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Friday, July 18
 

10:15 CEST

11:00 CEST

11:45 CEST

15:00 CEST

15:45 CEST

LECTURE - How Psychodynamics should shape Politics towards a Society of the Future
Friday July 18, 2025 15:45 - 16:30 CEST
In essence, politicians are employees of the citizens who have to pay for their services and in democracies are enabled to elect them in elections. This is why politicians should keep an eye on the well-being of their employers.
The identification of essential human psychological needs makes it possible to define the desirable core goals of politics. These include human relationships, active conduct, sense of coherence, and healthy stress levels. A political system should guarantee its people freedom and support in these four basic needs.
In addition, understanding psychodynamics makes it possible to prevent spirals of regression, which tend to lead to violence and catastrophe, in times of heightened stress in society.
Education in basic psychodynamics on all levels of society is required to enable progress towards a world of psychologically mature, responsive, and self-determined citizens.
Speakers
avatar for Hans-Otto Thomashoff

Hans-Otto Thomashoff

About the person:Hans-Otto Thomashoff, MD, PhD, lives and works in Vienna as psychiatrist and psychoanalyst (Vienna Psychoanalytic Society). Based on his PhD in art history he specializes in psychodynamic approaches for the understanding of art. He is an honorary member of the World... Read More →
Friday July 18, 2025 15:45 - 16:30 CEST
Lecture Hall 305-306

16:45 CEST

LECTURE - Machine Learning as a Theory Discovery Tool in Psychological Research
Friday July 18, 2025 16:45 - 17:30 CEST
Introduction This research aims to integrate artificial intelligence technology, particularly automated machine learning methods, into psychological research to address the limitations of traditional frequentist statistical approaches in handling nonlinear relationships of psychological characteristics. Current psychological research predominantly relies on regression-based methods, which often fall short in capturing the complex nonlinear relationships between psychological features. We propose an innovative semi-automated workflow that empowers psychology researchers to leverage machine learning algorithms for intelligent model selection, facilitating the construction of more precise and insightful theoretical frameworks.

Methodology We designed a low-code workflow based on AutoGluon, specifically tailored for psychological research methodologies with high accessibility. This approach encompasses three primary research objectives:
1. Automated hyperparameter tuning to attain optimal models.
2. Identification of important features through interpretability techniques, facilitating feature selection based on calculated importance.
3. Theoretical reconstruction based on important features by integrating exploratory factor analysis with machine learning interpretability.
Using psychological resilience research as an example, we provide a detailed annotated code workflow along with raw data to demonstrate the application of this method.

Results The workflow successfully implements automated machine learning model selection and optimization, effectively identifying key features in psychological resilience research. Through interpretability techniques, we quantify the relative importance of different features, providing a data-driven basis for feature selection. Combined with exploratory factor analysis, we reconstruct theoretical frameworks that more accurately reflect the nonlinear relationships among psychological characteristics.

Conclusion The semi-automated workflow proposed in this study provides psychological researchers with a practical tool to better understand nonlinear relationships between psychological characteristics. This low-code approach lowers the barrier for psychological researchers to utilize advanced machine learning techniques, offering new possibilities for data-driven psychological theory construction. Future research can extend this methodology to additional psychological research domains and integrate more types of data, such as text, audio, and images.
Speakers
avatar for Haojie Fu

Haojie Fu

About the person:Haojie Fu is a PhD candidate at the Shanghai Research Institute for Intelligent Autonomous Systems at Tongji University. He holds certification as a Psychological Counselor and has previously worked at the Psychological Education and Counseling Center at Southwest... Read More →
avatar for Xudong Zhao

Xudong Zhao

About the person:Prof. Xudong Zhao has been leading “Chinese-DE Training Program for Psychotherapy”, as the Chinese coordinator, to develop modern psychotherapy successfully in China, for which he and his colleagues won the “International Sigmund Freud Award for Psychotherapy... Read More →
Friday July 18, 2025 16:45 - 17:30 CEST
Lecture Hall 305-306
 

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