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Senast inlagda
Statistical Inference with Auxiliary Information under Block-Structured Missing Data
(2026) Holmberg, Linnéa
In medical research, a common challenge is missing data. Missing data can lead to biased
findings and loss of precision if not handled appropriately. Common methods of
handling missing data are complete-case analysis (CCA), multiple imputation (MI), or
inverse probability weighting (IPW), but these methods have drawbacks. This thesis
aims to compare these methods to the method augmented inverse probability of completecase
weighting (AIPCCW), that is less established but with certain desirable theoretical
properties. AIPCCW is an extension of inverse probability of complete-case weighting
(IPCCW), and utilises information from both participants with fully observed data and
participants with partly observed data. AIPCCW utilises two models, one for the outcome
and one for missingness, where only one model is required to be correctly specified
for AIPCCW to achieve unbiased inference.
This thesis implement and compare AIPCCW, CCA, MI, and IPCCW in different
scenarios through a simulation study and a application study on real-world data. The
scenarios cover unique combinations of sample size, proportion of missing data, levels
of correlation between variables with missing values and with an auxiliary variable, and
different missingness mechanisms.
In our experiments, the AIPCCW method demonstrate a performance in bias and
eRMSE statistically significantly better than CCA, MI, and IPCCW, in certain scenarios,
especially in simulated scenarios with a large proportion of missing data. AIPCCW is
found to significantly improve in scenarios with a higher correlation between the variable
with missing values and the auxiliary variable. On the other hand, the performance of
AIPCCW is found to not outperform CCA, MI, and IPCCW in a majority of the scenarios
that were implemented. AIPCCW performed comparable to CCA and IPCCW on realworld
data in this study, but AIPCCW could potentially perform better on real-world data
if a stronger correlation between the variable with missing data and the auxiliary variable
existed. Owing to these results, the evaluation is inconclusive to whether AIPCCW is
significantly better than CCA, MI, and IPCCW. This thesis concludes that AIPCCW is
a stable method, but does not necessarily recommend it over more common methods.
However, further research is needed.
AI Assisted matching in Mergers And Acquisitions
(2026) JOHNSON SWEGMARK, WILHELM; TVEDT, DIDRIK
Traditional buyer identification in M&A relies on manual screening and professional
networks, making it resource-intensive and naturally limiting the buyer pool. This
thesis investigates whether textual embedding models can support the identification
of relevant potential buyers in mergers and acquisitions. The study examines how
different representation methods, including TF-IDF, Doc2Vec with smooth inverse
frequency weighting, and Transformer based models, capture similarity between
companies when applied to standardized summaries of portfolio company descriptions.
The summaries are created using a large language model with information
provided on the portfolio companies websites. The performance of the embedding
models is evaluated through visualization of the embedding spaces, cosine similarity
search experiments, and an expert review of buyer recommendations. The
results indicate that TF-IDF and the Transformer model produced relevant recommendations,
with the Transformer model demonstrating the best performance in
embedding space separation and alignment with expert judgment, while Doc2Vec
models showed weaker differentiation between company types. Overall, the study
shows that embedding based similarity search can serve as a useful first step in buyer
discovery by expanding the range of potential buyers considered and improving efficiency.
The work also highlights that further validation across a larger set of targets
and with a more complete dataset would strengthen confidence in these results.
Navigation and Localization for Railway Inspection Drone in GPS-denied Environments: An Investigative Study of Modular SLAM Baselines and End-to-End Learning-based Approaches
(2026) Wang, Guanfei
Autonomous navigation in GPS-denied environments remains a critical challenge
for unmanned aerial vehicles performing infrastructure inspection. This thesis investigates
the feasibility of learning-based navigation for railway-inspection drones
by first constructing and analyzing a state-of-the-art modular baseline and then
evaluating emerging end-to-end paradigms.
