the research group
3. Research and development of NLP and feature engineering approaches for static MER (namely, semantic, structural and stylistic features)
4. Writing of the Intermediate Report

Plano de Trabalhos - Semestre 2

5. Research and development of deep learning (DL) approaches for LMER (e.g., via CNNs, transfer learning, etc.)
6. Critical evaluation of the developed DL models
7. Writing of a scientific paper and thesis

Condições

Possibility of scholarship in the second semester (6 months, 930.98 EUR/month). At this moment, this is a likely possibility, but that still needs to be confirmed.

Orientador

Rui Pedro Paiva, Ricardo Malheiro e Renato Panda
ruipedro@dei.uc.pt 📩