Confirmatory Factor Analysis (CFA): Tests whether a data set fits a hypothesized factor structure.
12. Multivariate Analysis 🌐
Multivariate Analysis of Variance (MANOVA): Extends ANOVA to include multiple dependent variables.
Canonical Correlation Analysis: Examines relationships between two sets of variables.
Principal Component Analysis (PCA): Reduces data dimensions, useful for dealing with complex, multi-dimensional data.
13. Time Series Analysis ⏰
Autocorrelation: Examines the relationship between observations in a time series separated by different time lags.
Moving Averages: Used to smooth out data and observe trends over time.
ARIMA Models: Advanced techniques for forecasting and analyzing patterns in time-series data.
14. Structural Equation Modeling (SEM) 📐
Path Analysis: Visualizes and tests relationships among variables.
Latent Variables: Used in SEM to model abstract constructs that aren’t directly measurable.
Model Fit Indicators: Ensures the SEM model accurately represents the data (e.g., RMSEA, CFI, TLI).
15. Statistical Software Skills 💻
SPSS, R, Python: These programs are essential for data analysis. Knowing how to use them for different statistical tests and data visualizations is key in psychology.
12. Multivariate Analysis 🌐
Multivariate Analysis of Variance (MANOVA): Extends ANOVA to include multiple dependent variables.
Canonical Correlation Analysis: Examines relationships between two sets of variables.
Principal Component Analysis (PCA): Reduces data dimensions, useful for dealing with complex, multi-dimensional data.
13. Time Series Analysis ⏰
Autocorrelation: Examines the relationship between observations in a time series separated by different time lags.
Moving Averages: Used to smooth out data and observe trends over time.
ARIMA Models: Advanced techniques for forecasting and analyzing patterns in time-series data.
14. Structural Equation Modeling (SEM) 📐
Path Analysis: Visualizes and tests relationships among variables.
Latent Variables: Used in SEM to model abstract constructs that aren’t directly measurable.
Model Fit Indicators: Ensures the SEM model accurately represents the data (e.g., RMSEA, CFI, TLI).
15. Statistical Software Skills 💻
SPSS, R, Python: These programs are essential for data analysis. Knowing how to use them for different statistical tests and data visualizations is key in psychology.
Understanding Descriptive Statistics: Summarizing Data in Psychology
In psychology and research, descriptive statistics serve as a cornerstone, helping us summarize and make sense of complex datasets. When we gather data, we need a structured way to describe, analyze, and interpret it, especially with psychology experiments where we often collect large amounts of information on behavior, emotions, or cognitive patterns. This is where descriptive statistics come in!
Descriptive statistics are numerical or graphical methods used to summarize and organize the characteristics of a data set. They help us understand the "big picture" by providing insights into the data without diving into complex statistical testing.
Think of descriptive stats as tools that help us answer the basic questions about our data, like:
What is the average score?
What’s the spread of scores?
Are there any common trends or outliers?
Descriptive statistics fall into three main categories: measures of central tendency, measures of variability, and measures of distribution shape.
1. Measures of Central Tendency
Central tendency measures show where the data "centers." In psychology, central tendency can tell us where the "typical" response lies, which is crucial for understanding general trends.
Mean: This is the average of all values in a dataset. The mean is commonly used but can be affected by extreme values (outliers).
Median: The middle value when data is ordered. It’s less sensitive to outliers and can provide a better sense of the "center" for skewed distributions.
Mode: The most frequently occurring value in a dataset. It’s useful for categorical data or to identify the most common response in surveys.
Example: If we measure stress levels among students, the mean stress score might help show overall stress trends, while the median can offer a clearer picture if a few extreme scores skew the data.
2. Measures of Variability (Dispersion)
Variability measures tell us how spread out the data is. In psychology, understanding variability is crucial since individuals can differ widely, even within the same group.
Range: The difference between the highest and lowest scores. The range is simple but doesn’t account for how the scores are distributed between these extremes.
Variance: This indicates the average squared deviation from the mean, giving insight into data dispersion.
Standard Deviation (SD): The square root of the variance. SD is widely used in psychology because it shows how much scores deviate from the mean in the original units of data, making it more interpretable than variance.
Example: Knowing the standard deviation of anxiety scores in a sample can help determine if most participants feel similarly anxious or if anxiety levels vary greatly.