A high-performance navigation system combining FasterLIO SLAM with Fast-Planner
trajectory generation is implemented in high-fidelity simulation and used as an
analytical baseline. While the system successfully navigates dense forest environments,
controlled experiments reveal three structural failure modes—SLAM localization
drift, flight-controller tracking limitations, and planner-induced trajectory
constraints—highlighting deeper challenges such as cumulative error propagation
and real-time sensor–compute bottlenecks.
Building on these insights, the thesis conducts an experimentally grounded feasibility
study of three dominant end-to-end learning directions: predictive worldmodel
architectures, self-supervised representation learning pipelines, and visionreinforcement-
learning approaches. By implementing prototype models and stresstesting
their stability and data requirements, the study identifies several infeasible
or unstable directions—such as feature-forecasting models and self-distillation objectives—
and reveals simulator limitations that currently block scalable vision-RL
for UAVs.
Rather than delivering a complete end-to-end navigation system, this work provides
a systematic evaluation of the landscape, clarifies the fundamental obstacles facing
learning-based navigation in GPS-denied environments, and establishes concrete
design requirements and a research roadmap for future PhD-level research.
Adaptive Cabin Climate Control for Battery Electric Vehicles Using TD3 Reinforcement Learning
(2025) ABUKAR, ABUBAKAR
The transition from combustion engine vehicles to Battery Electric Vehicles (BEVs) has
increased the importance of efficient thermal management in trucks. Conventional cabin
climate control methods prioritize transparency and safety but lack adaptability, limiting
potential energy savings. This thesis addresses this challenge using the Twin-Delayed
Deep Deterministic Policy Gradient (TD3) combined with a novel surrogate model, the
Twin Fourier Neural Operator (Twin FNO), designed to capture cabin thermodynamics
through partially enforced physics and dual output heads for improved accuracy. The
Twin FNO predicts average cabin temperature with a mean absolute error of 0.55 °C
while being 180 times faster than numerical solvers. Integrated into the TD3 framework,
the agent effectively balances energy efficiency and thermal comfort. It maintains
the setpoint temperature when energy is abundant and deliberately creates an offset
when energy is limited, achieving up to 40% reduction in Heating Ventilation and Air
Conditioning (HVAC) energy consumption with a 6 °C temperature deviation. These
results highlight the potential of reinforcement learning and surrogate modeling to enable
energy-adaptive thermal control strategies in BEVs while raising questions on acceptable
thermal comfort trade-offs.
A study on gap acceptance in roundabouts in Sweden
(2025) Hansson, Victor
Traffic levels and congestion is rising both globally and in Sweden and is causing issues
related to time loss, health problems and pollution. Traffic analysis software is a powerful tool
to help planning and optimization of the road network to tackle these issues and the accuracy
of their predictions is of a vital importance.
This thesis aims to examine the use of a new method to collect data regarding gap acceptance
parameters. The method consisted of recording video footage of three different roundabouts in
the Greater Gothenburg area and implementing the AI-based video analysis software
GoodVision to extract data from the recordings to then analyze the gap acceptance
parameters.
Raff’s method was used to calculate critical gap values at all roundabouts at 3.68 seconds,
3.81 seconds and 3.86 seconds respectively. Making up a combined critical gap value of 3.73
seconds. Comparative analysis was performed by using the traffic analysis software SIDRA
Intersection and measuring the results of using the critical gap value based on the data
collected at the location and the standardized critical gap value in the program. The results
showed substantial differences, one scenario displayed an increased capacity reaching up to
25% when using critical gap values calculated from local data. Differences in results of this
magnitude greatly affects the decision making in traffic planning and could ultimately be the
difference maker between investing in new infrastructure or not.
Parameters affecting why a gap is accepted or rejected were analyzed by implementing
machine learning classification algorithms. The results showed that the individual driving
behavior of each driver had a higher impact on the decision of accepting or rejecting a gap
than roundabout geometry or vehicle type in this thesis.
