Sentiment and Semantic Analysis and Urban Quality Inference using Machine Learning Algorithms
Abstract
Qualitative interviews are conducted by researchers to gain a deeper understanding
of people’s opinions and perceptions about a specific topic. The analysis of such
textual data is an iterative process and often time-consuming. To help researchers
obtain an overview of the data and improve their coding process, the objective of
this thesis was to investigate how state-of-art techniques can be used to classify sentiment
and semantic orientation from qualitative interviews transcribed in Swedish.
The results demonstrate that the implemented deep learning techniques, BERT and
NER, are a possible and promising solution to achieve the stated goal. For the
sentiment analysis, the Swedish BERT model KB-BERT was used to perform a
multi-class classification task on a text sentence level into the three different classes:
positive, negative, and neutral. For the semantic analysis, NER and String Search
were used to perform multi-label classification to match domain-related topics to
the sentence. The models were trained and/or evaluated on partially annotated
datasets. Nevertheless, an important factor to consider is that these deep learning
models are heavily data-driven and would need accurately annotated domain-specific
data to reveal their full potential.
Degree
Student essay
Collections
View/ Open
Date
2022-10-14Author
Ho, Emily
Schneider, Michelle
Keywords
Natural Language Processing
Machine Learning
Deep Neural Networks
Transformers
BERT
NER
Text Classification
Urban Planning
Qualitative Research
Interviews
Language
eng