3. Measures of Distribution Shape
These statistics describe the shape of the data distribution, indicating how scores cluster around the mean and if there are any biases or patterns.
Skewness: Shows if the data is symmetrically distributed around the mean. Positive skewness indicates a tail on the right (more low scores), while negative skewness shows a tail on the left (more high scores).
Kurtosis: Describes the "peakedness" of the data. High kurtosis indicates a sharp peak (less variation in the center), while low kurtosis shows a flatter distribution (more spread-out scores).
Example: If a study finds positive skewness in self-esteem scores, this might indicate that most participants scored low in self-esteem, with only a few scoring very high.
Descriptive vs. Inferential Statistics
While descriptive statistics help summarize the sample data, inferential statistics use this data to make generalizations about a larger population. For example, if a descriptive analysis shows that a sample of college students has high stress levels, inferential stats could test if this finding applies to the broader student population.
In psychology and research, descriptive statistics serve as a cornerstone, helping us summarize and make sense of complex datasets. When we gather data, we need a structured way to describe, analyze, and interpret it, especially with psychology experiments where we often collect large amounts of information on behavior, emotions, or cognitive patterns. This is where descriptive statistics come in!
What are Descriptive Statistics?
Descriptive statistics are numerical or graphical methods used to summarize and organize the characteristics of a data set. They help us understand the "big picture" by providing insights into the data without diving into complex statistical testing.
Think of descriptive stats as tools that help us answer the basic questions about our data, like:
What is the average score?
What’s the spread of scores?
Are there any common trends or outliers?
Types of Descriptive Statistics
Descriptive statistics fall into three main categories: measures of central tendency, measures of variability, and measures of distribution shape.
1. Measures of Central Tendency
Central tendency measures show where the data "centers." In psychology, central tendency can tell us where the "typical" response lies, which is crucial for understanding general trends.
Mean: This is the average of all values in a dataset. The mean is commonly used but can be affected by extreme values (outliers).
Median: The middle value when data is ordered. It’s less sensitive to outliers and can provide a better sense of the "center" for skewed distributions.
Mode: The most frequently occurring value in a dataset. It’s useful for categorical data or to identify the most common response in surveys.
Example: If we measure stress levels among students, the mean stress score might help show overall stress trends, while the median can offer a clearer picture if a few extreme scores skew the data.
2. Measures of Variability (Dispersion)
Variability measures tell us how spread out the data is. In psychology, understanding variability is crucial since individuals can differ widely, even within the same group.
Range: The difference between the highest and lowest scores. The range is simple but doesn’t account for how the scores are distributed between these extremes.
Variance: This indicates the average squared deviation from the mean, giving insight into data dispersion.
Standard Deviation (SD): The square root of the variance. SD is widely used in psychology because it shows how much scores deviate from the mean in the original units of data, making it more interpretable than variance.
Example: Knowing the standard deviation of anxiety scores in a sample can help determine if most participants feel similarly anxious or if anxiety levels vary greatly.
3. Measures of Distribution Shape
These statistics describe the shape of the data distribution, indicating how scores cluster around the mean and if there are any biases or patterns.
Skewness: Shows if the data is symmetrically distributed around the mean. Positive skewness indicates a tail on the right (more low scores), while negative skewness shows a tail on the left (more high scores).
Kurtosis: Describes the "peakedness" of the data. High kurtosis indicates a sharp peak (less variation in the center), while low kurtosis shows a flatter distribution (more spread-out scores).
Example: If a study finds positive skewness in self-esteem scores, this might indicate that most participants scored low in self-esteem, with only a few scoring very high.
Descriptive vs. Inferential Statistics
While descriptive statistics help summarize the sample data, inferential statistics use this data to make generalizations about a larger population. For example, if a descriptive analysis shows that a sample of college students has high stress levels, inferential stats could test if this finding applies to the broader student population.
Visual Representation
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Descriptive stats are often paired with visuals to make data more interpretable:
Histograms: Display frequency distribution and show the shape of the data.
Boxplots: Show median, quartiles, and potential outliers.
Scatter Plots: Used to observe relationships between two variables.
Bar Graphs: Useful for categorical data comparisons.
Descriptive statistics help psychologists:
1. Summarize complex data: Quickly spot trends, outliers, or patterns.
2. Make informed decisions: Tailor interventions based on observed trends.
3. Communicate findings: Simple summaries are easier to communicate to non-experts, such as clients or policymakers.
Descriptive statistics are powerful tools that bring clarity and order to raw data. They provide essential insights and form the foundation for more complex analyses in psychological research. Mastering these basics equips us to dive deeper into understanding human behavior and mental processes through data.
