BUIR logo
Communities & Collections
All of BUIR
  • English
  • Türkçe
Log In
Please note that log in via username/password is only available to Repository staff.
Have you forgotten your password?
  1. Home
  2. Browse by Subject

Browsing by Subject "Text analysis"

Filter results by typing the first few letters
Now showing 1 - 2 of 2
  • Results Per Page
  • Sort Options
  • Loading...
    Thumbnail Image
    ItemOpen Access
    Modeling speech transcriptions for automatic assessment of depression severity
    (2022-09) Kaynak, Ergün Batuhan
    It is true that everyone has bad days from time to time. Unfortunately, for peo-ple suffering from depression, every day is a constant battle for motivation to do even the simplest of things, all the while dealing with hopelessness, physical and emotional fatigue, and sadness. Considering the ever-increasing number of people suffering from this disease, the necessity for automated depression severity assess-ment systems is profound. These systems can be used in treatment procedures, and the findings provided from learned models can help us better understand the dynamics of depression. To help in the solution to this illness, we propose a modular deep learning pipeline that uses speech transcripts as input for depression severity prediction. Through our pipeline, we investigate the role of popular deep learning archi-tectures in creating representations for depression assessment. To extend the depression assessment literature on text modality, we provide a thorough anal-ysis of sentence statistics and their effects on model training. We also present an investigation regarding the use of sentiment information for depression assess-ment. Evaluation of the proposed architectures is performed on the publicly available Extended Distress Analysis Interview Corpus dataset (E-DAIC). Through the results and discussions, we show that informative representations for depression assessment can be obtained without exploiting the temporal dynamics between sentences. Our proposed non-temporal model outperforms the state of the art by %8.8 in terms of Concordance Correlation Coefficient (CCC). In light of our findings on trained models and data statistics, we discuss how recurrent structures can have a bias toward certain sequence lengths during training and that shorter sentences can be more informative during inference. Our experimental results suggest that relying on semantic information rather than sentiment information, contrary to previous literature, may be more reliable for depression assessment.
  • Loading...
    Thumbnail Image
    ItemOpen Access
    Systematic analysis of speech transcription modeling for reliable assessment of depression severity
    (Sakarya University, 2024-04-27) Kaynak, Ergün Batuhan; Dibeklioğlu, Hamdi
    In evaluating the severity of depression, we rigorously investigate a segmented deep learning framework that employs speech transcriptions for predicting levels of depression. Within this framework, we examine the effectiveness of well-known deep learning models for generating useful features for gauging depression. We validate the chosen models using the openly accessible Extended Distress Analysis Interview Corpus (EDAIC) as a dataset. Through our findings and analytical commentary, we demonstrate that valuable features for depression severity estimation can be achieved without leveraging the sequential relationships among textual descriptors. Specifically, temporal aggregation of latent representations surpasses the current best performing methods that utilize recurrent models, exhibiting an 8.8% improvement in Concordance Correlation Coefficient (CCC).

About the University

  • Academics
  • Research
  • Library
  • Students
  • Stars
  • Moodle
  • WebMail

Using the Library

  • Collections overview
  • Borrow, renew, return
  • Connect from off campus
  • Interlibrary loan
  • Hours
  • Plan
  • Intranet (Staff Only)

Research Tools

  • EndNote
  • Grammarly
  • iThenticate
  • Mango Languages
  • Mendeley
  • Turnitin
  • Show more ..

Contact

  • Bilkent University
  • Main Campus Library
  • Phone: +90(312) 290-1298
  • Email: dspace@bilkent.edu.tr

Bilkent University Library © 2015-2025 BUIR

  • Privacy policy
  • Send Feedback