Stay curious and data-informed!
Histograms: Display frequency distribution and show the shape of the data.
Boxplots: Show median, quartiles, and potential outliers.
Scatter Plots: Used to observe relationships between two variables.
Bar Graphs: Useful for categorical data comparisons.
Why Descriptive Statistics Matter in Psychology
Descriptive statistics help psychologists:
1. Summarize complex data: Quickly spot trends, outliers, or patterns.
2. Make informed decisions: Tailor interventions based on observed trends.
3. Communicate findings: Simple summaries are easier to communicate to non-experts, such as clients or policymakers.
Wrapping Up
Descriptive statistics are powerful tools that bring clarity and order to raw data. They provide essential insights and form the foundation for more complex analyses in psychological research. Mastering these basics equips us to dive deeper into understanding human behavior and mental processes through data.
Stay curious and data-informed!
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Self-analysis is impossible because it remains within the domain of privacy, a domain predominated by narcissistic illusion and imaginary ideals. In our private worlds, we count the value of our conscious intentions far too highly, and we simultaneously fail to grasp our unconscious motivations. We pay attention to our conscious intentions rather than to the signifiers that we employ unconsciously. To psychoanalyze oneself is to fall further into one’s private self-deception.
- Todd McGowan, Driven into the Public: The Psychic Constitution of Space
🔍 Unlocking Inferential Statistics: Your Guide to Drawing Meaningful Conclusions from Data 📊
Inferential statistics help us make generalizations about a population based on a sample. It's all about taking data from a sample and inferring what it says about the larger group.
1. Population vs. Sample 🌎: Think of the population as the "big picture" and the sample as a "snapshot" of it. For example, if we want to understand anxiety levels in college students, we can’t measure every student, so we study a sample instead and then infer conclusions about the whole group. 👥
2. Hypothesis Testing 🔍: One of the main reasons we use inferential statistics is to test hypotheses. We start with:
Null Hypothesis (H0): Assumes no effect or relationship exists (e.g., “This therapy has no impact on anxiety levels”).
Alternative Hypothesis (H1): Assumes there is an effect or relationship (e.g., “This therapy reduces anxiety levels”).
Hypothesis testing helps us decide whether the sample data supports the alternative hypothesis enough to reject the null hypothesis. It’s like investigating if our findings are meaningful or just due to random chance! 🎲
3. Confidence Intervals 📐: A confidence interval gives a range within which we believe the true population parameter lies, with a certain degree of confidence (often 95%). For instance, if we find that students’ average anxiety score is between 20 and 30, we’re 95% confident that the true population mean falls in this range. This adds a level of certainty to our predictions. 🔒
4. P-Values & Significance Levels 📉: The p-value tells us the probability of obtaining our results if the null hypothesis were true. For example, a p-value of 0.03 suggests there’s only a 3% chance that our results happened by random chance. In psychology, a common cutoff for significance is 0.05, meaning anything below this p-value generally supports rejecting the null hypothesis.
5. Types of Errors 🚫:
Type I Error (False Positive): Rejecting the null hypothesis when it’s actually true—like thinking a treatment works when it doesn’t.
Type II Error (False Negative): Not rejecting the null hypothesis when it’s actually false—missing out on a treatment effect that’s actually there.
Understanding these errors helps us interpret data more accurately and avoid misleading conclusions. 🎯
6. Common Tests & Techniques 🛠️:
T-Tests: Compare the means between two groups.
ANOVA: Compares means across multiple groups.
Chi-Square Test: Examines relationships between categorical variables.
Regression Analysis: Explores how variables relate to one another, predicting one variable based on another.
Each test is like a tool in a toolbox, used for different types of data and research questions. 🔨
Inferential statistics are crucial in psychology because they give us a systematic way to analyze data and make conclusions that matter. Rather than guessing or relying on personal beliefs, we can use statistical methods to support our insights and drive meaningful change. In therapy, for example, they allow psychologists to understand which treatments are effective and for whom.
Inferential statistics are an essential part of research. By testing hypotheses, calculating confidence intervals, and understanding p-values, we can draw reliable conclusions and make impactful, data-backed decisions.
What Are Inferential Statistics?
Inferential statistics help us make generalizations about a population based on a sample. It's all about taking data from a sample and inferring what it says about the larger group.
Key Concepts in Inferential Statistics
1. Population vs. Sample 🌎: Think of the population as the "big picture" and the sample as a "snapshot" of it. For example, if we want to understand anxiety levels in college students, we can’t measure every student, so we study a sample instead and then infer conclusions about the whole group. 👥
2. Hypothesis Testing 🔍: One of the main reasons we use inferential statistics is to test hypotheses. We start with:
Null Hypothesis (H0): Assumes no effect or relationship exists (e.g., “This therapy has no impact on anxiety levels”).
Alternative Hypothesis (H1): Assumes there is an effect or relationship (e.g., “This therapy reduces anxiety levels”).
Hypothesis testing helps us decide whether the sample data supports the alternative hypothesis enough to reject the null hypothesis. It’s like investigating if our findings are meaningful or just due to random chance! 🎲
3. Confidence Intervals 📐: A confidence interval gives a range within which we believe the true population parameter lies, with a certain degree of confidence (often 95%). For instance, if we find that students’ average anxiety score is between 20 and 30, we’re 95% confident that the true population mean falls in this range. This adds a level of certainty to our predictions. 🔒
4. P-Values & Significance Levels 📉: The p-value tells us the probability of obtaining our results if the null hypothesis were true. For example, a p-value of 0.03 suggests there’s only a 3% chance that our results happened by random chance. In psychology, a common cutoff for significance is 0.05, meaning anything below this p-value generally supports rejecting the null hypothesis.
5. Types of Errors 🚫:
Type I Error (False Positive): Rejecting the null hypothesis when it’s actually true—like thinking a treatment works when it doesn’t.
Type II Error (False Negative): Not rejecting the null hypothesis when it’s actually false—missing out on a treatment effect that’s actually there.
Understanding these errors helps us interpret data more accurately and avoid misleading conclusions. 🎯
6. Common Tests & Techniques 🛠️:
T-Tests: Compare the means between two groups.
ANOVA: Compares means across multiple groups.
Chi-Square Test: Examines relationships between categorical variables.
Regression Analysis: Explores how variables relate to one another, predicting one variable based on another.
Each test is like a tool in a toolbox, used for different types of data and research questions. 🔨
Why It’s Important
Inferential statistics are crucial in psychology because they give us a systematic way to analyze data and make conclusions that matter. Rather than guessing or relying on personal beliefs, we can use statistical methods to support our insights and drive meaningful change. In therapy, for example, they allow psychologists to understand which treatments are effective and for whom.
Wrapping Up
Inferential statistics are an essential part of research. By testing hypotheses, calculating confidence intervals, and understanding p-values, we can draw reliable conclusions and make impactful, data-backed decisions.
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What are you pursuing?
Anonymous Poll
17%
Graduation
58%
Masters
11%
PhD
4%
Preparing for Graduation
10%
Informally intrigued to Psychology
Trust me when I say this:
Some, if not most of the time, research papers are not conducive to any type of positive progress, even less to serve as a good argument for an issue.
Consider that the "publish or perish" culture forces many researchers to just produce inane papers, sometimes leading to useless, redundant, or at best, low-impact findings.
An even more sensible warning:
Trends that look groundbreaking or promising are often filled with academic leeches that can't wait to ride that hype, they spit no genuine contribution. These papers are often more about increasing the author's publication count and/or securing finances than advancing the field.
There's a flood of this shallow research that clutters the academic landscape, making it harder to find truly useful work.
In the end, this dilutes the quality of discourse, turning what could be robust, well-argued debates into an ocean of noise.
Some, if not most of the time, research papers are not conducive to any type of positive progress, even less to serve as a good argument for an issue.
Consider that the "publish or perish" culture forces many researchers to just produce inane papers, sometimes leading to useless, redundant, or at best, low-impact findings.
An even more sensible warning:
Trends that look groundbreaking or promising are often filled with academic leeches that can't wait to ride that hype, they spit no genuine contribution. These papers are often more about increasing the author's publication count and/or securing finances than advancing the field.
There's a flood of this shallow research that clutters the academic landscape, making it harder to find truly useful work.
In the end, this dilutes the quality of discourse, turning what could be robust, well-argued debates into an ocean of noise.
Understanding ANOVA:
In psychological research, Analysis of Variance (ANOVA) is a statistical powerhouse. It answers one crucial question: Are the differences between group means significant, or just random noise?
Independent Variable: The factor we manipulate (e.g., type of therapy).
Dependent Variable: The outcome we measure (e.g., anxiety levels).
Comparing 3+ groups (e.g., effectiveness of cognitive-behavioral therapy, mindfulness, and medication).
Analyzing multiple conditions in an experiment.
Studying interactions in factorial designs.
ANOVA examines variances:
Between groups variance: Differences caused by the independent variable.
Within groups variance: Differences due to individual variations.
The result? An F-statistic tells us whether group differences are statistically significant.y
ANOVA ensures psychologists can draw reliable conclusions about treatments, interventions, or experimental conditions. It’s a tool that turns raw data into actionable insights!
In psychological research, Analysis of Variance (ANOVA) is a statistical powerhouse. It answers one crucial question: Are the differences between group means significant, or just random noise?
Here’s how it works:
Independent Variable: The factor we manipulate (e.g., type of therapy).
Dependent Variable: The outcome we measure (e.g., anxiety levels).
When to Use ANOVA
Comparing 3+ groups (e.g., effectiveness of cognitive-behavioral therapy, mindfulness, and medication).
Analyzing multiple conditions in an experiment.
Studying interactions in factorial designs.
How It Works
ANOVA examines variances:
Between groups variance: Differences caused by the independent variable.
Within groups variance: Differences due to individual variations.
The result? An F-statistic tells us whether group differences are statistically significant.y
Why It Matters in Psychology
ANOVA ensures psychologists can draw reliable conclusions about treatments, interventions, or experimental conditions. It’s a tool that turns raw data into actionable insights!
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Forwarded from PsychCorner
🧠
Addiction is a complex disorder characterized by compulsive drug use despite negative consequences. It involves changes in brain structure, function, and neurotransmitter systems.
One key aspect of addiction is the reward pathway in the brain, which involves several regions such as the ventral tegmental area (VTA), nucleus accumbens (NAc), and prefrontal cortex (PFC). When a person engages in pleasurable activities or consumes addictive substances, these regions release dopamine, a neurotransmitter associated with pleasure and reward.
Repeated exposure to addictive substances or behaviors can lead to neuroadaptations in this reward pathway. The brain becomes sensitized to the substance or behavior, leading to increased cravings and decreased sensitivity to natural rewards. This process is known as neuroplasticity.
Additionally, addiction involves changes in other neurotransmitter systems such as glutamate, GABA, serotonin, and norepinephrine. These alterations contribute to various aspects of addiction, including tolerance (needing higher doses for the same effect), withdrawal symptoms when substance use is discontinued, and difficulties with impulse control.
📌
Identify the issue, do not rationalize your addictions. Understand the causes, look inside.
Create Barriers for your addictive behaviour. Say you're addicted to Instagram, completely removing it might be tough and sudden, So start using it on the website and uninstall the app. You'll experience friction as using the website is not as smooth as the application.
Replace Your Behaviour with something else. Chances are, your addictions are cued to a specific place, time or environment. Try doing something else in that period or place.
In the end, it's on you. As German Philosopher Nietzsche put it, One who cannot obey himself, will be commanded by others.
Neuroscience of Addiction Addiction is a complex disorder characterized by compulsive drug use despite negative consequences. It involves changes in brain structure, function, and neurotransmitter systems.
One key aspect of addiction is the reward pathway in the brain, which involves several regions such as the ventral tegmental area (VTA), nucleus accumbens (NAc), and prefrontal cortex (PFC). When a person engages in pleasurable activities or consumes addictive substances, these regions release dopamine, a neurotransmitter associated with pleasure and reward.
Repeated exposure to addictive substances or behaviors can lead to neuroadaptations in this reward pathway. The brain becomes sensitized to the substance or behavior, leading to increased cravings and decreased sensitivity to natural rewards. This process is known as neuroplasticity.
Additionally, addiction involves changes in other neurotransmitter systems such as glutamate, GABA, serotonin, and norepinephrine. These alterations contribute to various aspects of addiction, including tolerance (needing higher doses for the same effect), withdrawal symptoms when substance use is discontinued, and difficulties with impulse control.
📌
How To Get Rid of AddictionIdentify the issue, do not rationalize your addictions. Understand the causes, look inside.
Create Barriers for your addictive behaviour. Say you're addicted to Instagram, completely removing it might be tough and sudden, So start using it on the website and uninstall the app. You'll experience friction as using the website is not as smooth as the application.
Replace Your Behaviour with something else. Chances are, your addictions are cued to a specific place, time or environment. Try doing something else in that period or place.
In the end, it's on you. As German Philosopher Nietzsche put it, One who cannot obey himself, will be commanded by others.
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In 2024, several new terms and concepts have emerged in the field of psychology, reflecting evolving societal trends and academic developments
✨✨✨✨✨✨✨✨✨✨
🍀BRAIN ROT:
Selected as the 2024 Word of the Year by Oxford University Press, "brain rot" describes the deterioration of an individual's mental or intellectual state due to excessive consumption of trivial or unchallenging online content.
🍀NEUROSPICY:
A colloquial term gaining popularity to describe individuals with neurodivergent traits, such as those associated with autism or ADHD. It aims to destigmatize neurodiversity by using a playful and positive descriptor.
🍀HOLISTIC PSYCHOLOGY:
An emerging approach that treats individuals as whole beings, integrating mental, physical, emotional, social, and spiritual aspects. This perspective moves away from traditional symptom-based methods, promoting a more comprehensive view of mental health.
🍀DELULU:
A slang abbreviation of "delusional," commonly used on social media to describe someone holding unrealistic beliefs or fantasies, often in a humorous context. Its casual use has sparked discussions about the potential trivialization of clinical terms.
🍀LIBERATION PSYCHOLOGY:
An approach focusing on understanding and addressing the psychological impacts of oppression and sociopolitical structures on marginalized communities. It emphasizes the interconnectedness of personal and political factors in mental health.
✨✨✨✨✨✨✨✨✨✨
🍀BRAIN ROT:
Selected as the 2024 Word of the Year by Oxford University Press, "brain rot" describes the deterioration of an individual's mental or intellectual state due to excessive consumption of trivial or unchallenging online content.
🍀NEUROSPICY:
A colloquial term gaining popularity to describe individuals with neurodivergent traits, such as those associated with autism or ADHD. It aims to destigmatize neurodiversity by using a playful and positive descriptor.
🍀HOLISTIC PSYCHOLOGY:
An emerging approach that treats individuals as whole beings, integrating mental, physical, emotional, social, and spiritual aspects. This perspective moves away from traditional symptom-based methods, promoting a more comprehensive view of mental health.
🍀DELULU:
A slang abbreviation of "delusional," commonly used on social media to describe someone holding unrealistic beliefs or fantasies, often in a humorous context. Its casual use has sparked discussions about the potential trivialization of clinical terms.
🍀LIBERATION PSYCHOLOGY:
An approach focusing on understanding and addressing the psychological impacts of oppression and sociopolitical structures on marginalized communities. It emphasizes the interconnectedness of personal and political factors in mental health.
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Forwarded from ° wayOFpsychology °
The Case of #RICHARD_CHASE (The Vampire of Sacramento, 1977-1978)
#PSYCHOPATHY AND #PARANOID_SCHIZOPHRENIA••
Richard Chase's crimes provide an example of paranoid schizophrenia, a disorder where a person experiences intense delusions and hallucinations. Chase believed that drinking blood would prevent his own from turning to dust. This delusion led him to commit murder. This case illustrates how severe mental disorders, like schizophrenia, can lead to violent behavior, especially when untreated. His psychotic beliefs reflect how distorted thinking can fuel extreme actions.
Image source - CVLT NATION
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https://www.speakingcube.com/blog/embracing-the-present-why-living-in-the-moment-is-key-to-happiness
Speakingcube
Speakingcube: Online Counselling Services in India | Online Psychologist
Speakingcube provides top online counseling in India, helping individuals overcome relationship issues, stress, anxiety, depression, and more with expert support.
E-Books & Notes ( #Mphil)
https://drive.google.com/drive/folders/1J55OD28vOV7GvNOb8z3cF1jODZFE1dZM
#PYQs & E-books
https://drive.google.com/drive/folders/1DADTA1sxHigRZtd3L6nYbZurUKGpLdNs
Download 500+ Modules (PG)
https://tinyurl.com/Psychology-Modules
...
https://www.scribd.com/document/664338234/Psychology-114-Complete-Notes-pdf
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Are you preparing for NET JRF? (Should we start a series of resources and so on..)
Anonymous Poll
24%
No
76%
Yes